Weighted Ensemble LSTM Model with Word Embedding Attention for E-Commerce Product Recommendation

Nowadays, the proliferation of social media and e-commerce platforms is largely due to the development of internet technology. Additionally, consumers are used to the idea of using these platforms to share their thoughts and feelings with others through text or multimedia data. However, it is diffic...

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Main Authors: Prashant Sharma, Vijaya Ravindra Sagvekar
Format: Article
Language:English
Published: Croatian Communications and Information Society (CCIS) 2023-12-01
Series:Journal of Communications Software and Systems
Subjects:
Online Access:https://jcoms.fesb.unist.hr/10.24138/jcomss-2023-0126/
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author Prashant Sharma
Vijaya Ravindra Sagvekar
author_facet Prashant Sharma
Vijaya Ravindra Sagvekar
author_sort Prashant Sharma
collection DOAJ
description Nowadays, the proliferation of social media and e-commerce platforms is largely due to the development of internet technology. Additionally, consumers are used to the idea of using these platforms to share their thoughts and feelings with others through text or multimedia data. However, it is difficult to identify the best categorization methods for this type of data. Furthermore, users are seen to have difficulty understanding aspect-based feelings conveyed by other users, and the currently existing models’ accuracies are not up to par. Deep learning models used for sentiment analysis (SA) provide improved performance by finding out the actual emotions in the presented data. The aim of this research is to develop a weighted ensemble with Long Short-Term Memory (LSTM), and a specialised deep learning model using unique word embedding approaches to enhance its performance in sentiment analysis. The words with a strong connection to a particular class are given more weight by the Word Embedding Attention (WEA) technique. The weighted ensemble with LSTM yields superior outcomes because of its excellent generalization capabilities. By integrating the advantages of several models and mitigating the effects of each model’s shortcomings, ensemble voting raises the prediction accuracy. By lessening the influence of outliers or errors in individual model categorization, ensemble voting increases the robustness of categorization. This LSTM weighted ensemble achieves 99.82 % accuracy, 99.4% precision, 99.02% f-score, and 99.7% recall in sentiment analysis which is much higher when compared to the outcomes of conventional methods.
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spelling doaj.art-11b667396e994a5b8182141449e5e8dd2024-02-13T11:30:43ZengCroatian Communications and Information Society (CCIS)Journal of Communications Software and Systems1845-64211846-60792023-12-0119429930710.24138/jcomss-2023-0126Weighted Ensemble LSTM Model with Word Embedding Attention for E-Commerce Product RecommendationPrashant SharmaVijaya Ravindra SagvekarNowadays, the proliferation of social media and e-commerce platforms is largely due to the development of internet technology. Additionally, consumers are used to the idea of using these platforms to share their thoughts and feelings with others through text or multimedia data. However, it is difficult to identify the best categorization methods for this type of data. Furthermore, users are seen to have difficulty understanding aspect-based feelings conveyed by other users, and the currently existing models’ accuracies are not up to par. Deep learning models used for sentiment analysis (SA) provide improved performance by finding out the actual emotions in the presented data. The aim of this research is to develop a weighted ensemble with Long Short-Term Memory (LSTM), and a specialised deep learning model using unique word embedding approaches to enhance its performance in sentiment analysis. The words with a strong connection to a particular class are given more weight by the Word Embedding Attention (WEA) technique. The weighted ensemble with LSTM yields superior outcomes because of its excellent generalization capabilities. By integrating the advantages of several models and mitigating the effects of each model’s shortcomings, ensemble voting raises the prediction accuracy. By lessening the influence of outliers or errors in individual model categorization, ensemble voting increases the robustness of categorization. This LSTM weighted ensemble achieves 99.82 % accuracy, 99.4% precision, 99.02% f-score, and 99.7% recall in sentiment analysis which is much higher when compared to the outcomes of conventional methods.https://jcoms.fesb.unist.hr/10.24138/jcomss-2023-0126/deep learninglong short-term memorysentiment analysisweighted ensembleword embedding attention
spellingShingle Prashant Sharma
Vijaya Ravindra Sagvekar
Weighted Ensemble LSTM Model with Word Embedding Attention for E-Commerce Product Recommendation
Journal of Communications Software and Systems
deep learning
long short-term memory
sentiment analysis
weighted ensemble
word embedding attention
title Weighted Ensemble LSTM Model with Word Embedding Attention for E-Commerce Product Recommendation
title_full Weighted Ensemble LSTM Model with Word Embedding Attention for E-Commerce Product Recommendation
title_fullStr Weighted Ensemble LSTM Model with Word Embedding Attention for E-Commerce Product Recommendation
title_full_unstemmed Weighted Ensemble LSTM Model with Word Embedding Attention for E-Commerce Product Recommendation
title_short Weighted Ensemble LSTM Model with Word Embedding Attention for E-Commerce Product Recommendation
title_sort weighted ensemble lstm model with word embedding attention for e commerce product recommendation
topic deep learning
long short-term memory
sentiment analysis
weighted ensemble
word embedding attention
url https://jcoms.fesb.unist.hr/10.24138/jcomss-2023-0126/
work_keys_str_mv AT prashantsharma weightedensemblelstmmodelwithwordembeddingattentionforecommerceproductrecommendation
AT vijayaravindrasagvekar weightedensemblelstmmodelwithwordembeddingattentionforecommerceproductrecommendation