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Comparison of LSTM, GRU and Hybrid Architectures for usage of Deep Learning on Recommendation Systems

Published:04 February 2021Publication History

ABSTRACT

This article shows the results of a performance analysis from LSTM, GRU and Hybrid Neural Network architectures in Recommendation Systems. To this end, prototypes of the networks were built to be trained using data from the user's browsing history of a streaming website in China. The results were evaluated using the metrics of Accuracy, Precision, Recall and F1-Score, thus identifying the advantages and disadvantages of each architecture in different approaches.

References

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  • Published in

    cover image ACM Other conferences
    ICAAI '20: Proceedings of the 4th International Conference on Advances in Artificial Intelligence
    October 2020
    102 pages
    ISBN:9781450387842
    DOI:10.1145/3441417

    Copyright © 2020 ACM

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    Publication History

    • Published: 4 February 2021

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