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Justifying Recommendations using Distantly-Labeled Reviews and Fine-Grained Aspects

2019-11-01IJCNLP 2019Unverified0· sign in to hype

Jianmo Ni, Jiacheng Li, Julian McAuley

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Abstract

Several recent works have considered the problem of generating reviews (or `tips') as a form of explanation as to why a recommendation might match a customer's interests. While promising, we demonstrate that existing approaches struggle (in terms of both quality and content) to generate justifications that are relevant to users' decision-making process. We seek to introduce new datasets and methods to address the recommendation justification task. In terms of data, we first propose an `extractive' approach to identify review segments which justify users' intentions; this approach is then used to distantly label massive review corpora and construct large-scale personalized recommendation justification datasets. In terms of generation, we are able to design two personalized generation models with this data: (1) a reference-based Seq2Seq model with aspect-planning which can generate justifications covering different aspects, and (2) an aspect-conditional masked language model which can generate diverse justifications based on templates extracted from justification histories. We conduct experiments on two real-world datasets which show that our model is capable of generating convincing and diverse justifications.

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