A review-aware multi-modal neural collaborative filtering recommender system

dc.contributor.advisorDurbach, Ian
dc.contributor.advisorClark Allan E
dc.contributor.authorSingh, Pavan
dc.date.accessioned2025-04-03T10:47:30Z
dc.date.available2025-04-03T10:47:30Z
dc.date.issued2024
dc.date.updated2025-04-03T10:39:03Z
dc.description.abstractOnline shopping has become a ubiquitous aspect of modern life and recommender systems have become a crucial tool for e-commerce giants to efficiently sift through vast amounts of data to locate the infor mation that users are seeking. Within e-commerce, recommender systems aim to provide users with personalised product recommendations based on their preferences and behaviours. They analyse user data, for example their browsing history, purchase history, and ratings to understand their preferences and make recommendations that align with these preferences. They have become fundamental for information retrieval and provide a particularly lucrative landscape for e-commerce platforms, providing suggestions that effectively prune large information spaces so that users are directed toward those items that best meet their needs and preferences. This thesis looks at developing a neural collaborative filtering (NCF) recommender system model which incorporates data from multi-modalities, textual data and explicit ratings data (and review sentiment). The primary objectives of this study are twofold. Firstly, the aim is to create and assess the efficacy of the, relatively new, deep learning-based collaborative filtering approach - NCF - in comparison to other more traditional collaborative filtering models, commonly used. Secondly, the study seeks to investigate the potential impact of incorporating product review text and review text sentiment in improving the accuracy of recommendations. Our model shall be trained and evaluated on the Amazon Product Reviews dataset, which contains millions of user reviews and feedback on thousands of different products across different categories. The metrics used to evaluate the model include predictive accuracy metrics such as mean absolute error, amongst others, as well as top-n evaluation metrics such as recall@n and precision@n. Our methodology is based on a literature analysis and aims to clearly extrapolate on the recent works which have established a framework for NCF. The results of our study show that the NCF model outperforms all the benchmark models in terms of predictive accuracy and top-n evaluation. The results also show that the inclusion of review text in the NCF model improves the predictive accuracy of the model significantly. The results of this study are significant as they demonstrate the potential benefits of incorporating review text into deep learning-based approaches for collaborative filtering for improved rating prediction.
dc.identifier.apacitationSingh, P. (2024). <i>A review-aware multi-modal neural collaborative filtering recommender system</i>. (). University of Cape Town ,Faculty of Science ,Department of Statistical Sciences. Retrieved from http://hdl.handle.net/11427/41341en_ZA
dc.identifier.chicagocitationSingh, Pavan. <i>"A review-aware multi-modal neural collaborative filtering recommender system."</i> ., University of Cape Town ,Faculty of Science ,Department of Statistical Sciences, 2024. http://hdl.handle.net/11427/41341en_ZA
dc.identifier.citationSingh, P. 2024. A review-aware multi-modal neural collaborative filtering recommender system. . University of Cape Town ,Faculty of Science ,Department of Statistical Sciences. http://hdl.handle.net/11427/41341en_ZA
dc.identifier.ris TY - Thesis / Dissertation AU - Singh, Pavan AB - Online shopping has become a ubiquitous aspect of modern life and recommender systems have become a crucial tool for e-commerce giants to efficiently sift through vast amounts of data to locate the infor mation that users are seeking. Within e-commerce, recommender systems aim to provide users with personalised product recommendations based on their preferences and behaviours. They analyse user data, for example their browsing history, purchase history, and ratings to understand their preferences and make recommendations that align with these preferences. They have become fundamental for information retrieval and provide a particularly lucrative landscape for e-commerce platforms, providing suggestions that effectively prune large information spaces so that users are directed toward those items that best meet their needs and preferences. This thesis looks at developing a neural collaborative filtering (NCF) recommender system model which incorporates data from multi-modalities, textual data and explicit ratings data (and review sentiment). The primary objectives of this study are twofold. Firstly, the aim is to create and assess the efficacy of the, relatively new, deep learning-based collaborative filtering approach - NCF - in comparison to other more traditional collaborative filtering models, commonly used. Secondly, the study seeks to investigate the potential impact of incorporating product review text and review text sentiment in improving the accuracy of recommendations. Our model shall be trained and evaluated on the Amazon Product Reviews dataset, which contains millions of user reviews and feedback on thousands of different products across different categories. The metrics used to evaluate the model include predictive accuracy metrics such as mean absolute error, amongst others, as well as top-n evaluation metrics such as recall@n and precision@n. Our methodology is based on a literature analysis and aims to clearly extrapolate on the recent works which have established a framework for NCF. The results of our study show that the NCF model outperforms all the benchmark models in terms of predictive accuracy and top-n evaluation. The results also show that the inclusion of review text in the NCF model improves the predictive accuracy of the model significantly. The results of this study are significant as they demonstrate the potential benefits of incorporating review text into deep learning-based approaches for collaborative filtering for improved rating prediction. DA - 2024 DB - OpenUCT DP - University of Cape Town KW - statistical science LK - https://open.uct.ac.za PB - University of Cape Town PY - 2024 T1 - A review-aware multi-modal neural collaborative filtering recommender system TI - A review-aware multi-modal neural collaborative filtering recommender system UR - http://hdl.handle.net/11427/41341 ER - en_ZA
dc.identifier.urihttp://hdl.handle.net/11427/41341
dc.identifier.vancouvercitationSingh P. A review-aware multi-modal neural collaborative filtering recommender system. []. University of Cape Town ,Faculty of Science ,Department of Statistical Sciences, 2024 [cited yyyy month dd]. Available from: http://hdl.handle.net/11427/41341en_ZA
dc.language.isoen
dc.language.rfc3066eng
dc.publisher.departmentDepartment of Statistical Sciences
dc.publisher.facultyFaculty of Science
dc.publisher.institutionUniversity of Cape Town
dc.subjectstatistical science
dc.titleA review-aware multi-modal neural collaborative filtering recommender system
dc.typeThesis / Dissertation
dc.type.qualificationlevelMasters
dc.type.qualificationlevelMSc
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