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Regular Paper

Neural Explainable Recommender Model Based on Attributes and Reviews

Key Laboratory of Symbolic Computation and Knowledge Engineering of Ministry of Education, Jilin University Changchun 130012, China
College of Computer Science and Technology, Jilin University, Changchun 130012, China
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Abstract

Explainable recommendation, which can provide reasonable explanations for recommendations, is increasingly important in many fields. Although traditional embedding-based models can learn many implicit features, resulting in good performance, they cannot provide the reason for their recommendations. Existing explainable recommender methods can be mainly divided into two types. The first type models highlight reviews written by users to provide an explanation. For the second type, attribute information is taken into consideration. These approaches only consider one aspect and do not make the best use of the existing information. In this paper, we propose a novel neural explainable recommender model based on attributes and reviews (NERAR) for recommendation that combines the processing of attribute features and review features. We employ a tree-based model to extract and learn attribute features from auxiliary information, and then we use a time-aware gated recurrent unit (T-GRU) to model user review features and process item review features based on a convolutional neural network (CNN). Extensive experiments on Amazon datasets demonstrate that our model outperforms the state-of-the-art recommendation models in accuracy of recommendations. The presented examples also show that our model can offer more reasonable explanations. Crowd-sourcing based evaluations are conducted to verify our model’s superiority in explainability.

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Journal of Computer Science and Technology
Pages 1446-1460
Cite this article:
Liu Y-Y, Yang B, Pei H-B, et al. Neural Explainable Recommender Model Based on Attributes and Reviews. Journal of Computer Science and Technology, 2020, 35(6): 1446-1460. https://doi.org/10.1007/s11390-020-0152-8

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Received: 01 November 2019
Revised: 07 May 2020
Published: 30 November 2020
©Institute of Computing Technology, Chinese Academy of Sciences 2020
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