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25.09.2019 | Review

Bridging the theoretical gap between semantic representation models without the pressure of a ranking: some lessons learnt from LSA

verfasst von: Guillermo Jorge-Botana, Ricardo Olmos, José María Luzón

Erschienen in: Cognitive Processing

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Abstract

In recent years, latent semantic analysis (LSA) has reached a level of maturity at which its presence is ubiquitous in technology as well as in simulation of cognitive processes. In spite of this, in recent years there has been a trend of subjecting LSA to some criticisms, usually because it is compared to other models in very specific tasks and conditions and sometimes without having good knowledge of what the semantic representation of LSA means, and without exploiting all the possibilities of which LSA is capable other than the cosine. This paper provides a critical review to clarify some of the misunderstandings regarding LSA and other space models. The historical stability of the predecessors of LSA, the representational structure of word meaning and the multiple topologies that could arise from a semantic space, the computation of similarity, the myth that LSA dimensions have no meaning, the computational and algorithm plausibility to account for meaning acquisition in LSA (in contrast to others models based on online mechanisms), the possibilities of spatial models to substantiate recent proposals, and, in general, the characteristics of classic vector models and their ease and flexibility to simulate some cognitive phenomena will be reviewed. The review highlights the similarity between LSA and other techniques and proposes using long LSA experiences in other models, especially in predicting models such as word2vec. In sum, it emphasizes the lessons that can be learned from comparing LSA-based models to other models, rather than making statements about “the best.”

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Fußnoten
1
The construction–integration model proposed by Kintsch is a spreading activation algorithm. First, a net is constructed with the neighbors of the words in a text. That net is expressed in a matrix which contains the similarities between each neighbor with the others. This matrix is iteratively multiplied by a vector that represents a meaning hypothesis. This process is carried out until the net is stable, in other words, until the change in the mean of the vector activation is lower than a parameterized value. The number of cycles is then the cycle when that value is reached (see Kintsch and Welsch 1991 for details of the original conception).
 
2
LSA usually requires more RAM than other models, but math libraries use to implement sparse matrices classes (with no zero entries) to perform the SVD calculations. This makes it possible to analyze big corpora in ordinary computers. Modern engines for large-scale data processing such as Spark allow for larger corpora as well. We assume that Gamallo and Bordag did not use high-performance techniques in that study.
 
3
The context unit in LSA is usually misunderstood. Influenced by the information retrieval field and the constrictions of the formats of some software packages, many researchers consider that LSA uses only whole documents (reports, chapters, sections, books, etc.) as a unit of analysis. For this reason, many studies use only that kind of document as context in the initial word-context matrix. This is not accurate. Paragraphs could be a better alternative for cognitive studies. The classical work of Landauer and Dumais (1997) already used paragraphs.
 
4
In David Marr’s levels of analysis, the computational level specifies what the system does, that is, the calculations that it performs. The algorithmic level describes how the system performs the calculations at the computational level, that is, it describes the formal representation for the input and output, and the algorithm (functions) for the transformation. The implementational/physical level describes how the representation and algorithm can be realized physically. However, the difference between computational and algorithmic levels is not too clear. Sometimes, computational descriptions are close to algorithmic ones and vice versa.
 
5
To calculate Sim(Jamaica, Russia) and Sim(Russia, Jamaica) in Tversky’s (1977) assumption, we must to adjust a set of parameters in its mathematical formula. To do that, we must to identify a priori which word has more features, Russia or Jamaica (if we know more about Russia or about Jamaica) and in what proportion. We think that identifying such parameters values in that formula using an LSA space representation of words would be automatic, because the vector length provides information about word familiarity (an indirect measure of features in a word).
 
6
However, note that arbitrary parameterization could result in an over-fitting situation, where modelers pick some parameters that result in a big adjustment to the cognitive process they are interested in, but the same parameters perform badly when accounting for more general cognitive phenomena. This is an open debate about modularization and generalization.
 
7
The fact that distributional models as LSA are currently textl-based does not mean that distributional models must be by definition exclusively linguistic. Lenci (2008) remarks that the contextual hypothesis that defines distributional models is not restricted to features extracted from linguistic context alone and could contain extralinguistic features as context (visual, emotional, communicative situations, etc). Probably, something similar to LSA can be applied to perceptual realities, as has been done with SVD or principal components for face and gesture recognition (Chin et al. 2006; Turk and Pentland 1991). Nonetheless, in this paper, to follow the argumentation of the presented studies, we consider that distributional models are exclusively textual-based only.
 
Literatur
Zurück zum Zitat Abad FJ, Olea J, Ponsoda V, García C (2011) Medición en ciencias del comportamiento y de la salud. Editorial Síntesis, Madrid Abad FJ, Olea J, Ponsoda V, García C (2011) Medición en ciencias del comportamiento y de la salud. Editorial Síntesis, Madrid
Zurück zum Zitat Altszyler E, Mariano S, Fernández-Slezak F (2016) Comparative study of LSA versus Word2vec embeddings in small corpora: a case study in dreams database. CoRR abs/1610.01520 Altszyler E, Mariano S, Fernández-Slezak F (2016) Comparative study of LSA versus Word2vec embeddings in small corpora: a case study in dreams database. CoRR abs/1610.01520
Zurück zum Zitat Anguera MT (1977) Construcción de modelos en Psicología. Anuario de Psicología 16:35–60 Anguera MT (1977) Construcción de modelos en Psicología. Anuario de Psicología 16:35–60
Zurück zum Zitat Balbi S, Esposito V (1998) Comparing advertising campaigns by means of textual data analysis with external information. In: Mellet S (ed) Actes des 4es Journées internationales d’Analyse statistique des Données Textuelles. UPRESA, Nice, pp 39–47 Balbi S, Esposito V (1998) Comparing advertising campaigns by means of textual data analysis with external information. In: Mellet S (ed) Actes des 4es Journées internationales d’Analyse statistique des Données Textuelles. UPRESA, Nice, pp 39–47
Zurück zum Zitat Balbi S, Misuraca M (2006) Rotated canonical correlation analysis for multilingual corpora JADT’06: Actes Des 8es Journées Internationales D’analyse Statistique Des Données Textuelles, pp 99–106 Balbi S, Misuraca M (2006) Rotated canonical correlation analysis for multilingual corpora JADT’06: Actes Des 8es Journées Internationales D’analyse Statistique Des Données Textuelles, pp 99–106
Zurück zum Zitat Ballesteros S (1993) Representaciones analógicas en percepción y memoria: imágenes, transformaciones mentales y representaciones estructurales. Psicothema 5(1):5–17 Ballesteros S (1993) Representaciones analógicas en percepción y memoria: imágenes, transformaciones mentales y representaciones estructurales. Psicothema 5(1):5–17
Zurück zum Zitat Banjade R, Maharjan N, Gautam D, Rus V (2017) Pooling word vector representations across models. In: Proceedings of the international conference on computational linguistics and intelligent text processing, Budapest, Hungary Banjade R, Maharjan N, Gautam D, Rus V (2017) Pooling word vector representations across models. In: Proceedings of the international conference on computational linguistics and intelligent text processing, Budapest, Hungary
Zurück zum Zitat Baroni M, Lenci A (2009) One distributional memory, many semantic spaces. In: Proceedings of the workshop on geometrical models of natural language semantics. Association for Computational Linguistics, pp 1–8 Baroni M, Lenci A (2009) One distributional memory, many semantic spaces. In: Proceedings of the workshop on geometrical models of natural language semantics. Association for Computational Linguistics, pp 1–8
Zurück zum Zitat Baroni M, Dinu G, Kruszewski G (2014) Don’t count, predict! A systematic comparison of context-counting versus context-predicting semantic vectors. In: Proceedings of the 52nd annual meeting of the association for computational linguistics, ACL 2014, pp 238–247 Baroni M, Dinu G, Kruszewski G (2014) Don’t count, predict! A systematic comparison of context-counting versus context-predicting semantic vectors. In: Proceedings of the 52nd annual meeting of the association for computational linguistics, ACL 2014, pp 238–247
Zurück zum Zitat Barque-Duran A, Pothos EM, Yearsley JM, Hampton JA, Busemeyer JR, Trueblood JS (2016) Similarity judgments: from classical to complex vector psychological spaces. In: Contextuality from Quantum Physics to Psychology, pp. 415–448 Barque-Duran A, Pothos EM, Yearsley JM, Hampton JA, Busemeyer JR, Trueblood JS (2016) Similarity judgments: from classical to complex vector psychological spaces. In: Contextuality from Quantum Physics to Psychology, pp. 415–448
Zurück zum Zitat Barsalou LW, Santos A, Simmons WK, Wilson CD (2008) Language and simulation in conceptual processing. In: De Vega M, Glenberg AM, Graesser AC (eds) Symbols, embodiment, and meaning. Oxford University Press, Oxford Barsalou LW, Santos A, Simmons WK, Wilson CD (2008) Language and simulation in conceptual processing. In: De Vega M, Glenberg AM, Graesser AC (eds) Symbols, embodiment, and meaning. Oxford University Press, Oxford
Zurück zum Zitat Beckage N, Smith L, Hills T (2011) Small worlds and semantic network growth in typical and late talkers. PLoS ONE 6(5):e19348PubMedPubMedCentral Beckage N, Smith L, Hills T (2011) Small worlds and semantic network growth in typical and late talkers. PLoS ONE 6(5):e19348PubMedPubMedCentral
Zurück zum Zitat Bergamaschi S, Po L (2014) Comparing LDA and LSA topic models for content-based movie recommendation systems. In: International conference on web information systems and technologies. Springer, pp 247–263 Bergamaschi S, Po L (2014) Comparing LDA and LSA topic models for content-based movie recommendation systems. In: International conference on web information systems and technologies. Springer, pp 247–263
Zurück zum Zitat Bestgen Y, Vincze N (2012) Checking and bootstrapping lexical norms by means of word similarity indices. Behav Res Methods 44:998–1006PubMed Bestgen Y, Vincze N (2012) Checking and bootstrapping lexical norms by means of word similarity indices. Behav Res Methods 44:998–1006PubMed
Zurück zum Zitat Bhatia S (2017) Associative judgment and vector space semantics. Psychol Rev 124(1):1PubMed Bhatia S (2017) Associative judgment and vector space semantics. Psychol Rev 124(1):1PubMed
Zurück zum Zitat Biemiller A, Rosenstein M, Sparks R, Landauer TK, Foltz PW (2014) Models of vocabulary acquisition: direct tests and text-derived simulations of vocabulary growth. Sci Stud Read 18(2):130–154 Biemiller A, Rosenstein M, Sparks R, Landauer TK, Foltz PW (2014) Models of vocabulary acquisition: direct tests and text-derived simulations of vocabulary growth. Sci Stud Read 18(2):130–154
Zurück zum Zitat Biro I, Benczur A, Szabo J, Maguitman A (2008) A comparative analysis of latent variable models for web page classification. In: Proceedings of the 2008 Latin American web conference. IEEE Computer Society, Washington, pp 23–28 Biro I, Benczur A, Szabo J, Maguitman A (2008) A comparative analysis of latent variable models for web page classification. In: Proceedings of the 2008 Latin American web conference. IEEE Computer Society, Washington, pp 23–28
Zurück zum Zitat Bolukbasi T, Chang KW, Zou, JY, Saligrama VK, Adam T (2016) Man is to computer programmer as woman is to homemaker? Debiasing word embeddings. In: Advances in neural information processing systems, pp 4349–4357 Bolukbasi T, Chang KW, Zou, JY, Saligrama VK, Adam T (2016) Man is to computer programmer as woman is to homemaker? Debiasing word embeddings. In: Advances in neural information processing systems, pp 4349–4357
Zurück zum Zitat Burgess C, Nobel K (2017) Avoiding the comparing apples to oranges problem in model comparison. In: Proceedings of the 47th annual meeting of the society for computers in psychology (SCiP). Vancouver Burgess C, Nobel K (2017) Avoiding the comparing apples to oranges problem in model comparison. In: Proceedings of the 47th annual meeting of the society for computers in psychology (SCiP). Vancouver
Zurück zum Zitat Cederberg S, Widdows D (2003) Using LSA and noun coordination information to improve the precision and recall of automatic hyponymy extraction. In: Proceedings of the seventh conference on Natural language learning at HLT-NAACL 2003-Volume 4. Association for Computational Linguistics, pp 111–118 Cederberg S, Widdows D (2003) Using LSA and noun coordination information to improve the precision and recall of automatic hyponymy extraction. In: Proceedings of the seventh conference on Natural language learning at HLT-NAACL 2003-Volume 4. Association for Computational Linguistics, pp 111–118
Zurück zum Zitat Chen RC, Lee YC, Pan RH (2006) Adding new concepts on the domain ontology based on semantic similarity. In: International conference on business and information, pp 12–14 Chen RC, Lee YC, Pan RH (2006) Adding new concepts on the domain ontology based on semantic similarity. In: International conference on business and information, pp 12–14
Zurück zum Zitat Chen PN, Chen KY, Chen B (2011) Leveraging relevance cues for improved spoken document retrieval. In Twelfth Annual Conference of the International Speech Communication Association Chen PN, Chen KY, Chen B (2011) Leveraging relevance cues for improved spoken document retrieval. In Twelfth Annual Conference of the International Speech Communication Association
Zurück zum Zitat Chin TJ, Schindler K, Suter D (2006) Incremental kernel SVD for face recognition with image sets. In: 7th International conference on automatic face and gesture recognition. FGR 2006. IEEE, pp 461–466 Chin TJ, Schindler K, Suter D (2006) Incremental kernel SVD for face recognition with image sets. In: 7th International conference on automatic face and gesture recognition. FGR 2006. IEEE, pp 461–466
Zurück zum Zitat Chiru CG, Rebedea T, Ciotec S (2014) Comparison between LSA-LDA-Lexical chains. In: WEBIST (2), pp 255–262 Chiru CG, Rebedea T, Ciotec S (2014) Comparison between LSA-LDA-Lexical chains. In: WEBIST (2), pp 255–262
Zurück zum Zitat Chwilla DJ, Kolk HH (2002) Three-step priming in lexical decision. Mem Cogn 30(2):217–225 Chwilla DJ, Kolk HH (2002) Three-step priming in lexical decision. Mem Cogn 30(2):217–225
Zurück zum Zitat Cooper RP, Peebles D (2018) On the relation between marr’s levels: a response to blokpoel (2017). Top Cogn Sci 10(3):649–653PubMed Cooper RP, Peebles D (2018) On the relation between marr’s levels: a response to blokpoel (2017). Top Cogn Sci 10(3):649–653PubMed
Zurück zum Zitat Dascalu M, McNamara DS, Crossley S, Trausan-Matu S (2016) Age of exposure: a model of word learning. In: Thirtieth AAAI conference on artificial intelligence Dascalu M, McNamara DS, Crossley S, Trausan-Matu S (2016) Age of exposure: a model of word learning. In: Thirtieth AAAI conference on artificial intelligence
Zurück zum Zitat Denhière GY, Lemaire B (2004) A computational model of children’s semantic memory. In: Forbus K, Gentner D, Regier YT (eds) Proceedings of the 26th annual meeting of the cognitive science society. Chicago, pp 297–302 Denhière GY, Lemaire B (2004) A computational model of children’s semantic memory. In: Forbus K, Gentner D, Regier YT (eds) Proceedings of the 26th annual meeting of the cognitive science society. Chicago, pp 297–302
Zurück zum Zitat Edelman S (1995) Representation, similarity, and the chorus of prototypes. Mind Mach 5(1):45–68 Edelman S (1995) Representation, similarity, and the chorus of prototypes. Mind Mach 5(1):45–68
Zurück zum Zitat Elman JL (1993) Learning and development in neural networks: the importance of starting small. Cognition 48(1):71–99PubMed Elman JL (1993) Learning and development in neural networks: the importance of starting small. Cognition 48(1):71–99PubMed
Zurück zum Zitat Evangelopoulos NE (2013) Latent semantic analysis. Cogn Sci 4:683–692 Evangelopoulos NE (2013) Latent semantic analysis. Cogn Sci 4:683–692
Zurück zum Zitat Evangelopoulos N, Visinescu L (2012) Text-mining the voice of the people. Commun ACM 55:62–69 Evangelopoulos N, Visinescu L (2012) Text-mining the voice of the people. Commun ACM 55:62–69
Zurück zum Zitat Evangelopoulos N, Zhang X, Prybutok VR (2012) Latent semantic analysis: five methodological recommendations. Eur J Inf Syst 21(1):70–86 Evangelopoulos N, Zhang X, Prybutok VR (2012) Latent semantic analysis: five methodological recommendations. Eur J Inf Syst 21(1):70–86
Zurück zum Zitat Fabrigar LR, Wegener DT, MacCallum RC, Strahan EJ (1999) Evaluating the use of exploratory factor analysis in psychological research. Psychol Methods 4(3):272 Fabrigar LR, Wegener DT, MacCallum RC, Strahan EJ (1999) Evaluating the use of exploratory factor analysis in psychological research. Psychol Methods 4(3):272
Zurück zum Zitat Feyerabend P (1974) Contra el método. Ensayo de una teoría anarquista del conocimiento. Ariel Quincenal Feyerabend P (1974) Contra el método. Ensayo de una teoría anarquista del conocimiento. Ariel Quincenal
Zurück zum Zitat Field AP, Schorah H (2007) The verbal information pathway to fear and heart rate changes in children. J Child Psychol Psychiatry 48(11):1088–1093PubMed Field AP, Schorah H (2007) The verbal information pathway to fear and heart rate changes in children. J Child Psychol Psychiatry 48(11):1088–1093PubMed
Zurück zum Zitat Furnas GW, Gomez LM, Landauer TK, Dumais ST (1982) Statistical semantics: How can a computer use what people name things to guess what things people mean when they name things? In: Proceedings of the SIGCHI conference on human factors in computing systems. ACM, pp 251–253 Furnas GW, Gomez LM, Landauer TK, Dumais ST (1982) Statistical semantics: How can a computer use what people name things to guess what things people mean when they name things? In: Proceedings of the SIGCHI conference on human factors in computing systems. ACM, pp 251–253
Zurück zum Zitat Gamallo P, Bordag S (2011) Is singular value decomposition useful for word similarity extraction? Lang Resour Eval 45(2):95–119 Gamallo P, Bordag S (2011) Is singular value decomposition useful for word similarity extraction? Lang Resour Eval 45(2):95–119
Zurück zum Zitat García-Palacios A, Costa A, Castilla D, del Río E, Casaponsa A, Duñabeitia JA (2018) The effect of foreign language in fear acquisition. Sci Rep 8:1157PubMedPubMedCentral García-Palacios A, Costa A, Castilla D, del Río E, Casaponsa A, Duñabeitia JA (2018) The effect of foreign language in fear acquisition. Sci Rep 8:1157PubMedPubMedCentral
Zurück zum Zitat Gärdenfors P (1996) Conceptual spaces as a basis for cognitive semantics. In: Philosophy and cognitive science: categories, consciousness, and reasoning. Springer, Dordrecht, pp 159–180 Gärdenfors P (1996) Conceptual spaces as a basis for cognitive semantics. In: Philosophy and cognitive science: categories, consciousness, and reasoning. Springer, Dordrecht, pp 159–180
Zurück zum Zitat Gärdenfors P (2000) Conceptual spaces: on the geometry of thought. MIT Press, Cambridge Gärdenfors P (2000) Conceptual spaces: on the geometry of thought. MIT Press, Cambridge
Zurück zum Zitat Glenberg AM, Mehta S (2008) Constraint on covariation: it’s not meaning. Italian J Linguist 20:33–53 Glenberg AM, Mehta S (2008) Constraint on covariation: it’s not meaning. Italian J Linguist 20:33–53
Zurück zum Zitat Goldberg Y, Levy O (2014) word2vec Explained: deriving Mikolov et al.’s negative-sampling word-embedding method. arXiv preprint arXiv:1402.3722 Goldberg Y, Levy O (2014) word2vec Explained: deriving Mikolov et al.’s negative-sampling word-embedding method. arXiv preprint arXiv:​1402.​3722
Zurück zum Zitat Griffiths TL, Steyvers M, Tenenbaum JB (2007) Topics in semantic representation. Psychol Rev 114(2):211PubMed Griffiths TL, Steyvers M, Tenenbaum JB (2007) Topics in semantic representation. Psychol Rev 114(2):211PubMed
Zurück zum Zitat Günther F, Dudschig C, Kaup B (2016) Latent semantic analysis cosines as a cognitive similarity measure: evidence from priming studies. Quart J Exp Psychol 69(4):626–653 Günther F, Dudschig C, Kaup B (2016) Latent semantic analysis cosines as a cognitive similarity measure: evidence from priming studies. Quart J Exp Psychol 69(4):626–653
Zurück zum Zitat Hadley RF (2004) On the proper treatment of semantic systematicity. Mind Mach 14:145–172 Hadley RF (2004) On the proper treatment of semantic systematicity. Mind Mach 14:145–172
Zurück zum Zitat Harnad S (1990) The symbol grounding problem. Physica D 42:335–346 Harnad S (1990) The symbol grounding problem. Physica D 42:335–346
Zurück zum Zitat Hauk O, Johnsrude I, Pulvermüller F (2004) Somatotopic representation of action words in human motor and premotor cortex. Neuron 41(2):301–307PubMed Hauk O, Johnsrude I, Pulvermüller F (2004) Somatotopic representation of action words in human motor and premotor cortex. Neuron 41(2):301–307PubMed
Zurück zum Zitat Hintzman DL (1984) MINERVA 2: a simulation model of human memory. Behav Res Methods Instrum Comput 16(2):96–101 Hintzman DL (1984) MINERVA 2: a simulation model of human memory. Behav Res Methods Instrum Comput 16(2):96–101
Zurück zum Zitat Hoffman P, Rogers TT, Lambon Ralph MA (2011) Semantic diversity accounts for the “missing” word frequency effect in stroke aphasia: insights using a novel method to quantify contextual variability in meaning. J Cogn Neurosci 23(9):2432–2446PubMed Hoffman P, Rogers TT, Lambon Ralph MA (2011) Semantic diversity accounts for the “missing” word frequency effect in stroke aphasia: insights using a novel method to quantify contextual variability in meaning. J Cogn Neurosci 23(9):2432–2446PubMed
Zurück zum Zitat Hoffman P, Ralph MAL, Rogers TT (2013) Semantic diversity: a measure of semantic ambiguity based on variability in the contextual usage of words. Behav Res Methods 45(3):718–730PubMed Hoffman P, Ralph MAL, Rogers TT (2013) Semantic diversity: a measure of semantic ambiguity based on variability in the contextual usage of words. Behav Res Methods 45(3):718–730PubMed
Zurück zum Zitat Hoffman P, McClelland JL, Lambon Ralph MA (2018) Concepts, control and context: a connectionist account of normal and disordered semantic cognition. Psychol Rev 125(3):293–328PubMedPubMedCentral Hoffman P, McClelland JL, Lambon Ralph MA (2018) Concepts, control and context: a connectionist account of normal and disordered semantic cognition. Psychol Rev 125(3):293–328PubMedPubMedCentral
Zurück zum Zitat Hu X, Cai Z, Wiemer-Hastings P, Graesser AC, McNamara DS (2007) Strengths, limitations, and extensions of LSA. The handbook of latent semantic analysis, pp 401–426 Hu X, Cai Z, Wiemer-Hastings P, Graesser AC, McNamara DS (2007) Strengths, limitations, and extensions of LSA. The handbook of latent semantic analysis, pp 401–426
Zurück zum Zitat Huang P, He X, Gao J, Deng L, Acero A, Heck L (2013) Learning deep structured semantic models for web search using clickthrough data. In: Proceedings of the 22nd ACM international conference on information and knowledge management Huang P, He X, Gao J, Deng L, Acero A, Heck L (2013) Learning deep structured semantic models for web search using clickthrough data. In: Proceedings of the 22nd ACM international conference on information and knowledge management
Zurück zum Zitat Huettig F, Quinlan PT, McDonald SA, Altmann GT (2006) Models of high-dimensional semantic space predict language-mediated eye movements in the visual world. Acta Physiol 121(1):65–80 Huettig F, Quinlan PT, McDonald SA, Altmann GT (2006) Models of high-dimensional semantic space predict language-mediated eye movements in the visual world. Acta Physiol 121(1):65–80
Zurück zum Zitat Jones MN, Mewhort DJK (2007) Representing word meaning and order information in a composite holographic lexicon. Psychol Rev 114:1–37PubMed Jones MN, Mewhort DJK (2007) Representing word meaning and order information in a composite holographic lexicon. Psychol Rev 114:1–37PubMed
Zurück zum Zitat Jones M, Gruenfelder T, Recchia G (2011) In defense of spatial models of lexical semantics. In: Proceedings of the annual meeting of the cognitive science society, vol 33, p 33 Jones M, Gruenfelder T, Recchia G (2011) In defense of spatial models of lexical semantics. In: Proceedings of the annual meeting of the cognitive science society, vol 33, p 33
Zurück zum Zitat Jones MN, Willits J, Dennis S (2015) Models of semantic memory. In: Busemeyer JR, Wang Z, Townsend JT, Eidels A (eds) Oxford handbook of computational and mathematical psychology. Oxford University Press, Oxford Jones MN, Willits J, Dennis S (2015) Models of semantic memory. In: Busemeyer JR, Wang Z, Townsend JT, Eidels A (eds) Oxford handbook of computational and mathematical psychology. Oxford University Press, Oxford
Zurück zum Zitat Jones MN, Gruenenfelder TM, Recchia G (2018) In defense of spatial models of semantic representation. New Ideas Psychol 50:54–60 Jones MN, Gruenenfelder TM, Recchia G (2018) In defense of spatial models of semantic representation. New Ideas Psychol 50:54–60
Zurück zum Zitat Jorge-Botana G, Olmos R (2014) How lexical ambiguity distributes activation to semantic neighbors: some possible consequences within a computational framework. Mental Lexicon 9(1):67–106 Jorge-Botana G, Olmos R (2014) How lexical ambiguity distributes activation to semantic neighbors: some possible consequences within a computational framework. Mental Lexicon 9(1):67–106
Zurück zum Zitat Jorge-Botana G, León JA, Olmos R, Hassan-Montero Y (2010a) Visualizing polysemy using LSA and the predication algorithm. J Assoc Inf Sci Technol 61(8):1706–1724 Jorge-Botana G, León JA, Olmos R, Hassan-Montero Y (2010a) Visualizing polysemy using LSA and the predication algorithm. J Assoc Inf Sci Technol 61(8):1706–1724
Zurück zum Zitat Jorge-Botana G, Leon JA, Olmos R, Escudero I (2010b) Latent semantic analysis parameters for essay evaluation using small-scale corpora. J Quant Linguist 17(1):1–29 Jorge-Botana G, Leon JA, Olmos R, Escudero I (2010b) Latent semantic analysis parameters for essay evaluation using small-scale corpora. J Quant Linguist 17(1):1–29
Zurück zum Zitat Jorge-Botana G, León JA, Olmos R, Escudero I (2011) The representation of polysemy through vectors: some building blocks for constructing models and applications with LSA. Int J Contin Eng Educ Life Long Learn 21(4):328–342 Jorge-Botana G, León JA, Olmos R, Escudero I (2011) The representation of polysemy through vectors: some building blocks for constructing models and applications with LSA. Int J Contin Eng Educ Life Long Learn 21(4):328–342
Zurück zum Zitat Jorge-Botana G, Olmos R, Sanjosé V (2017a) Predicting word maturity from frequency and semantic diversity: a computational study. Discourse Process 54(8):682–694 Jorge-Botana G, Olmos R, Sanjosé V (2017a) Predicting word maturity from frequency and semantic diversity: a computational study. Discourse Process 54(8):682–694
Zurück zum Zitat Jorge-Botana G, Olmos R, Luzón JM (2019) Could LSA become a “Bifactor” model? Towards a model with general and group factors. Experts Syst Appl 131(1):71–80 Jorge-Botana G, Olmos R, Luzón JM (2019) Could LSA become a “Bifactor” model? Towards a model with general and group factors. Experts Syst Appl 131(1):71–80
Zurück zum Zitat Kaiser HF (1958) The varimax criterion for analytic rotation in factor analysis. Psychometrika 23(3):187–200 Kaiser HF (1958) The varimax criterion for analytic rotation in factor analysis. Psychometrika 23(3):187–200
Zurück zum Zitat Kakkonen T, Myller N, Sutinen E (2006) Applying latent dirichlet allocation to automatic essay grading. In: Salakoski T, Ginter F, Pyysalo S, Pahikkala T (eds) Advances in natural language processing, vol 4139. FinTAL 2006. Lecture notes in computer science. Springer, Berlin Kakkonen T, Myller N, Sutinen E (2006) Applying latent dirichlet allocation to automatic essay grading. In: Salakoski T, Ginter F, Pyysalo S, Pahikkala T (eds) Advances in natural language processing, vol 4139. FinTAL 2006. Lecture notes in computer science. Springer, Berlin
Zurück zum Zitat Karanam S, Jorge-Botana G, Olmos R, van Oostendorp H (2017) The role of domain knowledge in cognitive modeling of information search. Inf Ret J 20(5):456–479 Karanam S, Jorge-Botana G, Olmos R, van Oostendorp H (2017) The role of domain knowledge in cognitive modeling of information search. Inf Ret J 20(5):456–479
Zurück zum Zitat Kenett YN, Wechsler-Kashi D, Kenett DY, Schwartz RG, Ben-Jacob E, Faust M (2013) Semantic organization in children with cochlear implants: computational analysis of verbal fluency. Front Psychol 4:543 Kenett YN, Wechsler-Kashi D, Kenett DY, Schwartz RG, Ben-Jacob E, Faust M (2013) Semantic organization in children with cochlear implants: computational analysis of verbal fluency. Front Psychol 4:543
Zurück zum Zitat Kintsch W (1998) Comprehension: a paradigm for cognition. Cambridge University Press, Cambridge Kintsch W (1998) Comprehension: a paradigm for cognition. Cambridge University Press, Cambridge
Zurück zum Zitat Kintsch W (2000) Metaphor comprehension: a computational theory. Psychon Bull Rev 7(2):257–266PubMed Kintsch W (2000) Metaphor comprehension: a computational theory. Psychon Bull Rev 7(2):257–266PubMed
Zurück zum Zitat Kintsch W (2001) Predication. Cognit Sci 25(2):173–202 Kintsch W (2001) Predication. Cognit Sci 25(2):173–202
Zurück zum Zitat Kintsch W (2007) Meaning in context. In: Landauer TK, McNamara D, Dennis S, Kintsch W (eds) Handbook of latent semantic analysis. Erlbaum, Mahwah, pp 89–105 Kintsch W (2007) Meaning in context. In: Landauer TK, McNamara D, Dennis S, Kintsch W (eds) Handbook of latent semantic analysis. Erlbaum, Mahwah, pp 89–105
Zurück zum Zitat Kintsch W (2008) Symbol systems and perceptual representations. In: De Vega M, Glenberg A, Graesser A (eds) Symbols and embodiment. Oxford Univ. Press, Oxford, pp 145–164 Kintsch W (2008) Symbol systems and perceptual representations. In: De Vega M, Glenberg A, Graesser A (eds) Symbols and embodiment. Oxford Univ. Press, Oxford, pp 145–164
Zurück zum Zitat Kintsch W (2014) Similarity as a function of semantic distance and amount of knowledge. Psychol Rev 121(3):559PubMed Kintsch W (2014) Similarity as a function of semantic distance and amount of knowledge. Psychol Rev 121(3):559PubMed
Zurück zum Zitat Kintsch W, Bowles AR (2002) Metaphor comprehension: What makes a metaphor difficult to understand? Metaphor Symbol 17(4):249–262 Kintsch W, Bowles AR (2002) Metaphor comprehension: What makes a metaphor difficult to understand? Metaphor Symbol 17(4):249–262
Zurück zum Zitat Kintsch W, Mangalath P (2011) The construction of meaning. Top Cognit Sci 3(2):346–370 Kintsch W, Mangalath P (2011) The construction of meaning. Top Cognit Sci 3(2):346–370
Zurück zum Zitat Kintsch W, Welsch D (1991) The construction-integration model: a framework for studying memory for text. In: Hockley WE, Lewandowsky S (eds) Relating theory and data: essays on human memory in honor of Bennet B. Murdock. Erlbaum, Hillsdale, pp 367–385 Kintsch W, Welsch D (1991) The construction-integration model: a framework for studying memory for text. In: Hockley WE, Lewandowsky S (eds) Relating theory and data: essays on human memory in honor of Bennet B. Murdock. Erlbaum, Hillsdale, pp 367–385
Zurück zum Zitat Kireyev K, Landauer TK (2011) Word maturity: computational modeling of word knowledge. In: Proceedings of the 49th annual meeting of the association for computational linguistics: human language technologies, vol 1. Association for Computational Linguistics, pp 299–308 Kireyev K, Landauer TK (2011) Word maturity: computational modeling of word knowledge. In: Proceedings of the 49th annual meeting of the association for computational linguistics: human language technologies, vol 1. Association for Computational Linguistics, pp 299–308
Zurück zum Zitat Kivisaari SL, van Vliet M, Hulten A, Lindh-Knuutila T, Faisal A, Salmelin R (in press) Reconstructing meaning from bits of information bioRxiv 401380 Kivisaari SL, van Vliet M, Hulten A, Lindh-Knuutila T, Faisal A, Salmelin R (in press) Reconstructing meaning from bits of information bioRxiv 401380
Zurück zum Zitat Krumhansl CL (1978) Concerning the applicability of geometric models to similarity data: the interrelationship between similarity and spatial density. Psychol Rev 85:445–463 Krumhansl CL (1978) Concerning the applicability of geometric models to similarity data: the interrelationship between similarity and spatial density. Psychol Rev 85:445–463
Zurück zum Zitat Kuhlmann M, Hofmann MJ, Jacobs AM (2017) If you don’t have valence, ask your neighbor: evaluation of neutral words as a function of affective semantic associates. Front Psychol 8(343):1–7 Kuhlmann M, Hofmann MJ, Jacobs AM (2017) If you don’t have valence, ask your neighbor: evaluation of neutral words as a function of affective semantic associates. Front Psychol 8(343):1–7
Zurück zum Zitat Kundu A, Jain V, Kumar S, Chandra C (2015) A journey from normative to behavioral operations in supply chain management: a review using latent semantic analysis. Expert Syst Appl 42(2):796–809 Kundu A, Jain V, Kumar S, Chandra C (2015) A journey from normative to behavioral operations in supply chain management: a review using latent semantic analysis. Expert Syst Appl 42(2):796–809
Zurück zum Zitat Kwantes PJ (2005) Using context to build semantics. Psychon Bull Rev 12(4):703–710PubMed Kwantes PJ (2005) Using context to build semantics. Psychon Bull Rev 12(4):703–710PubMed
Zurück zum Zitat Landauer T (1999) Latent semantic analysis (LSA), a disembodied learning machine, acquires human word meaning vicariously from language alone. Behav Brain Sci 22(4):624–625 Landauer T (1999) Latent semantic analysis (LSA), a disembodied learning machine, acquires human word meaning vicariously from language alone. Behav Brain Sci 22(4):624–625
Zurück zum Zitat Landauer TK, Dumais ST (1997) A solution to Plato’s problem: the latent semantic analysis theory of acquisition, induction, and representation of knowledge. Psychol Rev 104(2):211 Landauer TK, Dumais ST (1997) A solution to Plato’s problem: the latent semantic analysis theory of acquisition, induction, and representation of knowledge. Psychol Rev 104(2):211
Zurück zum Zitat Landauer TK, Foltz PW, Laham D (1998) An introduction to latent semantic analysis. Discourse Process 25(2–3):259–284 Landauer TK, Foltz PW, Laham D (1998) An introduction to latent semantic analysis. Discourse Process 25(2–3):259–284
Zurück zum Zitat Landauer TK, Kireyev K, Panaccione C (2011) Word maturity: a new metric for word knowledge. Sci Stud Read 15(1):92–108 Landauer TK, Kireyev K, Panaccione C (2011) Word maturity: a new metric for word knowledge. Sci Stud Read 15(1):92–108
Zurück zum Zitat Lebret R, Collobert R (2015) Rehabilitation of count-based models for word vector representations. In: Gelbukh AF (ed) CICLing (1), vol 9041. Lecture notes in computer science. Springer, New York, pp 417–429 Lebret R, Collobert R (2015) Rehabilitation of count-based models for word vector representations. In: Gelbukh AF (ed) CICLing (1), vol 9041. Lecture notes in computer science. Springer, New York, pp 417–429
Zurück zum Zitat Lemaire B, Denhière G, Bellissens C, Jhean-Larose S (2006) A computational model for simulating text comprehension. Behav Res Methods 38(4):628–637PubMed Lemaire B, Denhière G, Bellissens C, Jhean-Larose S (2006) A computational model for simulating text comprehension. Behav Res Methods 38(4):628–637PubMed
Zurück zum Zitat Lenci A (2008) Distributional semantics in linguistic and cognitive research. Ital J Linguist 20(1):1–31 Lenci A (2008) Distributional semantics in linguistic and cognitive research. Ital J Linguist 20(1):1–31
Zurück zum Zitat Levy O, Goldberg Y (2014) Neural word embedding as implicit matrix factorization. In: Ghahramani Z, Welling M, Cortes C, Lawrence ND, Weinberger KQ (eds) Advances in neural information processing systems, vol 27. Curran Associates Inc, New York, pp 2177–2185 Levy O, Goldberg Y (2014) Neural word embedding as implicit matrix factorization. In: Ghahramani Z, Welling M, Cortes C, Lawrence ND, Weinberger KQ (eds) Advances in neural information processing systems, vol 27. Curran Associates Inc, New York, pp 2177–2185
Zurück zum Zitat Levy O, Goldberg Y, Dagan I (2015) Improving distributional similarity with lessons learned from word embeddings. Trans Assoc Comput Linguist 3:211–225 Levy O, Goldberg Y, Dagan I (2015) Improving distributional similarity with lessons learned from word embeddings. Trans Assoc Comput Linguist 3:211–225
Zurück zum Zitat Littman ML, Jiang F, Keim GA (1998) Learning a language-independent representation for terms from a partially aligned corpus. In: ICML, pp 314–322 Littman ML, Jiang F, Keim GA (1998) Learning a language-independent representation for terms from a partially aligned corpus. In: ICML, pp 314–322
Zurück zum Zitat Lofi C (2016) Measuring semantic similarity and relatedness with distributional and knowledge-based approaches. Database Soc Japan J 14:1–9 Lofi C (2016) Measuring semantic similarity and relatedness with distributional and knowledge-based approaches. Database Soc Japan J 14:1–9
Zurück zum Zitat Louwerse M (2018) Knowing the meaning of a word by the linguistic and perceptual company it keeps. Top Cognit Sci 10(3):573–589 Louwerse M (2018) Knowing the meaning of a word by the linguistic and perceptual company it keeps. Top Cognit Sci 10(3):573–589
Zurück zum Zitat Louwerse M, Hutchinson S (2012) Neurological evidence linguistic processes precede perceptual simulation in conceptual processing. Front Psychol 3:385 PubMedPubMedCentral Louwerse M, Hutchinson S (2012) Neurological evidence linguistic processes precede perceptual simulation in conceptual processing. Front Psychol 3:385 PubMedPubMedCentral
Zurück zum Zitat Lund K, Burgess C (1996) Producing high-dimensional semantic spaces from lexical co-occurrence. Behav Res Meth Instrum Comput 28(2):203–208 Lund K, Burgess C (1996) Producing high-dimensional semantic spaces from lexical co-occurrence. Behav Res Meth Instrum Comput 28(2):203–208
Zurück zum Zitat Lund K, Burgess C, Atchley RA (1995) Semantic and associative priming in high-dimensional semantic space. In: Proceedings of the 17th annual conference of the cognitive science society, vol 17, pp 660–665 Lund K, Burgess C, Atchley RA (1995) Semantic and associative priming in high-dimensional semantic space. In: Proceedings of the 17th annual conference of the cognitive science society, vol 17, pp 660–665
Zurück zum Zitat Mandera P, Keuleers E, Brysbaert M (2017) Explaining human performance in psycholinguistic tasks with models of semantic similarity based on prediction and counting: a review and empirical validation. J Mem Lang 97:57–78 Mandera P, Keuleers E, Brysbaert M (2017) Explaining human performance in psycholinguistic tasks with models of semantic similarity based on prediction and counting: a review and empirical validation. J Mem Lang 97:57–78
Zurück zum Zitat Mandl T (1998) Tolerant and adaptative information retrieval with neural networks. Technical report. Information Science-University of Hildesheim Mandl T (1998) Tolerant and adaptative information retrieval with neural networks. Technical report. Information Science-University of Hildesheim
Zurück zum Zitat Mandl T (1999) Efficient preprocessing for information retrieval with neural networks. In: Zimmermann HJ (ed) EUFIT ‘99. 7th European congress on intelligent techniques and soft computing. Aachen, Germany Mandl T (1999) Efficient preprocessing for information retrieval with neural networks. In: Zimmermann HJ (ed) EUFIT ‘99. 7th European congress on intelligent techniques and soft computing. Aachen, Germany
Zurück zum Zitat Marr (1982) Vision, San Francisco: W. H. Freeman, pp 18–38, 54–61 Marr (1982) Vision, San Francisco: W. H. Freeman, pp 18–38, 54–61
Zurück zum Zitat Martínez-Huertas JÁ, Jastrzebska O, Mencu A, Moraleda J, Olmos R, León JA (2018) Analyzing two automatic assessment LSA methods (Inbuilt Rubric versus Golden Summary) in summaries extracted from expository texts. Psicología Educativa 24(2):85–92 Martínez-Huertas JÁ, Jastrzebska O, Mencu A, Moraleda J, Olmos R, León JA (2018) Analyzing two automatic assessment LSA methods (Inbuilt Rubric versus Golden Summary) in summaries extracted from expository texts. Psicología Educativa 24(2):85–92
Zurück zum Zitat McNamara DS (2011) Computational methods to extract meaning from text and advance theories of human cognition. Top Cognit Sci 3(1):3–17 McNamara DS (2011) Computational methods to extract meaning from text and advance theories of human cognition. Top Cognit Sci 3(1):3–17
Zurück zum Zitat Mehler A, Sichelschmidt L (2006) Reconceptualizing latent semantic analysis in terms of complex network theory. Presented at the second international conference of the german cognitive linguistics association. Munich, Germany Mehler A, Sichelschmidt L (2006) Reconceptualizing latent semantic analysis in terms of complex network theory. Presented at the second international conference of the german cognitive linguistics association. Munich, Germany
Zurück zum Zitat Mikolov T, Chen K, Corrado G, Dean J (2013) Efficient estimation of word representations in vector space. arXiv preprint arXiv:1301.3781 Mikolov T, Chen K, Corrado G, Dean J (2013) Efficient estimation of word representations in vector space. arXiv preprint arXiv:​1301.​3781
Zurück zum Zitat Millis K, Larson M (2008) Applying the construction-integration framework to aesthetic responses to representational artworks. Discourse Process 45(3):263–287 Millis K, Larson M (2008) Applying the construction-integration framework to aesthetic responses to representational artworks. Discourse Process 45(3):263–287
Zurück zum Zitat Mitchell TM, Shinkareva SV, Carlson A, Chang KM, Malave VL, Mason RA, Just MA (2008) Predicting human brain activity associated with the meanings of nouns. Science 320(5880):1191–1195PubMed Mitchell TM, Shinkareva SV, Carlson A, Chang KM, Malave VL, Mason RA, Just MA (2008) Predicting human brain activity associated with the meanings of nouns. Science 320(5880):1191–1195PubMed
Zurück zum Zitat Nastase SA, Haxby JV (2017) Structural basis of semantic memory. In: Byrne JH (ed) Learning and memory: a comprehensive reference, 2nd edn. Academic Press, New York, pp 133–151 Nastase SA, Haxby JV (2017) Structural basis of semantic memory. In: Byrne JH (ed) Learning and memory: a comprehensive reference, 2nd edn. Academic Press, New York, pp 133–151
Zurück zum Zitat Nicodemus KK, Elvevåg B, Foltz PW, Rosenstein M, Diaz-Asper C, Weinberger DR (2014) Category fluency, latent semantic analysis and schizophrenia: a candidate gene approach. Cortex 55:182–191PubMed Nicodemus KK, Elvevåg B, Foltz PW, Rosenstein M, Diaz-Asper C, Weinberger DR (2014) Category fluency, latent semantic analysis and schizophrenia: a candidate gene approach. Cortex 55:182–191PubMed
Zurück zum Zitat Olmos R, Jorge-Botana G, León JA, Escudero I (2014) Transforming selected concepts into dimensions in latent semantic analysis. Discourse Process 51(5–6):494–510 Olmos R, Jorge-Botana G, León JA, Escudero I (2014) Transforming selected concepts into dimensions in latent semantic analysis. Discourse Process 51(5–6):494–510
Zurück zum Zitat Olmos R, Jorge-Botana G, Luzón JM, Martín-Cordero JI, León JA (2016) Transforming LSA space dimensions into a rubric for an automatic assessment and feedback system. Inf Process Manag 52(3):359–373 Olmos R, Jorge-Botana G, Luzón JM, Martín-Cordero JI, León JA (2016) Transforming LSA space dimensions into a rubric for an automatic assessment and feedback system. Inf Process Manag 52(3):359–373
Zurück zum Zitat Ozcan R, Aslandogan YA (2005) Concept-based information access. In: International conference on information technology: coding and computing. ITCC 2005, vol 1. IEEE, pp 794–799 Ozcan R, Aslandogan YA (2005) Concept-based information access. In: International conference on information technology: coding and computing. ITCC 2005, vol 1. IEEE, pp 794–799
Zurück zum Zitat Paivio A (1971) Imagery and language. In: Segal SJ (ed) Imagery: current cognitive approaches. Academic, New York, pp 7–32 Paivio A (1971) Imagery and language. In: Segal SJ (ed) Imagery: current cognitive approaches. Academic, New York, pp 7–32
Zurück zum Zitat Pothos EM, Busemeyer JR (2013) Can quantum probability provide a new direction for cognitive modeling? Behav Brain Sci 36:255–327PubMed Pothos EM, Busemeyer JR (2013) Can quantum probability provide a new direction for cognitive modeling? Behav Brain Sci 36:255–327PubMed
Zurück zum Zitat Quesada JF, Kintsch W, Gomez E (2001) A computational theory of complex problem solving using the vector space model: latent semantic analysis, through the path of thousands of ants. Cognit Res Microworlds 2001:117–131 Quesada JF, Kintsch W, Gomez E (2001) A computational theory of complex problem solving using the vector space model: latent semantic analysis, through the path of thousands of ants. Cognit Res Microworlds 2001:117–131
Zurück zum Zitat Recchia RG, Louwerse MM (2015) Reproducing affective norms with lexical co-occurrence statistics: predicting valence, arousal, and dominance. Quart J Exp Psychol 68(8):1584–1598 Recchia RG, Louwerse MM (2015) Reproducing affective norms with lexical co-occurrence statistics: predicting valence, arousal, and dominance. Quart J Exp Psychol 68(8):1584–1598
Zurück zum Zitat Rogers TT, McClelland JL (2004) Semantic cognition: a parallel distributed processing approach. MIT Press, Cambridge Rogers TT, McClelland JL (2004) Semantic cognition: a parallel distributed processing approach. MIT Press, Cambridge
Zurück zum Zitat Sainz J (1991) Conceptos naturales y conceptos artificiales. In: En Mayor J, Pinillos J (eds) Pensamiento e inteligencia Tratado de Psicología General. Alhambra, España, pp 181–302 Sainz J (1991) Conceptos naturales y conceptos artificiales. In: En Mayor J, Pinillos J (eds) Pensamiento e inteligencia Tratado de Psicología General. Alhambra, España, pp 181–302
Zurück zum Zitat Salton G, Wong A, Yang C-S (1975) A vector space model for automatic indexing. Commun ACM 18(11):613–620 Salton G, Wong A, Yang C-S (1975) A vector space model for automatic indexing. Commun ACM 18(11):613–620
Zurück zum Zitat Schlaggar BL, McCandliss BD (2007) Development of neural systems for reading. Annu Rev Neurosci 30:475–503PubMed Schlaggar BL, McCandliss BD (2007) Development of neural systems for reading. Annu Rev Neurosci 30:475–503PubMed
Zurück zum Zitat Schunn CD (1999) The presence and absence of category knowledge in LSA. In: Proceedings of the 21st annual conference of the cognitive science society. Erlbaum, Mahwah Schunn CD (1999) The presence and absence of category knowledge in LSA. In: Proceedings of the 21st annual conference of the cognitive science society. Erlbaum, Mahwah
Zurück zum Zitat Shepard RN, Chipman S (1970) Second-order isomorphism of internal representations: shapes of states. Cognit Psychol 1(1):1–17 Shepard RN, Chipman S (1970) Second-order isomorphism of internal representations: shapes of states. Cognit Psychol 1(1):1–17
Zurück zum Zitat Shultz TR (2003) Computational developmental psychology. MIT Press, Cambridge Shultz TR (2003) Computational developmental psychology. MIT Press, Cambridge
Zurück zum Zitat Sierra-Vázquez V (1986) Procesamiento visual temprano: Aspectos psicofísicos del análisis espacial de imágenes. In: Peraita H (ed) Psicología cognitiva y ciencia cognitiva. UNED, Madrid, pp 42–126 Sierra-Vázquez V (1986) Procesamiento visual temprano: Aspectos psicofísicos del análisis espacial de imágenes. In: Peraita H (ed) Psicología cognitiva y ciencia cognitiva. UNED, Madrid, pp 42–126
Zurück zum Zitat Squire LR (1987) Memory and brain. Oxford University Press, New York Squire LR (1987) Memory and brain. Oxford University Press, New York
Zurück zum Zitat Steyvers M, Griffiths T (2006) Probabilistic topic models. In: Landauer T, Mcnamara D, Dennis S, Kintsch W (eds) Latent semantic analysis: a road to meaning. Lawrence Erlbaum, Milton Park Steyvers M, Griffiths T (2006) Probabilistic topic models. In: Landauer T, Mcnamara D, Dennis S, Kintsch W (eds) Latent semantic analysis: a road to meaning. Lawrence Erlbaum, Milton Park
Zurück zum Zitat Steyvers M, Tenenbaum JB (2005) The large-scale structure of semantic networks: statistical analyses and a model of semantic growth. Cognit Sci 29(1):41–78 Steyvers M, Tenenbaum JB (2005) The large-scale structure of semantic networks: statistical analyses and a model of semantic growth. Cognit Sci 29(1):41–78
Zurück zum Zitat Thurstone LL (1931) The measurement of social attitudes. J Abnormal Soc Psychol 26(3):249 Thurstone LL (1931) The measurement of social attitudes. J Abnormal Soc Psychol 26(3):249
Zurück zum Zitat Tonta Y, Darvish HR (2010) Diffusion of latent semantic analysis as a research tool: a social network analysis approach. J Informetr 4(2):166–174 Tonta Y, Darvish HR (2010) Diffusion of latent semantic analysis as a research tool: a social network analysis approach. J Informetr 4(2):166–174
Zurück zum Zitat Turk MA, Pentland AP (1991) Face recognition using eigenfaces. In: Proceedings of IEEE computer society conference on computer vision and pattern recognition, CVPR’91. IEEE, pp 586–591 Turk MA, Pentland AP (1991) Face recognition using eigenfaces. In: Proceedings of IEEE computer society conference on computer vision and pattern recognition, CVPR’91. IEEE, pp 586–591
Zurück zum Zitat Turney PD, Littman M (2003) Measuring praise and criticism: inference of semantic orientation from association. ACM Trans Inf Syst 21:315–346 Turney PD, Littman M (2003) Measuring praise and criticism: inference of semantic orientation from association. ACM Trans Inf Syst 21:315–346
Zurück zum Zitat Tversky A (1977) Features of similarity. Psychol Rev 84(4):327–352 Tversky A (1977) Features of similarity. Psychol Rev 84(4):327–352
Zurück zum Zitat Van Dijk TA, Kintsch W, Van Dijk TA (1983) Strategies of discourse comprehension. Academic Press, New York, pp 11–12 Van Dijk TA, Kintsch W, Van Dijk TA (1983) Strategies of discourse comprehension. Academic Press, New York, pp 11–12
Zurück zum Zitat Watts DJ, Strogatz SH (1998) Collective dynamics of ‘small-world’networks. Nature 393(6684):440 Watts DJ, Strogatz SH (1998) Collective dynamics of ‘small-world’networks. Nature 393(6684):440
Zurück zum Zitat Wierzbicka A (1996) Semantics: primes and universals: primes and universals. Oxford University Press, Oxford Wierzbicka A (1996) Semantics: primes and universals: primes and universals. Oxford University Press, Oxford
Zurück zum Zitat Wittgenstein L (1953) Philosophical investigations. Philosophische Untersuchungen. Macmillan, Oxford Wittgenstein L (1953) Philosophical investigations. Philosophische Untersuchungen. Macmillan, Oxford
Zurück zum Zitat Yan X, Li X, Song D (2004) A correlation analysis on LSA and HAL semantic space models. In: International conference on computational and information science. Springer, Berlin, pp 711–717 Yan X, Li X, Song D (2004) A correlation analysis on LSA and HAL semantic space models. In: International conference on computational and information science. Springer, Berlin, pp 711–717
Zurück zum Zitat Yeari M, van den Broek P (2016) A computational modeling of semantic knowledge in reading comprehension: integrating the landscape model with latent semantic analysis. Behav Res Methods 48(3):880–896PubMed Yeari M, van den Broek P (2016) A computational modeling of semantic knowledge in reading comprehension: integrating the landscape model with latent semantic analysis. Behav Res Methods 48(3):880–896PubMed
Zurück zum Zitat Yearsley JM, Pothos EM, Hampton JA, Duran AB (2015) Towards a quantum probability theory of similarity judgments. Lect Notes Comput Sci 8951:132–145 Yearsley JM, Pothos EM, Hampton JA, Duran AB (2015) Towards a quantum probability theory of similarity judgments. Lect Notes Comput Sci 8951:132–145
Zurück zum Zitat Zwaan RA, Yaxley RH (2003) Spatial iconicity affects semantic relatedness judgments. Psychon Bull Rev 10(4):954–958PubMed Zwaan RA, Yaxley RH (2003) Spatial iconicity affects semantic relatedness judgments. Psychon Bull Rev 10(4):954–958PubMed
Metadaten
Titel
Bridging the theoretical gap between semantic representation models without the pressure of a ranking: some lessons learnt from LSA
verfasst von
Guillermo Jorge-Botana
Ricardo Olmos
José María Luzón
Publikationsdatum
25.09.2019
Verlag
Springer Berlin Heidelberg
Erschienen in
Cognitive Processing
Print ISSN: 1612-4782
Elektronische ISSN: 1612-4790
DOI
https://doi.org/10.1007/s10339-019-00934-x

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