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2024 | OriginalPaper | Chapter

Contrastive Hierarchical Gating Networks for Rating Prediction

Authors : Jingwei Ma, Jiahui Wen, Chenglong Huang, Mingyang Zhong, Lu Wang, Guangda Zhang

Published in: Neural Information Processing

Publisher: Springer Nature Singapore

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Abstract

Review-based recommendations suffer from text noises and the absence of supervised signals. To address those challenges, we propose a novel hierarchical gated sentiment-aware model for rating prediction in this paper. Specifically, to automatically suppress the influence of noisy reviews, we propose a hierarchical gating network to select informative textual signals at different levels of granularity. Specifically, a local gating module is proposed to select reviews with personalized end-to-end differential thresholds. The aim is to gate reviews in a relatively “hard” way to minimize the information flow from noisy reviews while facilitating the model training. A global gating module is employed to evaluate the overall usefulness of the review signals by estimating the uncertainties encoded in the historical reviews. In addition, a discriminative learning module is proposed to supervise the learning of the hierarchical gating network. The essential intuition is to exploit the sentiment consistencies between the target reviews and the target ratings for developing self-supervision signals so that the hierarchical gating network can select relevant reviews related to the target ratings for better prediction. Finally, extensive experiments on public datasets and comparison studies with state-of-the-art baselines have demonstrated the effectiveness of the proposed model, additional investigations also provide a deep insight into the rationale underlying the superiority of the proposed model.

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Metadata
Title
Contrastive Hierarchical Gating Networks for Rating Prediction
Authors
Jingwei Ma
Jiahui Wen
Chenglong Huang
Mingyang Zhong
Lu Wang
Guangda Zhang
Copyright Year
2024
Publisher
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-99-8067-3_32

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