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Published in: Arabian Journal for Science and Engineering 2/2022

26-06-2021 | Research Article-Computer Engineering and Computer Science

NtCF: Neural Trust-Aware Collaborative Filtering Toward Hierarchical Recommendation Services

Authors: Wang Zhou, Yajun Du, Meijun Duan, Amin Ul Haq, Fadia Shah

Published in: Arabian Journal for Science and Engineering | Issue 2/2022

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Abstract

It is already certificated that collaborative filtering algorithms could alleviate such data sparsity and long tail distribution problems and provide high performance in item recommendation. However, high computational complexity and insufficient samples may lead to low convergence and inaccuracy in traditional recommender approaches. In this article, a novel deep neural network-based collaborative filtering recommender engine referred to as NtCF is proposed, which resorts to a neural architecture for preference learning and user representation. With the powerful capability of neural network, NtCF is able to deep exploit interactions within social network for each user. More specifically, the trust-aware attention layer is designed to indicate the social influence to each user; furthermore, NtCF performs item clustering via k-means++ and conducts item recommendation within each generated item cluster, and accordingly, NtCF can achieve significant improvement in recommendation performance and provide hierarchical recommendation services. In practice, experimental comparison over three real-world datasets also demonstrates the superiority of NtCF in contrast to state-of-the-art recommender approaches, which can achieve high performance in top-N recommendation and provide much better user experience.

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Footnotes
1
http://www.yelp.com.
 
2
http://www.public.asu.edu/-jtang20/datasetcode/truststudy.htm.
 
3
http://www.trustlet.org/epinions.html.
 
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Metadata
Title
NtCF: Neural Trust-Aware Collaborative Filtering Toward Hierarchical Recommendation Services
Authors
Wang Zhou
Yajun Du
Meijun Duan
Amin Ul Haq
Fadia Shah
Publication date
26-06-2021
Publisher
Springer Berlin Heidelberg
Published in
Arabian Journal for Science and Engineering / Issue 2/2022
Print ISSN: 2193-567X
Electronic ISSN: 2191-4281
DOI
https://doi.org/10.1007/s13369-021-05910-2

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