Integrating contextual sentiment analysis in collaborative recommender systems
Recently. recommender systems have become a very crucial application in the online market and e-commerce as users are often astounded by choices and preferences and they need help finding what the best they are looking for. Recommender systems have proven to overcome information overload issues in t...
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description | Recently. recommender systems have become a very crucial application in the online market and e-commerce as users are often astounded by choices and preferences and they need help finding what the best they are looking for. Recommender systems have proven to overcome information overload issues in the retrieval of information, but still suffer from persistent problems related to cold-start and data sparsity. On the flip side, sentiment analysis technique has been known in translating text and expressing user preferences. It is often used to help online businesses to observe customers' feedbacks on their products as well as try to understand customer needs and preferences. However, the current solution for embedding traditional sentiment analysis in recommender solutions seems to have limitations when involving multiple domains. Therefore, an issue called domain sensitivity should be addressed. In this paper, a sentiment-based model with contextual information for recommender system was proposed. A novel solution for domain sensitivity was proposed by applying a contextual information sentiment-based model for recommender systems. In evaluating the contributions of contextual information in sentiment-based recommendations, experiments were divided into standard rating model, standard sentiment model and contextual information model. Results showed that the proposed contextual information sentiment-based model illustrates better performance as compared to the traditional collaborative filtering approach. |
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Recommender systems have proven to overcome information overload issues in the retrieval of information, but still suffer from persistent problems related to cold-start and data sparsity. On the flip side, sentiment analysis technique has been known in translating text and expressing user preferences. It is often used to help online businesses to observe customers' feedbacks on their products as well as try to understand customer needs and preferences. However, the current solution for embedding traditional sentiment analysis in recommender solutions seems to have limitations when involving multiple domains. Therefore, an issue called domain sensitivity should be addressed. In this paper, a sentiment-based model with contextual information for recommender system was proposed. A novel solution for domain sensitivity was proposed by applying a contextual information sentiment-based model for recommender systems. 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Results showed that the proposed contextual information sentiment-based model illustrates better performance as compared to the traditional collaborative filtering approach.</description><identifier>ISSN: 1932-6203</identifier><identifier>EISSN: 1932-6203</identifier><identifier>DOI: 10.1371/journal.pone.0248695</identifier><identifier>PMID: 33750957</identifier><language>eng</language><publisher>United States: Public Library of Science</publisher><subject>Algorithms ; Artificial intelligence ; Cold ; Collaboration ; Computational linguistics ; Computer and Information Sciences ; Customer relationship management ; Data mining ; Data reduction ; Economic aspects ; Electronic commerce ; Information management ; Information science ; Language processing ; Natural language interfaces ; Physical Sciences ; Ratings & rankings ; Recommender systems ; Research and Analysis Methods ; Sentences ; Sentiment analysis ; Social aspects ; Social Sciences ; Sparsity ; Technology application</subject><ispartof>PloS one, 2021-03, Vol.16 (3), p.e0248695-e0248695</ispartof><rights>COPYRIGHT 2021 Public Library of Science</rights><rights>2021 Osman et al. 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subjects | Algorithms Artificial intelligence Cold Collaboration Computational linguistics Computer and Information Sciences Customer relationship management Data mining Data reduction Economic aspects Electronic commerce Information management Information science Language processing Natural language interfaces Physical Sciences Ratings & rankings Recommender systems Research and Analysis Methods Sentences Sentiment analysis Social aspects Social Sciences Sparsity Technology application |
title | Integrating contextual sentiment analysis in collaborative recommender systems |
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