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Published in: International Journal of Machine Learning and Cybernetics 3/2022

22-03-2021 | Original Article

Multi-view document clustering based on geometrical similarity measurement

Authors: Bassoma Diallo, Jie Hu, Tianrui Li, Ghufran Ahmad Khan, Ahmed Saad Hussein

Published in: International Journal of Machine Learning and Cybernetics | Issue 3/2022

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Abstract

Numerous works implemented multi-view clustering algorithms in document clustering. A challenging problem in document clustering is the similarity metric. Existing multi-view document clustering methods broadly utilized two measurements: the Cosine similarity (CS) and the Euclidean distance (ED). The first did not consider the magnitude difference (MD) between the two vectors. The second can’t register the divergence of two vectors that offer a similar ED. In this paper, we originally created five models of similarity metric. This methodology foils the downside of the CS and ED similarity metrics by figuring the divergence between documents with the same ED while thinking about their sizes. Furthermore, we proposed our multi-view document clustering plan which dependent on the proposed similarity metric. Firstly, CS, ED, triangle’s area similarity and sector’s area similarity metric, and our five similarity metrics have been applied to every view of a dataset to generate a corresponding similarity matrix. Afterward, we ran clustering algorithms on these similarity matrices to evaluate the performance of single view. Later, we aggregated these similarity matrices to obtain a unified similarity matrix and apply spectral clustering algorithm on it to generate the final clusters. The experimental results show that the proposed similarity functions can gauge the similitude between documents more accurately than the existing metrics, and the proposed clustering scheme surpasses considerably up-to-date algorithms.

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Literature
1.
go back to reference Shah N, Mahajan S (2012) Document clustering: a detailed review. Int J Appl Inf Syst 4(5):30–38 Shah N, Mahajan S (2012) Document clustering: a detailed review. Int J Appl Inf Syst 4(5):30–38
2.
go back to reference Bisson G, Grimal C (2012) Co-clustering of multi-view datasets: a parallelizable approach. In: Proceedings of the 12th international conference on data mining. IEEE, pp 828–833 Bisson G, Grimal C (2012) Co-clustering of multi-view datasets: a parallelizable approach. In: Proceedings of the 12th international conference on data mining. IEEE, pp 828–833
3.
go back to reference Hussain SF, Mushtaq M, Halim Z (2014) Multi-view document clustering via ensemble method. J Intell Inf Syst 43(1):81–99CrossRef Hussain SF, Mushtaq M, Halim Z (2014) Multi-view document clustering via ensemble method. J Intell Inf Syst 43(1):81–99CrossRef
4.
go back to reference Sabthami J, Thirumoorthy K, Muneeswaran K (2016) Multi-view clustering of clinical documents based on conditions and medical responses of patients. In: Proceedings of the 10th international conference on intelligent systems and control (ISCO). IEEE, pp 1–5 Sabthami J, Thirumoorthy K, Muneeswaran K (2016) Multi-view clustering of clinical documents based on conditions and medical responses of patients. In: Proceedings of the 10th international conference on intelligent systems and control (ISCO). IEEE, pp 1–5
5.
go back to reference Janani R, Vijayarani S (2019) Text document clustering using spectral clustering algorithm with particle swarm optimization. Proc Expert Syst Appl 134:192–200CrossRef Janani R, Vijayarani S (2019) Text document clustering using spectral clustering algorithm with particle swarm optimization. Proc Expert Syst Appl 134:192–200CrossRef
6.
go back to reference Wahid A, Gao X, Andreae P (2014) Multi-view clustering of web documents using multi-objective genetic algorithm. In: Proceedings of the congress on evolutionary computation (CEC). IEEE, pp 2625–2632 Wahid A, Gao X, Andreae P (2014) Multi-view clustering of web documents using multi-objective genetic algorithm. In: Proceedings of the congress on evolutionary computation (CEC). IEEE, pp 2625–2632
7.
go back to reference Priya MJS (2012) Clustering technique in data mining for text documents. Int J Comput Sci Inf Technol 1:2943–2947 Priya MJS (2012) Clustering technique in data mining for text documents. Int J Comput Sci Inf Technol 1:2943–2947
8.
go back to reference Zhan K, Shi J, Wang J, Tian F (2017) Graph-regularized concept factorization for multi-view document clustering. J Vis Commun Image Represent 48:411–418CrossRef Zhan K, Shi J, Wang J, Tian F (2017) Graph-regularized concept factorization for multi-view document clustering. J Vis Commun Image Represent 48:411–418CrossRef
9.
go back to reference Yan W, Zhang B, Ma S, Yang Z (2017) A novel regularized concept factorization for document clustering. Knowl Based Syst 135:147–158CrossRef Yan W, Zhang B, Ma S, Yang Z (2017) A novel regularized concept factorization for document clustering. Knowl Based Syst 135:147–158CrossRef
10.
go back to reference Jia H, Ding S, Du M, Xue Y (2016) Approximate normalized cuts without Eigen-decomposition. Inf Sci 374:135–150MATHCrossRef Jia H, Ding S, Du M, Xue Y (2016) Approximate normalized cuts without Eigen-decomposition. Inf Sci 374:135–150MATHCrossRef
11.
go back to reference Sherkat E, Milios EE, Minghim R (2019) A visual analytic approach for interactive document clustering. ACM Trans Interact Intell Syst 10(1):1–33CrossRef Sherkat E, Milios EE, Minghim R (2019) A visual analytic approach for interactive document clustering. ACM Trans Interact Intell Syst 10(1):1–33CrossRef
12.
go back to reference Hussain SF, Bisson G, Grimal C (2010) An improved co-similarity measure for document clustering. In: Proceedings of the 9th international conference on machine learning and applications, 2010, pp 190–197 Hussain SF, Bisson G, Grimal C (2010) An improved co-similarity measure for document clustering. In: Proceedings of the 9th international conference on machine learning and applications, 2010, pp 190–197
13.
go back to reference Xu S, Chan K-S, Gao J, Xu X, Li X, Hua X, An J (2016) An integrated k-means-Laplacian cluster ensemble approach for document datasets. Neurocomputing 214:495–507CrossRef Xu S, Chan K-S, Gao J, Xu X, Li X, Hua X, An J (2016) An integrated k-means-Laplacian cluster ensemble approach for document datasets. Neurocomputing 214:495–507CrossRef
14.
go back to reference Heidarian A, Dinneen MJ (2016) A hybrid geometric approach for measuring similarity level among documents and document clustering. In: Proceedings of the 2nd international conference on big data computing service and applications. IEEE, pp 142–151 Heidarian A, Dinneen MJ (2016) A hybrid geometric approach for measuring similarity level among documents and document clustering. In: Proceedings of the 2nd international conference on big data computing service and applications. IEEE, pp 142–151
15.
go back to reference Abualigah LM, Khader AT, Hanandeh ES (2018) A combination of objective functions and hybrid krill herd algorithm for text document clustering analysis. Eng Appl Artif Intell 73:111–125CrossRef Abualigah LM, Khader AT, Hanandeh ES (2018) A combination of objective functions and hybrid krill herd algorithm for text document clustering analysis. Eng Appl Artif Intell 73:111–125CrossRef
16.
go back to reference Huang S, Xu Z, Lv J (2018) Adaptive local structure learning for document co-clustering. Knowl Based Syst 148:74–84CrossRef Huang S, Xu Z, Lv J (2018) Adaptive local structure learning for document co-clustering. Knowl Based Syst 148:74–84CrossRef
17.
go back to reference Tan AH, Ridge K, Labs D, Terrace HMK (1999) Text mining: the state of the art and the challenges,” Proceedings of the Pakdd workshop on knowledge discovery from advanced databases, pp 65–70 Tan AH, Ridge K, Labs D, Terrace HMK (1999) Text mining: the state of the art and the challenges,” Proceedings of the Pakdd workshop on knowledge discovery from advanced databases, pp 65–70
18.
go back to reference Kaijun W, Baijie W, Liuqing P (2009) CVAP: Validation for cluster analyses. Data Sci J 0904220071–0904220071 Kaijun W, Baijie W, Liuqing P (2009) CVAP: Validation for cluster analyses. Data Sci J 0904220071–0904220071
19.
go back to reference Talib R, Kashif M, Ayesha S, Fatima F (2016) Text mining: techniques, applications and issues. Int J Adv Comput Sci Appl 7(11):414–418 Talib R, Kashif M, Ayesha S, Fatima F (2016) Text mining: techniques, applications and issues. Int J Adv Comput Sci Appl 7(11):414–418
20.
go back to reference Bhardwaj B (2016) Text mining, its utilities, challenges and clustering techniques. Int J Comput Appl 135(7):22–24 Bhardwaj B (2016) Text mining, its utilities, challenges and clustering techniques. Int J Comput Appl 135(7):22–24
21.
go back to reference Yue L, Zuo W, Peng T, Wang Y, Han X (2015) A fuzzy document clustering approach based on domain-specified ontology. Data Knowl Eng 100:148–166CrossRef Yue L, Zuo W, Peng T, Wang Y, Han X (2015) A fuzzy document clustering approach based on domain-specified ontology. Data Knowl Eng 100:148–166CrossRef
22.
go back to reference Birjali M, Beni-Hssane A, Erritali M (2016) Measuring documents similarity in large corpus using mapreduce algorithm. In: Proceedings of the 5th international conference on multimedia computing and systems. IEEE, 2016, pp 24–28 Birjali M, Beni-Hssane A, Erritali M (2016) Measuring documents similarity in large corpus using mapreduce algorithm. In: Proceedings of the 5th international conference on multimedia computing and systems. IEEE, 2016, pp 24–28
23.
go back to reference Wagh R, Anand D (2017) Application of citation network analysis for improved similarity index estimation of legal case documents: a study. In: International conference on current trends in advanced computing, (ICCTAC). IEEE, 2017, pp 1–5 Wagh R, Anand D (2017) Application of citation network analysis for improved similarity index estimation of legal case documents: a study. In: International conference on current trends in advanced computing, (ICCTAC). IEEE, 2017, pp 1–5
24.
go back to reference Jagatheeshkumar G, Brunda SS (2017) An analysis of efficient clustering methods for estimates similarity measures. In: Proceedings of the 4th international conference on advanced computing and communication systems. IEEE, 2017, pp 1–3 Jagatheeshkumar G, Brunda SS (2017) An analysis of efficient clustering methods for estimates similarity measures. In: Proceedings of the 4th international conference on advanced computing and communication systems. IEEE, 2017, pp 1–3
25.
go back to reference Shirkhorshidi AS, Aghabozorgi S, Wah TY (2015) A comparison study on similarity and dissimilarity measures in clustering continuous data. PloS One 10(12):1–20CrossRef Shirkhorshidi AS, Aghabozorgi S, Wah TY (2015) A comparison study on similarity and dissimilarity measures in clustering continuous data. PloS One 10(12):1–20CrossRef
26.
go back to reference Popat SK, Deshmukh PB, Metre VA (2017) Hierarchical document clustering based on cosine similarity measure. In: Proceedings of the 1st international conference on intelligent systems and information management. IEEE, 2017, pp 153–159 Popat SK, Deshmukh PB, Metre VA (2017) Hierarchical document clustering based on cosine similarity measure. In: Proceedings of the 1st international conference on intelligent systems and information management. IEEE, 2017, pp 153–159
27.
go back to reference George KK, Kumar CS, Sivadas S, Ramachandran K, Panda A (2018) Analysis of cosine distance features for speaker verification. Pattern Recognit Lett 112:285–289CrossRef George KK, Kumar CS, Sivadas S, Ramachandran K, Panda A (2018) Analysis of cosine distance features for speaker verification. Pattern Recognit Lett 112:285–289CrossRef
28.
go back to reference Kalhori H, Alamdari MM, Ye L (2018) Automated algorithm for impact force identification using cosine similarity searching. Measurement 122:648–657CrossRef Kalhori H, Alamdari MM, Ye L (2018) Automated algorithm for impact force identification using cosine similarity searching. Measurement 122:648–657CrossRef
29.
go back to reference Diego JSN, Mesquita PP, João PP Gomes, Amauri HSJ (2017) Euclidean distance estimation in incomplete datasets. Neurocomputing 248:11–18CrossRef Diego JSN, Mesquita PP, João PP Gomes, Amauri HSJ (2017) Euclidean distance estimation in incomplete datasets. Neurocomputing 248:11–18CrossRef
30.
go back to reference Sailaja NV, Padmasree L, Mangathayaru N (2016) Survey of text mining techniques, challenges and their applications. Int J Comput Appl 146(11):30–35 Sailaja NV, Padmasree L, Mangathayaru N (2016) Survey of text mining techniques, challenges and their applications. Int J Comput Appl 146(11):30–35
31.
go back to reference Ye Y, Liu X, Liu Q, Yin J (2017) Consensus kernel k-means clustering for incomplete multi-view data. Comput Intell Neurosci 2017:1–11CrossRef Ye Y, Liu X, Liu Q, Yin J (2017) Consensus kernel k-means clustering for incomplete multi-view data. Comput Intell Neurosci 2017:1–11CrossRef
32.
go back to reference Hussain SF, Bashir S (2016) Co-clustering of multi-view datasets. Knowl Inf Syst 47(3):545–570CrossRef Hussain SF, Bashir S (2016) Co-clustering of multi-view datasets. Knowl Inf Syst 47(3):545–570CrossRef
33.
go back to reference Liang N, Yang Z, Li Z, Sun W, Xie S (2020) Multi-view clustering by non-negative matrix factorization with co-orthogonal constraints. Knowl Based Syst 105582 Liang N, Yang Z, Li Z, Sun W, Xie S (2020) Multi-view clustering by non-negative matrix factorization with co-orthogonal constraints. Knowl Based Syst 105582
34.
go back to reference Jin H, Feiping N, Heng H, Chris D (2014) Robust manifold non-negative matrix factorization. ACM Trans Knowl Discov Data 8(3):1–21CrossRef Jin H, Feiping N, Heng H, Chris D (2014) Robust manifold non-negative matrix factorization. ACM Trans Knowl Discov Data 8(3):1–21CrossRef
35.
go back to reference Yang Y, Wang H (2018) Multi-view clustering: a survey. Big Data Min Anal 1(2):83–107CrossRef Yang Y, Wang H (2018) Multi-view clustering: a survey. Big Data Min Anal 1(2):83–107CrossRef
36.
go back to reference Diallo B, Hu J, Li T, Khan G, Ji C (2019) Concept-enhanced multi-view clustering of document data. In: Proceedings of the 14th international conference on intelligent systems and knowledge engineering. IEEE, 2019, pp 1357–1363 Diallo B, Hu J, Li T, Khan G, Ji C (2019) Concept-enhanced multi-view clustering of document data. In: Proceedings of the 14th international conference on intelligent systems and knowledge engineering. IEEE, 2019, pp 1357–1363
37.
go back to reference Yu D, Xu Z, Pedrycz W, Wang W (2017) Information sciences 1968–2016: a retrospective analysis with text mining and bibliometric. Inf Sci 418:619–634CrossRef Yu D, Xu Z, Pedrycz W, Wang W (2017) Information sciences 1968–2016: a retrospective analysis with text mining and bibliometric. Inf Sci 418:619–634CrossRef
38.
go back to reference Saini N, Saha S, Bhattacharyya P (2019) Automatic scientific document clustering using self-organized multi-objective differential evolution. Cogn Comput 11(2):271–293CrossRef Saini N, Saha S, Bhattacharyya P (2019) Automatic scientific document clustering using self-organized multi-objective differential evolution. Cogn Comput 11(2):271–293CrossRef
39.
go back to reference Vega-Pons S, Ruiz-Shulcloper J (2011) A survey of clustering ensemble algorithms. Int J Pattern Recognit Artif Intell 25(03):337–372MathSciNetCrossRef Vega-Pons S, Ruiz-Shulcloper J (2011) A survey of clustering ensemble algorithms. Int J Pattern Recognit Artif Intell 25(03):337–372MathSciNetCrossRef
40.
go back to reference Krawczyk B, Minku LL, Gama J, Stefanowski J, Woźniak M (2017) Ensemble learning for data stream analysis: a survey. Inf Fusion 37:132–156CrossRef Krawczyk B, Minku LL, Gama J, Stefanowski J, Woźniak M (2017) Ensemble learning for data stream analysis: a survey. Inf Fusion 37:132–156CrossRef
41.
go back to reference Boongoen T, Iam-On N (2018) Cluster ensembles: a survey of approaches with recent extensions and applications. Comput Sci Rev 28:1–25MathSciNetMATHCrossRef Boongoen T, Iam-On N (2018) Cluster ensembles: a survey of approaches with recent extensions and applications. Comput Sci Rev 28:1–25MathSciNetMATHCrossRef
42.
go back to reference Xie X, Sun S (2013) Multi-view clustering ensembles. In: Proceedings of the 2013 international conference on machine learning and cybernetics. IEEE, 2013, pp 51–56 Xie X, Sun S (2013) Multi-view clustering ensembles. In: Proceedings of the 2013 international conference on machine learning and cybernetics. IEEE, 2013, pp 51–56
43.
go back to reference Cano A (2017) An ensemble approach to multi-view multi-instance learning. Knowl Based Syst 136:46–57CrossRef Cano A (2017) An ensemble approach to multi-view multi-instance learning. Knowl Based Syst 136:46–57CrossRef
44.
go back to reference Huang S, Wang H, Li D, Yang Y, Li T (2015) Spectral co-clustering ensemble. Knowl Based Syst 84:46–55CrossRef Huang S, Wang H, Li D, Yang Y, Li T (2015) Spectral co-clustering ensemble. Knowl Based Syst 84:46–55CrossRef
45.
go back to reference Sun S (2013) A survey of multi-view machine learning. Neural Comput Appl 23(7–8):2031–2038CrossRef Sun S (2013) A survey of multi-view machine learning. Neural Comput Appl 23(7–8):2031–2038CrossRef
46.
go back to reference Zhao J, Xie X, Xu X, Sun S (2017) Multi-view learning overview: recent progress and new challenges. Inf Fusion 38:43–54CrossRef Zhao J, Xie X, Xu X, Sun S (2017) Multi-view learning overview: recent progress and new challenges. Inf Fusion 38:43–54CrossRef
47.
go back to reference Jiang B, Qiu F, Wang L (2016) Multi-view clustering via simultaneous weighting on views and features. Appl Soft Comput J 47:304–315CrossRef Jiang B, Qiu F, Wang L (2016) Multi-view clustering via simultaneous weighting on views and features. Appl Soft Comput J 47:304–315CrossRef
48.
go back to reference Xu YM, Wang CD, Lai JH (2016) Weighted multi-view clustering with feature selection. Pattern Recognit 53:25–35CrossRef Xu YM, Wang CD, Lai JH (2016) Weighted multi-view clustering with feature selection. Pattern Recognit 53:25–35CrossRef
49.
go back to reference Huang S, Kang Z, Xu Z (2018) Self-weighted multi-view clustering with soft capped norm. Knowl Based Syst 158:1–8CrossRef Huang S, Kang Z, Xu Z (2018) Self-weighted multi-view clustering with soft capped norm. Knowl Based Syst 158:1–8CrossRef
50.
go back to reference Huang S, Kang Z, Tsang IW, Xu Z (2019) Auto-weighted multi-view clustering via kernelized graph learning. Pattern Recognit 88:174–184CrossRef Huang S, Kang Z, Tsang IW, Xu Z (2019) Auto-weighted multi-view clustering via kernelized graph learning. Pattern Recognit 88:174–184CrossRef
51.
go back to reference Wahid A, Gao X, Andreae P (2015) Multi-objective clustering ensemble for high-dimensional data based on strength pareto evolutionary algorithm (spea-ii). In: Proceedings of the international conference on data science and advanced analytics. IEEE, 2015, pp 1–9 Wahid A, Gao X, Andreae P (2015) Multi-objective clustering ensemble for high-dimensional data based on strength pareto evolutionary algorithm (spea-ii). In: Proceedings of the international conference on data science and advanced analytics. IEEE, 2015, pp 1–9
53.
go back to reference Dong J-Y, Chen Y, Wan S-P (2018) A cosine similarity based qualiflex approach with hesitant fuzzy linguistic term sets for financial performance evaluation. Appl Soft Comput 69:316–329CrossRef Dong J-Y, Chen Y, Wan S-P (2018) A cosine similarity based qualiflex approach with hesitant fuzzy linguistic term sets for financial performance evaluation. Appl Soft Comput 69:316–329CrossRef
54.
go back to reference Geng Z, Li Y, Han Y, Zhu Q (2018) A novel self-organizing cosine similarity learning network: an application to production prediction of petrochemical systems. Energy 142:400–410CrossRef Geng Z, Li Y, Han Y, Zhu Q (2018) A novel self-organizing cosine similarity learning network: an application to production prediction of petrochemical systems. Energy 142:400–410CrossRef
55.
go back to reference Xiang W-L, Li Y-Z, He R-C, Gao M-X, An M-Q (2018) A novel artificial bee colony algorithm based on the cosine similarity. Comput Ind Eng 115:54–68CrossRef Xiang W-L, Li Y-Z, He R-C, Gao M-X, An M-Q (2018) A novel artificial bee colony algorithm based on the cosine similarity. Comput Ind Eng 115:54–68CrossRef
56.
go back to reference Moujahid D, Elharrouss O, Tairi H (2018) Visual object tracking via the local soft cosine similarity. Pattern Recognit Lett 110:79–85CrossRef Moujahid D, Elharrouss O, Tairi H (2018) Visual object tracking via the local soft cosine similarity. Pattern Recognit Lett 110:79–85CrossRef
57.
59.
go back to reference Abasi AK, Khader AT, Al-Betar MA, Naim S, Makhadmeh SN, Alyasseri ZAA (2020) Link-based multi-verse optimizer for text documents clustering. Appl Soft Comput 87:Article 106002 Abasi AK, Khader AT, Al-Betar MA, Naim S, Makhadmeh SN, Alyasseri ZAA (2020) Link-based multi-verse optimizer for text documents clustering. Appl Soft Comput 87:Article 106002
60.
go back to reference Strehl A, Ghosh J (2002) Cluster ensembles—a knowledge reuse framework for combining multiple partitions. J Mach Learn Res 3:583–617MathSciNetMATH Strehl A, Ghosh J (2002) Cluster ensembles—a knowledge reuse framework for combining multiple partitions. J Mach Learn Res 3:583–617MathSciNetMATH
61.
go back to reference Liu X, Yu S, Moreau Y, Moor BD, Glänzel W, Janssens FAL (2009) Hybrid clustering of text mining and bibliometrics applied to journal sets. In: Proceedings of the international conference on data mining, 2009, pp 49–60 Liu X, Yu S, Moreau Y, Moor BD, Glänzel W, Janssens FAL (2009) Hybrid clustering of text mining and bibliometrics applied to journal sets. In: Proceedings of the international conference on data mining, 2009, pp 49–60
62.
go back to reference Zheng L, Li T, Ding C (2010) Hierarchical ensemble clustering. In: 10th international conference on data mining. IEEE, 2010, pp 1199–1204 Zheng L, Li T, Ding C (2010) Hierarchical ensemble clustering. In: 10th international conference on data mining. IEEE, 2010, pp 1199–1204
63.
go back to reference Mirzaei H (2010) A novel multi-view agglomerative clustering algorithm based on ensemble of partitions on different views. In: Proceedings of the 20th international conference on pattern recognition. IEEE, 2010, pp 1007–1010 Mirzaei H (2010) A novel multi-view agglomerative clustering algorithm based on ensemble of partitions on different views. In: Proceedings of the 20th international conference on pattern recognition. IEEE, 2010, pp 1007–1010
64.
go back to reference Hussain SF, Haris M (2019) A k-means based co-clustering (kCC) algorithm for sparse, high dimensional data. Expert Syst Appl 118:20–34CrossRef Hussain SF, Haris M (2019) A k-means based co-clustering (kCC) algorithm for sparse, high dimensional data. Expert Syst Appl 118:20–34CrossRef
65.
go back to reference Wang J, Tian F, Yu H, Liu CH, Zhan K, Wang X (2018) Diverse non-negative matrix factorization for multi-view data representation. IEEE Trans Cybern 48(9):2620–2632CrossRef Wang J, Tian F, Yu H, Liu CH, Zhan K, Wang X (2018) Diverse non-negative matrix factorization for multi-view data representation. IEEE Trans Cybern 48(9):2620–2632CrossRef
66.
go back to reference Brbić M, Kopriva I (2018) Multi-view low-rank sparse subspace clustering. Pattern Recognit 73:247–258CrossRef Brbić M, Kopriva I (2018) Multi-view low-rank sparse subspace clustering. Pattern Recognit 73:247–258CrossRef
67.
go back to reference Zong L, Zhang X, Zhao L, Yu H, Zhao Q (2017) Multi-view clustering via multi-manifold regularized non-negative matrix factorization. Neural Netw 88:74–89MATHCrossRef Zong L, Zhang X, Zhao L, Yu H, Zhao Q (2017) Multi-view clustering via multi-manifold regularized non-negative matrix factorization. Neural Netw 88:74–89MATHCrossRef
68.
go back to reference Huang S, Kang Z, Xu Z (2018) Self-weighted multi-view clustering with soft capped norm. Knowl Based Syst 158:1–8CrossRef Huang S, Kang Z, Xu Z (2018) Self-weighted multi-view clustering with soft capped norm. Knowl Based Syst 158:1–8CrossRef
69.
go back to reference Huang S, Ren Y, Xu Z (2018) Robust multi-view data clustering with multi-view capped-norm k-means. Neurocomputing 311:197–208CrossRef Huang S, Ren Y, Xu Z (2018) Robust multi-view data clustering with multi-view capped-norm k-means. Neurocomputing 311:197–208CrossRef
70.
go back to reference Ren Y, Huang S, Zhao P, Han M, Xu Z (2020) Self-paced and auto-weighted multi-view clustering. Neurocomputing 383:248–256CrossRef Ren Y, Huang S, Zhao P, Han M, Xu Z (2020) Self-paced and auto-weighted multi-view clustering. Neurocomputing 383:248–256CrossRef
Metadata
Title
Multi-view document clustering based on geometrical similarity measurement
Authors
Bassoma Diallo
Jie Hu
Tianrui Li
Ghufran Ahmad Khan
Ahmed Saad Hussein
Publication date
22-03-2021
Publisher
Springer Berlin Heidelberg
Published in
International Journal of Machine Learning and Cybernetics / Issue 3/2022
Print ISSN: 1868-8071
Electronic ISSN: 1868-808X
DOI
https://doi.org/10.1007/s13042-021-01295-8

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