Skip to main content
Top
Published in: The Journal of Supercomputing 8/2020

19-11-2019

Predicting the customer’s opinion on amazon products using selective memory architecture-based convolutional neural network

Authors: Trupthi Mandhula, Suresh Pabboju, Narsimha Gugulotu

Published in: The Journal of Supercomputing | Issue 8/2020

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

Opinion mining and sentiment analysis are useful to extract subjective information out of bulk text documents. Predicting the customer’s opinion on amazon products has several benefits like reducing customer churn, agent monitoring, handling multiple customers, tracking overall customer satisfaction, quick escalations, and upselling opportunities. Though performing sentiment analysis is a challenging task for the researchers to identify the user’s sentiments from the large datasets, it is unstructured in nature, and also includes slangs, misspells, and abbreviations. To address this problem, a new proposed system is developed in this research study. Here, the proposed system comprises of four major phases; they are data collection, pre-processing, keyword extraction, and classification. Initially, the input data were collected from the dataset: amazon customer review. After collecting the data, pre-processing was carried out for enhancing the quality of collected data. The pre-processing phase comprises of three systems: lemmatization, review spam detection, and removal of stop words and URLs. Then, an effective topic modelling approach latent Dirichlet allocation along with modified possibilistic fuzzy C-Means was applied to extract the keywords and also helps in identifying the concerned topics. The extracted keywords were classified into three forms (positive, negative, and neutral) by applying an effective machine learning classifier: Selective memory architecture-based convolutional neural network. The experimental outcome showed that the proposed system enhanced the accuracy in sentiment analysis up to 6–20% related to the existing systems.

Dont have a licence yet? Then find out more about our products and how to get one now:

Springer Professional "Wirtschaft"

Online-Abonnement

Mit Springer Professional "Wirtschaft" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 340 Zeitschriften

aus folgenden Fachgebieten:

  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Versicherung + Risiko




Jetzt Wissensvorsprung sichern!

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Literature
1.
go back to reference Hassan MK, Shakthi SP, Sasikala R (2017) Sentimental analysis of Amazon reviews using naïve bayes on laptop products with MongoDB and R. IOP Conf Ser Mater Sci Eng IOP Publ 263(4):042090CrossRef Hassan MK, Shakthi SP, Sasikala R (2017) Sentimental analysis of Amazon reviews using naïve bayes on laptop products with MongoDB and R. IOP Conf Ser Mater Sci Eng IOP Publ 263(4):042090CrossRef
2.
go back to reference Glorot X, Bordes A, Bengio Y (2011) Domain adaptation for large-scale sentiment classification: A deep learning approach. In: Proceedings of the 28th International Conference on Machine Learning (ICML-11), pp 513–520 Glorot X, Bordes A, Bengio Y (2011) Domain adaptation for large-scale sentiment classification: A deep learning approach. In: Proceedings of the 28th International Conference on Machine Learning (ICML-11), pp 513–520
3.
go back to reference Deng ZH, Luo KH, Yu HL (2014) A study of supervised term weighting scheme for sentiment analysis. Expert Syst Appl 41(7):3506–3513CrossRef Deng ZH, Luo KH, Yu HL (2014) A study of supervised term weighting scheme for sentiment analysis. Expert Syst Appl 41(7):3506–3513CrossRef
4.
go back to reference Fang X, Zhan J (2015) Sentiment analysis using product review data. J Big Data 2(1):5CrossRef Fang X, Zhan J (2015) Sentiment analysis using product review data. J Big Data 2(1):5CrossRef
5.
go back to reference Pandey AC, Rajpoot DS, Saraswat M (2017) Twitter sentiment analysis using hybrid cuckoo search method. Inf Process Manag 53(4):764–779CrossRef Pandey AC, Rajpoot DS, Saraswat M (2017) Twitter sentiment analysis using hybrid cuckoo search method. Inf Process Manag 53(4):764–779CrossRef
6.
go back to reference Ghiassi M, Lee S (2018) A domain transferable lexicon set for Twitter sentiment analysis using a supervised machine learning approach. Expert Syst Appl 106:197–216CrossRef Ghiassi M, Lee S (2018) A domain transferable lexicon set for Twitter sentiment analysis using a supervised machine learning approach. Expert Syst Appl 106:197–216CrossRef
7.
go back to reference Alharbi ASM, de Doncker E (2019) Twitter sentiment analysis with a deep neural network: an enhanced approach using user behavioral information. Cogn Syst Res 54:50–61CrossRef Alharbi ASM, de Doncker E (2019) Twitter sentiment analysis with a deep neural network: an enhanced approach using user behavioral information. Cogn Syst Res 54:50–61CrossRef
8.
go back to reference Daniel M, Neves RF, Horta N (2017) Company event popularity for financial markets using Twitter and sentiment analysis. Expert Syst Appl 71:111–124CrossRef Daniel M, Neves RF, Horta N (2017) Company event popularity for financial markets using Twitter and sentiment analysis. Expert Syst Appl 71:111–124CrossRef
9.
go back to reference Abid F, Alam M, Yasir M, Li C (2019) Sentiment analysis through recurrent variants latterly on convolutional neural network of Twitter. Future Gener Comput Syst 95:292–308CrossRef Abid F, Alam M, Yasir M, Li C (2019) Sentiment analysis through recurrent variants latterly on convolutional neural network of Twitter. Future Gener Comput Syst 95:292–308CrossRef
10.
go back to reference Öztürk N, Ayvaz S (2018) Sentiment analysis on Twitter: a text mining approach to the Syrian refugee crisis. Telemat Inform 35(1):136–147CrossRef Öztürk N, Ayvaz S (2018) Sentiment analysis on Twitter: a text mining approach to the Syrian refugee crisis. Telemat Inform 35(1):136–147CrossRef
11.
go back to reference Singh T, Kumari M (2016) Role of text pre-processing in twitter sentiment analysis. Proc Comput Sci 89:549–554CrossRef Singh T, Kumari M (2016) Role of text pre-processing in twitter sentiment analysis. Proc Comput Sci 89:549–554CrossRef
12.
go back to reference Philander K, Zhong Y (2016) Twitter sentiment analysis: capturing sentiment from integrated resort tweets. Int J Hosp Manag 55:16–24CrossRef Philander K, Zhong Y (2016) Twitter sentiment analysis: capturing sentiment from integrated resort tweets. Int J Hosp Manag 55:16–24CrossRef
13.
go back to reference Schumaker RP, Jarmoszko AT, Labedz CS Jr (2016) Predicting wins and spread in the Premier League using a sentiment analysis of twitter. Decis Support Syst 88:76–84CrossRef Schumaker RP, Jarmoszko AT, Labedz CS Jr (2016) Predicting wins and spread in the Premier League using a sentiment analysis of twitter. Decis Support Syst 88:76–84CrossRef
14.
go back to reference Da Silva NF, Hruschka ER, Hruschka ER Jr (2014) Tweet sentiment analysis with classifier ensembles. Decis Support Syst 66:170–179CrossRef Da Silva NF, Hruschka ER, Hruschka ER Jr (2014) Tweet sentiment analysis with classifier ensembles. Decis Support Syst 66:170–179CrossRef
15.
go back to reference Wang Y, Sun L, Wang J, Zheng Y, Youn HY (2017) A novel feature-based text classification improving the accuracy of twitter sentiment analysis. Advances in computer science and ubiquitous computing. Springer, Singapore, pp 440–445 Wang Y, Sun L, Wang J, Zheng Y, Youn HY (2017) A novel feature-based text classification improving the accuracy of twitter sentiment analysis. Advances in computer science and ubiquitous computing. Springer, Singapore, pp 440–445
16.
go back to reference Le B, Nguyen H (2015) Twitter sentiment analysis using machine learning techniques. Advanced computational methods for knowledge engineering. Springer, Cham, pp 279–289 Le B, Nguyen H (2015) Twitter sentiment analysis using machine learning techniques. Advanced computational methods for knowledge engineering. Springer, Cham, pp 279–289
17.
go back to reference Jalaja G, Kavitha C (2019) Sentiment analysis for text extracted from Twitter. Integrated intelligent computing, communication and security. Springer, Singapore, pp 693–700 Jalaja G, Kavitha C (2019) Sentiment analysis for text extracted from Twitter. Integrated intelligent computing, communication and security. Springer, Singapore, pp 693–700
18.
go back to reference Yang M, Qu Q, Chen X, Guo C, Shen Y, Lei K (2018) Feature-enhanced attention network for target-dependent sentiment classification. Neurocomputing 307:91–97CrossRef Yang M, Qu Q, Chen X, Guo C, Shen Y, Lei K (2018) Feature-enhanced attention network for target-dependent sentiment classification. Neurocomputing 307:91–97CrossRef
19.
go back to reference Araque O, Corcuera-Platas I, Sanchez-Rada JF, Iglesias CA (2017) Enhancing deep learning sentiment analysis with ensemble techniques in social applications. Expert Syst Appl 77:236–246CrossRef Araque O, Corcuera-Platas I, Sanchez-Rada JF, Iglesias CA (2017) Enhancing deep learning sentiment analysis with ensemble techniques in social applications. Expert Syst Appl 77:236–246CrossRef
20.
go back to reference Giatsoglou M, Vozalis MG, Diamantaras K, Vakali A, Sarigiannidis G, Chatzisavvas KC (2017) Sentiment analysis leveraging emotions and word embeddings. Expert Syst Appl 69:214–224CrossRef Giatsoglou M, Vozalis MG, Diamantaras K, Vakali A, Sarigiannidis G, Chatzisavvas KC (2017) Sentiment analysis leveraging emotions and word embeddings. Expert Syst Appl 69:214–224CrossRef
21.
go back to reference Alsinet T, Argelich J, Béjar R, Fernández C, Mateu C, Planes J (2018) An argumentative approach for discovering relevant opinions in Twitter with probabilistic valued relationships. Pattern Recogn Lett 105:191–199CrossRef Alsinet T, Argelich J, Béjar R, Fernández C, Mateu C, Planes J (2018) An argumentative approach for discovering relevant opinions in Twitter with probabilistic valued relationships. Pattern Recogn Lett 105:191–199CrossRef
22.
go back to reference Balahur A, Perea-Ortega JM (2015) Sentiment analysis system adaptation for multilingual processing: the case of tweets. Inf Process Manag 51(4):547–556CrossRef Balahur A, Perea-Ortega JM (2015) Sentiment analysis system adaptation for multilingual processing: the case of tweets. Inf Process Manag 51(4):547–556CrossRef
23.
go back to reference Bouazizi M, Ohtsuki T (2017) A pattern-based approach for multi-class sentiment analysis in twitter. IEEE Access 5:20617–20639CrossRef Bouazizi M, Ohtsuki T (2017) A pattern-based approach for multi-class sentiment analysis in twitter. IEEE Access 5:20617–20639CrossRef
24.
go back to reference Yu D, Xu D, Wang D, Ni Z (2019) Hierarchical topic modeling of Twitter data for online analytical processing. IEEE Access 7:12373–12385CrossRef Yu D, Xu D, Wang D, Ni Z (2019) Hierarchical topic modeling of Twitter data for online analytical processing. IEEE Access 7:12373–12385CrossRef
25.
go back to reference Bharathi S, Geetha A, Sathiynarayanan R (2017) Sentiment analysis of Twitter and RSS news feeds and its impact on stock market prediction. Int J Intell Eng Syst 10(6):68–77 Bharathi S, Geetha A, Sathiynarayanan R (2017) Sentiment analysis of Twitter and RSS news feeds and its impact on stock market prediction. Int J Intell Eng Syst 10(6):68–77
26.
go back to reference Saif H, He Y, Fernandez M, Alani H (2016) Contextual semantics for sentiment analysis of Twitter. Inf Process Manage 52(1):5–19CrossRef Saif H, He Y, Fernandez M, Alani H (2016) Contextual semantics for sentiment analysis of Twitter. Inf Process Manage 52(1):5–19CrossRef
27.
go back to reference Ren Y, Wang R, Ji D (2016) A topic-enhanced word embedding for Twitter sentiment classification. Inf Sci 369:188–198CrossRef Ren Y, Wang R, Ji D (2016) A topic-enhanced word embedding for Twitter sentiment classification. Inf Sci 369:188–198CrossRef
28.
go back to reference Preethi PG, Uma V (2015) Temporal sentiment analysis and causal rules extraction from tweets for event prediction. Proc Comput Sci 48:84–89CrossRef Preethi PG, Uma V (2015) Temporal sentiment analysis and causal rules extraction from tweets for event prediction. Proc Comput Sci 48:84–89CrossRef
29.
go back to reference Kumar KA, Rajasimha N, Reddy M, Rajanarayana A, Nadgir K (2015) Analysis of users’ sentiments from kannada web documents. Proc Comput Sci 54:247–256CrossRef Kumar KA, Rajasimha N, Reddy M, Rajanarayana A, Nadgir K (2015) Analysis of users’ sentiments from kannada web documents. Proc Comput Sci 54:247–256CrossRef
30.
go back to reference Amolik A, Jivane N, Bhandari M, Venkatesan M (2016) Twitter sentiment analysis of movie reviews using machine learning techniques. Int J Eng Technol 7(6):1–7 Amolik A, Jivane N, Bhandari M, Venkatesan M (2016) Twitter sentiment analysis of movie reviews using machine learning techniques. Int J Eng Technol 7(6):1–7
31.
go back to reference Cambria E, Poria S, Gelbukh A, Thelwall M (2017) Sentiment analysis is a big suitcase. IEEE Intell Syst 32(6):74–80CrossRef Cambria E, Poria S, Gelbukh A, Thelwall M (2017) Sentiment analysis is a big suitcase. IEEE Intell Syst 32(6):74–80CrossRef
32.
go back to reference Ghorbel H, Jacot D (2011) Sentiment analysis of French movie reviews. Advances in distributed agent-based retrieval tools. Springer, Berlin, pp 97–108 Ghorbel H, Jacot D (2011) Sentiment analysis of French movie reviews. Advances in distributed agent-based retrieval tools. Springer, Berlin, pp 97–108
33.
go back to reference Boyd-Graber J, Resnik P (2010) Holistic sentiment analysis across languages: Multilingual supervised latent Dirichlet allocation. In: Proceedings of the 2010 Conference on Empirical Methods in Natural Language Processing, Association for Computational Linguistics, pp 45–55 Boyd-Graber J, Resnik P (2010) Holistic sentiment analysis across languages: Multilingual supervised latent Dirichlet allocation. In: Proceedings of the 2010 Conference on Empirical Methods in Natural Language Processing, Association for Computational Linguistics, pp 45–55
34.
go back to reference Colace F, De Santo M, Greco L, Moscato V, Picariello A (2016) Probabilistic approaches for sentiment analysis: latent dirichlet allocation for ontology building and sentiment extraction. Sentiment analysis and ontology engineering. Springer, Cham, pp 75–91 Colace F, De Santo M, Greco L, Moscato V, Picariello A (2016) Probabilistic approaches for sentiment analysis: latent dirichlet allocation for ontology building and sentiment extraction. Sentiment analysis and ontology engineering. Springer, Cham, pp 75–91
35.
go back to reference Patel OP, Bharill N, Tiwari A (2015) A quantum-inspired fuzzy based evolutionary algorithm for data clustering. In: IEEE International Conference on FUZZY SYSTEMS (FUZZ-IEEE), pp 1–8 Patel OP, Bharill N, Tiwari A (2015) A quantum-inspired fuzzy based evolutionary algorithm for data clustering. In: IEEE International Conference on FUZZY SYSTEMS (FUZZ-IEEE), pp 1–8
36.
go back to reference Chakhmakhchyan L, Cerf NJ, Garcia-Patron R (2017) Quantum-inspired algorithm for estimating the permanent of positive semi definite matrices. Phys Rev A 96(2):022329CrossRef Chakhmakhchyan L, Cerf NJ, Garcia-Patron R (2017) Quantum-inspired algorithm for estimating the permanent of positive semi definite matrices. Phys Rev A 96(2):022329CrossRef
37.
go back to reference Trupthi M, Pabboju S, Narsimha G (2018) Possibilistic fuzzy c-means topic modelling for twitter sentiment analysis. Int J Intell Eng Syst 11(3):100–108 Trupthi M, Pabboju S, Narsimha G (2018) Possibilistic fuzzy c-means topic modelling for twitter sentiment analysis. Int J Intell Eng Syst 11(3):100–108
38.
go back to reference Alayba AM, Palade V, England M, Iqbal R (2018) A combined CNN and LSTM model for arabic sentiment analysis. In: International Cross-Domain Conference for Machine Learning and Knowledge Extraction, Springer, Cham, pp 179–191 Alayba AM, Palade V, England M, Iqbal R (2018) A combined CNN and LSTM model for arabic sentiment analysis. In: International Cross-Domain Conference for Machine Learning and Knowledge Extraction, Springer, Cham, pp 179–191
39.
go back to reference Han H, Zhang Y, Zhang J, Yang J, Zou X (2018) Improving the performance of lexicon-based review sentiment analysis method by reducing additional introduced sentiment bias. PLOS One 13(8):e0202523CrossRef Han H, Zhang Y, Zhang J, Yang J, Zou X (2018) Improving the performance of lexicon-based review sentiment analysis method by reducing additional introduced sentiment bias. PLOS One 13(8):e0202523CrossRef
40.
go back to reference Liu B, Blasch E, Chen Y, Shen D, Chen G (2013) Scalable sentiment classification for big data analysis using naive bayes classifier. In 2013 IEEE International Conference on Big Data, pp 99–104 Liu B, Blasch E, Chen Y, Shen D, Chen G (2013) Scalable sentiment classification for big data analysis using naive bayes classifier. In 2013 IEEE International Conference on Big Data, pp 99–104
41.
go back to reference Rain C (2013) Sentiment analysis in amazon reviews using probabilistic machine learning, Swarthmore College Rain C (2013) Sentiment analysis in amazon reviews using probabilistic machine learning, Swarthmore College
42.
go back to reference Ghose A, Ipeirotis PG (2011) Estimating the helpfulness and economic impact of product reviews: mining text and reviewer characteristics. IEEE Trans Knowl Data Eng 23(10):1498–1512CrossRef Ghose A, Ipeirotis PG (2011) Estimating the helpfulness and economic impact of product reviews: mining text and reviewer characteristics. IEEE Trans Knowl Data Eng 23(10):1498–1512CrossRef
43.
Metadata
Title
Predicting the customer’s opinion on amazon products using selective memory architecture-based convolutional neural network
Authors
Trupthi Mandhula
Suresh Pabboju
Narsimha Gugulotu
Publication date
19-11-2019
Publisher
Springer US
Published in
The Journal of Supercomputing / Issue 8/2020
Print ISSN: 0920-8542
Electronic ISSN: 1573-0484
DOI
https://doi.org/10.1007/s11227-019-03081-4

Other articles of this Issue 8/2020

The Journal of Supercomputing 8/2020 Go to the issue

Premium Partner