2020
DOI: 10.1109/access.2020.2989408
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Utilizing an Autoencoder-Generated Item Representation in Hybrid Recommendation System

Abstract: While collaborative filtering (CF) is the most popular approach for recommendation systems, it only makes use of the ratings given to items by users and neglects side information about user attributes or item features. In this work, a natural language processing (NLP) technique is applied to generate a more consistent version of Tag Genome, a side information which is associated with each movie in the MovieLens 20M dataset. Subsequently, we propose a 3-layer autoencoder to create a more compact representation … Show more

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Cited by 18 publications
(21 citation statements)
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“…In [39], we introduced a natural language processing (NLP)-based cleaning process to eliminate the redundancy from the original 1128 genome tags to generate a more accurate description for each movie with 1044 new tags. While this process slightly improved the accuracy of the systems, the number of new tags is still quite large (7% smaller to original 1128 tags) and other groups of related tags which cannot be combined using NLP become hidden.…”
Section: Previous Workmentioning
confidence: 99%
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“…In [39], we introduced a natural language processing (NLP)-based cleaning process to eliminate the redundancy from the original 1128 genome tags to generate a more accurate description for each movie with 1044 new tags. While this process slightly improved the accuracy of the systems, the number of new tags is still quite large (7% smaller to original 1128 tags) and other groups of related tags which cannot be combined using NLP become hidden.…”
Section: Previous Workmentioning
confidence: 99%
“…Experimental results in our previous work [39] demonstrated the capability of an AE to produce a more compact and powerful representation for movies than the original genome scores. However, the fully-connected architecture of a traditional AE does not consider the order of its raw inputs, which takes a risk that the network just tries to learn the data without extracting any more useful information [19].…”
Section: Learning New Representation Of Structured Data With An Hcaementioning
confidence: 99%
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