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TransRev: Modeling Reviews as Translations from Users to Items

The text of a review expresses the sentiment a customer has towards a particular product. This is exploited in sentiment analysis where machine learning models are used to predict the review score from the text of the review. Furthermore, the products costumers have purchased in the past are indicat...

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Autores principales: García-Durán, Alberto, González, Roberto, Oñoro-Rubio, Daniel, Niepert, Mathias, Li, Hui
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7148221/
http://dx.doi.org/10.1007/978-3-030-45439-5_16
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author García-Durán, Alberto
González, Roberto
Oñoro-Rubio, Daniel
Niepert, Mathias
Li, Hui
author_facet García-Durán, Alberto
González, Roberto
Oñoro-Rubio, Daniel
Niepert, Mathias
Li, Hui
author_sort García-Durán, Alberto
collection PubMed
description The text of a review expresses the sentiment a customer has towards a particular product. This is exploited in sentiment analysis where machine learning models are used to predict the review score from the text of the review. Furthermore, the products costumers have purchased in the past are indicative of the products they will purchase in the future. This is what recommender systems exploit by learning models from purchase information to predict the items a customer might be interested in. The underlying structure of this problem setting is a bipartite graph, wherein customer nodes are connected to product nodes via ‘review’ links. This is reminiscent of knowledge bases, with ‘review’ links replacing relation types. We propose TransRev, an approach to the product recommendation problem that integrates ideas from recommender systems, sentiment analysis, and multi-relational learning into a joint learning objective. TransRev learns vector representations for users, items, and reviews. The embedding of a review is learned such that (a) it performs well as input feature of a regression model for sentiment prediction; and (b) it always translates the reviewer embedding to the embedding of the reviewed item. This is reminiscent of TransE [5], a popular embedding method for link prediction in knowledge bases. This allows TransRev to approximate a review embedding at test time as the difference of the embedding of each item and the user embedding. The approximated review embedding is then used with the regression model to predict the review score for each item. TransRev outperforms state of the art recommender systems on a large number of benchmark data sets. Moreover, it is able to retrieve, for each user and item, the review text from the training set whose embedding is most similar to the approximated review embedding.
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spelling pubmed-71482212020-04-13 TransRev: Modeling Reviews as Translations from Users to Items García-Durán, Alberto González, Roberto Oñoro-Rubio, Daniel Niepert, Mathias Li, Hui Advances in Information Retrieval Article The text of a review expresses the sentiment a customer has towards a particular product. This is exploited in sentiment analysis where machine learning models are used to predict the review score from the text of the review. Furthermore, the products costumers have purchased in the past are indicative of the products they will purchase in the future. This is what recommender systems exploit by learning models from purchase information to predict the items a customer might be interested in. The underlying structure of this problem setting is a bipartite graph, wherein customer nodes are connected to product nodes via ‘review’ links. This is reminiscent of knowledge bases, with ‘review’ links replacing relation types. We propose TransRev, an approach to the product recommendation problem that integrates ideas from recommender systems, sentiment analysis, and multi-relational learning into a joint learning objective. TransRev learns vector representations for users, items, and reviews. The embedding of a review is learned such that (a) it performs well as input feature of a regression model for sentiment prediction; and (b) it always translates the reviewer embedding to the embedding of the reviewed item. This is reminiscent of TransE [5], a popular embedding method for link prediction in knowledge bases. This allows TransRev to approximate a review embedding at test time as the difference of the embedding of each item and the user embedding. The approximated review embedding is then used with the regression model to predict the review score for each item. TransRev outperforms state of the art recommender systems on a large number of benchmark data sets. Moreover, it is able to retrieve, for each user and item, the review text from the training set whose embedding is most similar to the approximated review embedding. 2020-03-17 /pmc/articles/PMC7148221/ http://dx.doi.org/10.1007/978-3-030-45439-5_16 Text en © Springer Nature Switzerland AG 2020 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Article
García-Durán, Alberto
González, Roberto
Oñoro-Rubio, Daniel
Niepert, Mathias
Li, Hui
TransRev: Modeling Reviews as Translations from Users to Items
title TransRev: Modeling Reviews as Translations from Users to Items
title_full TransRev: Modeling Reviews as Translations from Users to Items
title_fullStr TransRev: Modeling Reviews as Translations from Users to Items
title_full_unstemmed TransRev: Modeling Reviews as Translations from Users to Items
title_short TransRev: Modeling Reviews as Translations from Users to Items
title_sort transrev: modeling reviews as translations from users to items
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7148221/
http://dx.doi.org/10.1007/978-3-030-45439-5_16
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