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Product Sentiment Analysis for Amazon Reviews


Affiliations
1 Department of Computer Science, Princess Nourah bint Abdulrahman University, Riyadh, Saudi Arabia
 

Recently, Ecommerce has Witnessed Rapid Development. As A Result, Online Purchasing has grown, and that has led to Growth in Online Customer Reviews of Products. The Implied Opinions in Customer Reviews Have a Massive Influence on Customer's Decision Purchasing, Since the Customer's Opinion About the Product is Influenced by Other Consumers' Recommendations or Complaints. This Research Provides an Analysis of the Amazon Reviews Dataset and Studies Sentiment Classification with Different Machine Learning Approaches. First, the Reviews were Transformed into Vector Representation using different Techniques, I.E., Bag-Of-Words, Tf-Idf, and Glove. Then, we Trained Various Machine Learning Algorithms, I.E., Logistic Regression, Random Forest, Naïve Bayes, Bidirectional Long-Short Term Memory, and Bert. After That, We Evaluated the Models using Accuracy, F1-Score, Precision, Recall, and Cross-Entropy Loss Function. Then, We Analyized The Best Performance Model in Order to Investigate Its Sentiment Classification. The Experiment was Conducted on Multiclass Classifications, Then we Selected the Best Performing Model And Re-Trained It on the Binary Classification.

Keywords

Amazon, Data Analytics, Analysis, Product Sentiment, Ecommerce.
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  • S. A. a. A. N. S. Aljuhani, “A Comparison of Sentiment Analysis Methods on Amazon Reviews of Mobile Phones,” International Journal of Advanced Computer Science and Applications, vol. 10, 2019.
  • L. a. L. B. Zhang, “Aspect and entity extraction for opinion mining,” in Zhang, Lei and Liu, Bing, Berlin, Heidelberg, Springer, 2014, pp. 1--40.
  • Y.-C. a. K. C.-H. a. C. C.-H. Chang, “Social media analytics: Extracting and visualizing Hilton hotel ratings and reviews from TripAdvisor,” International Journal of Information Management, vol. 48, pp. 263--279, 2019.
  • K. S. a. D. J. a. M. J. Kumar, “Opinion mining and sentiment analysis on online customer review,” in IEEE International Conference on Computational Intelligence and Computing Research (ICCIC), Chennai, 2016.
  • A. S. a. A. A. a. D. P. Rathor, “Comparative study of machine learning approaches for Amazon reviews,” Procedia computer science, vol. 132, pp. 1552--1561, 2018.
  • B. a. S. S. Bansal, “Sentiment classification of online consumer reviews using word vector representations,” Procedia computer science, vol. 132, pp. 1147--1153, 2018.
  • A. a. S. V. a. M. B. ernian, “Sentiment analysis from product reviews using SentiWordNet as lexical resource,” in 2015 7th International Conference on Electronics, Computers and Artificial Intelligence (ECAI), Bucharest, 2015.
  • J. F. V. W. P. G. N. Rodrigo Moraes, “Document-level sentiment classification: An empirical comparison between SVM and ANN,” Expert Systems with Applications, vol. 40, pp. 621--633, 2013.
  • D. a. X. H. a. S. Z. a. X. Y. Zhang, “Chinese comments sentiment classification based on word2vec and SVMperf,” Expert Systems with Applications, vol. 42, pp. 857--1863, 2015.
  • Y. a. L. M. a. E. K. K. E. Al Amrani, “Random Forest and Support Vector Machine based Hybrid Approach to Sentiment Analysis,” Procedia Computer Science, pp. 511-520, 2018.
  • Y. a. K. V. Saito, “Classifying User Reviews at Sentence and Review Levels Utilizing Naïve Bayes,” in 21st International Conference on Advanced Communication Technology (ICACT), PyeongChang Kwangwoon_Do, Korea (South), 2019.
  • ,. X. C. T. S. M. W. N. J. Sobia Wassan, “Amazon Product Sentiment Analysis using Machine,” Revista Argentina de Clínica Psicológica, pp. 695-703, 2021.
  • Bahrawi, “Sentiment Analysis Using Random Forest Algorithm-Online Social Media Based.,” JOURNAL OF INFORMATION TECHNOLOGY AND ITS UTILIZATION, vol. 2, pp. 29-33, 2019.
  • M. a. S. R. Fikri, “A Comparative Study of Sentiment Analysis using SVM and SentiWordNet,” Indonesian Journal of Electrical Engineering and Computer Science, vol. 13, pp. 902-909, 2019.
  • N. Tamara and Milievi, “Comparing sentiment analysis and document representation methods of Amazon reviews,” 2018 IEEE 16th International Symposium on Intelligent Systems and Informatics (SISY), pp. 000283--000286, 2018.
  • K. a. M. W. a. C. W. Ogada, “N-gram Based Text Categorization Method for Improved Data Mining,” Journal of Information Engineering and Applications, vol. 5, pp. 35--43, 2015.
  • R. a. P. B. a. S. S. Al-Rfou, “Polyglot: Distributed word representations for multilingual nlp,” arXiv preprint arXiv:1307.1662, 2013.
  • Y. a. A. G. a. J. P. a. K. T. Sharma, “Vector representation of words for sentiment analysis using GloVe,” in 2017 international conference on intelligent communication and computational techniques (icct), Jaipur, 2017.
  • R. S. C. D. M. Jeffrey Pennington, “GloVe: Global Vectors for Word Representation,” in Proceedings of the 2014 Conference on Empirical Methods in Natural Language Processing (EMNLP), Doha, Qatar, 2014.
  • A. H. C. H. H. B. G. Marwa Naili, “Comparative study of word embedding methods in topic segmentation,” Procedia Computer Science, vol. 112, pp. 340-349, 2017.
  • H. a. K. A. Sinha, “A Detailed Survey and Comparative Study of sentiment analysis algorithms,” in 2016 2nd International Conference on Communication Control and Intelligent Systems (CCIS), Mathura, India, 2016.
  • M. a. O. T. Bouazizi, “A pattern-based approach for multi-class sentiment analysis in Twitter,” in 2016 IEEE International Conference on Communications (ICC), Kuala Lumpur, Malaysia, 2016.
  • V. M. N. Harpreet Kaur, “A survey of sentiment analysis techniques,” in 2017 International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud) (I-SMAC), 2017.
  • Z. a. F. Y. a. J. B. a. L. T. a. L. W. Li, “{A survey on sentiment analysis and opinion mining for social multimedia,” Multimedia Tools and Applications, vol. 78, pp. 6939--6967, 2019.
  • A. K. A. a. A. A. B. A. Hassan, “Reviews Sentiment analysis for collaborative recommender system,” Kurdistan journal of applied research, vol. 2, pp. 87--91, 2017.
  • V. M. a. V. J. a. B. P. Pradhan, “A survey on Sentiment Analysis Algorithms for opinion mining,” International Journal of Computer Applications, vol. 133, pp. 7--11, 2016.
  • H. a. B. S. a. S. G. Parmar, “Sentiment mining of movie reviews using Random Forest with Tuned Hyperparameters,” in International Conference on Information Science., 2014, Kerala.
  • J. a. C. M.-W. a. L. K. a. T. K. Devlin, “Bert: Pre-training of deep bidirectional transformers for language understanding,” arXiv preprint arXiv:1810.04805, 2018.
  • Y. a. L. M. a. L. L. a. F. Z. a. W. F.-X. a. W. J. Yu, “Automatic ICD code assignment of Chinese clinical notes based on multilayer attention BiRNN,” Journal of biomedical informatics, vol. 91, pp. 103-114, 2019.
  • Y. a. S. X. a. H. C. a. Z. J. Yu, “A review of recurrent neural networks: LSTM cells and network architectures,” Neural computation, vol. 31, pp. 1235--1270, 2019.
  • C. a. S. C. a. L. Z. a. L. F. Zhou, “A C-LSTM Neural Network for Text Classification,” arXiv preprint arXiv:1511.08630, 2015.
  • A. a. A. A. a. R. S. K. Tripathy, “Classification of sentiment reviews using n-gram machine learning approach,” Expert Systems with Applications, vol. 57, pp. 117--126, 2016.
  • S. M. Mudambi, D. Schuff and Z. Zhang, “Why Aren't the Stars Aligned? An Analysis of Online Review Content and Star Ratings,” in 2014 47th Hawaii International Conference on System Sciences, Waikoloa, 2014.

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  • Product Sentiment Analysis for Amazon Reviews

Abstract Views: 394  |  PDF Views: 167

Authors

Arwa S. M. AlQahtani
Department of Computer Science, Princess Nourah bint Abdulrahman University, Riyadh, Saudi Arabia

Abstract


Recently, Ecommerce has Witnessed Rapid Development. As A Result, Online Purchasing has grown, and that has led to Growth in Online Customer Reviews of Products. The Implied Opinions in Customer Reviews Have a Massive Influence on Customer's Decision Purchasing, Since the Customer's Opinion About the Product is Influenced by Other Consumers' Recommendations or Complaints. This Research Provides an Analysis of the Amazon Reviews Dataset and Studies Sentiment Classification with Different Machine Learning Approaches. First, the Reviews were Transformed into Vector Representation using different Techniques, I.E., Bag-Of-Words, Tf-Idf, and Glove. Then, we Trained Various Machine Learning Algorithms, I.E., Logistic Regression, Random Forest, Naïve Bayes, Bidirectional Long-Short Term Memory, and Bert. After That, We Evaluated the Models using Accuracy, F1-Score, Precision, Recall, and Cross-Entropy Loss Function. Then, We Analyized The Best Performance Model in Order to Investigate Its Sentiment Classification. The Experiment was Conducted on Multiclass Classifications, Then we Selected the Best Performing Model And Re-Trained It on the Binary Classification.

Keywords


Amazon, Data Analytics, Analysis, Product Sentiment, Ecommerce.

References