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Recent Advances in Computer Science and Communications

Editor-in-Chief

ISSN (Print): 2666-2558
ISSN (Online): 2666-2566

Research Article

Deep Learning Based Sentiment Classification on User-Generated Big Data

Author(s): Akshi Kumar and Arunima Jaiswal*

Volume 13, Issue 5, 2020

Page: [1047 - 1056] Pages: 10

DOI: 10.2174/2213275912666190409152308

Price: $65

Abstract

Background: Sentiment analysis of big data such as Twitter primarily aids the organizations with the potential of surveying public opinions or emotions for the products and events associated with them.

Objective: In this paper, we propose the application of a deep learning architecture namely the Convolution Neural Network. The proposed model is implemented on benchmark Twitter corpus (SemEval 2016 and SemEval 2017) and empirically analyzed with other baseline supervised soft computing techniques. The pragmatics of the work includes modelling the behavior of trained Convolution Neural Network on wellknown Twitter datasets for sentiment classification. The performance efficacy of the proposed model has been compared and contrasted with the existing soft computing techniques like Naïve Bayesian, Support Vector Machines, k-Nearest Neighbor, Multilayer Perceptron and Decision Tree using precision, accuracy, recall, and F-measure as key performance indicators.

Methods: Majority of the studies emphasize on the utilization of feature mining using lexical or syntactic feature extraction that are often unequivocally articulated through words, emoticons and exclamation marks. Subsequently, CNN, a deep learning based soft computing technique is used to improve the sentiment classifier’s performance.

Results: The empirical analysis validates that the proposed implementation of the CNN model outperforms the baseline supervised learning algorithms with an accuracy of around 87% to 88%.

Conclusion: Statistical analysis validates that the proposed CNN model outperforms the existing techniques and thus can enhance the performance of sentiment classification viability and coherency.

Keywords: Big data, convolution neural network, deep learning, feed-forward, soft computing, sentiment, user-generated big data, twitter.

Graphical Abstract
[1]
A. Kumar, and A. Abraham, "Opinion mining to assist user acceptance testing for open-beta versions", J. Information Assurance Security, vol. 12, pp. 146-153, 2017.
[2]
A. Kumar, and T.M. Sebastian, "Machine learning assisted sentiment analysis", In: Proceedings of International Conference on Computer Science & Engineering (ICCSE’2012), 2012, pp. 123-130.
[3]
A. Kumar, P. Dogra, and V. Dabas, "Emotion analysis of Twitter using opinion mining", In: Eighth International Conference on Contemporary Computing (IC3), (IEEE 2015), 2015, pp. 285-290.
[4]
Kumar A., and Joshi A., "Ontology driven sentiment analysis on social web for government intelligence", In: Proceedings of the Special Collection on eGovernment Innovations in India. ACM, 2017, pp. 134-139.
[5]
M. Allahyari, S. Pouriyeh, M. Assefi, S. Safaei, E.D. Trippe, J.B. Gutierrez, and K. Kochut, "A brief survey of text mining: Classification, clustering and extraction techniques", , arXiv preprint arXiv:1707.02919, 2017.
[6]
A. Kumar, and A. Jaiswal, "Empirical Study of twitter and tumblr for sentiment analysis using soft computing techniques", In: Proceedings of the World Congress on Engineering and Computer Science, vol. 1. pp. 1-5. 2017
[7]
A. Kumar, and T.M. Sebastian, "Sentiment analysis: A perspective on its past, present and future", Int. J. Intelligent Systems & Appl., vol. 4, no. 10, pp. 1-14, 2012.
[8]
B. Pang, and L. Lee, "Opinion mining and sentiment analysis (Foundations and Trends (R)", in Information. Retrieval, , vol. 2, no. 1-2, 2008, pp. 1-135, .
[9]
A. Kumar, R. Khorwal, and S. Chaudhary, "A survey on sentiment analysis using swarm intelligence", Indian J. Sci. & Tech., vol. 9, no. 39, . 2016
[10]
A. Kumar, and R. Khorwal, "Firefly algorithm for feature selection in sentiment analysis", In: Computational Intelligence in Data Mining., Springer, 2017, pp. 693-703.
[11]
A. Kumar, and R. Rani, "Sentiment analysis using neural network", In: 2nd International Conference on Next Generation Computing Technologies (NGCT), IEEE, 2016., 17848391.
[12]
A. Kumar, and A. Jaiswal, "Image sentiment analysis using convolutional neural network", In: International Conference on Intelligent Systems Design and Applications, Springer: Cham, 2017, pp. 464-473.
[13]
S.N. Sivanandam, and S.N. Deepa, Principles of Soft Computing (With CD)., John Wiley & Sons, 2007.
[14]
Y. Kim, "Convolutional neural networks for sentence classification", arXiv preprint arXiv:1408.5882, 2014.
[15]
A. Severyn, and A. Moschitti, "Twitter sentiment analysis with deep convolutional neural networks", In: Proceedings of the 38th International ACM SIGIR Conference on Research and Development in Information Retrieval, ACM, 2015, pp. 959-962.
[16]
J. Pennington, R. Socher, and C. Manning, "Glove: Global vectors for word representation", In: Proceedings of the 2014 Conference on Empirical Methods in Natural Language Processing (EMNLP), 2014, pp. 1532-1543.
[17]
D. Stojanovski, G. Strezoski, G. Madjarov, and I. Dimitrovski, "Twitter sentiment analysis using deep convolutional neural network", In: International Conference on Hybrid Artificial Intelligence Systems, Springer : Cham, 2015, pp. 726-737.
[18]
K. Dave, S. Lawrence, and D.M. Pennock, "Mining the peanut gallery: Opinion extraction and semantic classification of product reviews", In: Proceedings of the 12th international conference on World Wide Web, ACM, 2003, pp. 519-528.
[19]
W. Ouyang, and X. Wang, "Joint deep learning for pedestrian detection", In: Proceedings of the IEEE International Conference on Computer Vision, Sydney, NSW, 2013, pp. 2056-2063.
[20]
B. Zhou, A. Lapedriza, J. Xiao, A. Torralba, and A. Oliva, "Learning deep features for scene recognition using places database", Advances in neural Information processing systems, 2014.
[21]
A.S. Razavian, H. Azizpour, J. Sullivan, and S. Carlsson, "CNN features off-the-shelf: an astounding baseline for recognition", In: Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition Workshops, 2014, pp. 512-519.
[22]
D. Stojanovski, G. Strezoski, G. Madjarov, and I. Dimitrovski, "Twitter sentiment analysis using deep convolutional neural network", In: International Conference on Hybrid Artificial Intelligence Systems, Springer, Cham, 2015, pp. 726-737.
[23]
X. Ouyang, P. Zhou, C.H. Li, and L. Liu, "Sentiment analysis using convolutional neural network", In: International Conference on Computer and Information Technology; Ubiquitous Computing and Communications; Dependable, Autonomic and Secure Computing; Pervasive Intelligence and Computing (CIT/IUCC/DASC/PICOM) , IEEE, 2015, pp. 2359-2364.
[24]
A. Chachra, P. Mehndiratta, and M. Gupta, "Sentiment analysis of text using deep convolution neural networks", In: Tenth International Conference on Contemporary Computing (IC3), IEEE, 2017, pp. 1-6.
[25]
A. Salinca, "Convolutional Neural Networks for Sentiment Classification on Business Reviews", ArXiv Preprint, ArXiv:1710.05978, 2017.
[26]
A. Kumar, and T. M. Sebastian, "Sentiment analysis on twitter", Int. J. Comp. Sci. Issues (IJCSI), vol. 9, no. issue 4, no. 3,, pp. 372-378. 2012
[27]
M.R. Huq, A. Ali, and A. Rahman, "Sentiment analysis on Twitter data using KNN and SVM", Int. J. Adv. Comp. Sci. Appl., vol. 8, no. 6, pp. 19-25, 2017.
[28]
G. Sidorov, S. Miranda-Jiménez, F. Viveros-Jiménez, A. Gelbukh, N. Castro-Sánchez, F. Velásquez, I. Díaz-Rangel, S. Suárez-Guerra, A. Trevino, and J. Gordon, "Empirical study of machine learning based approach for opinion mining in tweets", In: Mexican International Conference on Artificial Intelligence, Springer, Berlin, Heidelberg, 2012, pp. 1-14.
[29]
M.S. Neethu, and R. Rajasree, "Sentiment analysis in twitter using machine learning techniques", In: Fourth International Conference on Computing, Communications and Networking Technologies (ICCCNT), IEEE, 2013, pp. 1-5.
[30]
Z. Wang, V.J. Tong, and H.C. Chin, "Enhancing machine-learning methods for sentiment classification of web data", Asia Information Retrieval Symposium, Springer, Cham, 2014
[31]
B. Duncan, and Y. Zhang, "Neural networks for sentiment analysis on Twitter", In: 14th International Conference on Cognitive Informatics & Cognitive Computing (ICCI* CC), IEEE, 2015, pp. 275-278.
[32]
A.K. Dash, J.K. Rout, and S.K. Jena, "Harnessing twitter for automatic sentiment identification using machine learning techniques", In: Proceedings of 3rd International Conference on Advanced Computing, Networking and Informatics. Springer, New Delhi, 2016, pp. 507-514.
[33]
C. dos Santos, and M. Gatti, "Deep convolutional neural networks for sentiment analysis of short texts", In: Proceedings of COLING 2014, the 25th International Conference on Computational Linguistics: Technical Papers, 2014, pp. 69-78.
[34]
A. Severyn A and A. Moschitti, "Unitn: Training deep convolutional neural network for twitter sentiment classification", In: Proceedings of the 9th International Workshop on Semantic Evaluation (SemEval 2015), 2015, pp. 464-469.
[35]
S. Liao, J. Wang, R. Yu, K. Sato, and Z. Cheng, "CNN for situations understanding based on sentiment analysis of twitter data", In: Procedia Computer. Science., vol. 111. pp. 376-381. 2017
[36]
Y. Lu, K. Sakamoto, H. Shibuki, and T. Mori, "Are deep learning methods better for twitter sentiment analysis?", In: Proceedings of The 23rd Annual Meeting of Natural Language Processing (Japan), 2017, pp. 787-790.
[37]
Z. Jianqiang, G. Xiaolin, and Z. Xuejun, "Deep convolution neural networks for twitter sentiment analysis", IEEE Access, vol. 6, pp. 23253-23260, 2018.
[38]
R. Rajput, and A. Solanki, "Review of sentimental analysis methods using lexicon based approach", Int. J. Comp. Sci. and Mob. Computing, vol. 5, no. 2, pp. 159-166, 2016.
[39]
S. Rosenthal, N. Farra, and P. Nakov, "SemEval-2017 Task 4: Sentiment analysis in Twitter", In: Proceedings of the 11th International Workshop on Semantic Evaluation (SemEval-2017), 2017, pp. 502-518.
[40]
http://alt.qcri.org/semeval2017/task4/ , [Online]. Accessed on: Jan. 2, 2018.
[41]
A. Kumar, and A. Jaiswal, "Systematic literature review of sentiment analysis on twitter using soft computing techniques", In: Concurrency and Computation Practice and Experience., Wiley Online Library, 2019.
[http://dx.doi.org/10.1002/cpe.5107]
[42]
A. Kumar, A. Jaiswal, S. Garg, S. Verma, and S. Kumar, "Sentiment analysis using cuckoo search for optimized feature selection on kaggle tweets", Intorm. J. Inf. Retrieval. Res., vol. 9, pp. 1-15, 2019.
[43]
J.S. Teja, G.K. Sai, M.D. Kumar, and R. Manikandan, "Sentiment analysis of movie reviews using machine learning algorithms - A Survey", Int. J. Pure Appl. Math., vol. 118, no. 21, pp. 3277-3284, 2018.
[44]
Z. Jianqiang, and G. Xiaolin, "Comparison research on text pre-processing methods on twitter sentiment analysis", IEEE Access, vol. 5, pp. 2870-2879, 2017.
[45]
"Internet & Text Slang Dictionary. [Online]. Available: ", https://www.noslang.com/dictionary , Accessed on: Jan. 2, 2018.
[46]
"List of emoticons, Wikipedia, [Online]. Available:", http://en.wikipedia.org/wiki/Listof emoticons , Accessed on: Jan. 2, 2018.
[47]
"Brendano, GitHub.com, [Online]. Available: ", https://github.com/ brendano/ark-tweet-nlp/tree/master/src/cmu/arktweetnlp , Accessed on: Jan 2, 2018.

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