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Main Authors: Yang, Ching-Wen, Feng, Zhi-Quan, Lin, Ying-Jia, Chen, Che-Wei, Wu, Kun-da, Xu, Hao, Yao, Jui-Feng, Kao, Hung-Yu
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.09865
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author Yang, Ching-Wen
Feng, Zhi-Quan
Lin, Ying-Jia
Chen, Che-Wei
Wu, Kun-da
Xu, Hao
Yao, Jui-Feng
Kao, Hung-Yu
author_facet Yang, Ching-Wen
Feng, Zhi-Quan
Lin, Ying-Jia
Chen, Che-Wei
Wu, Kun-da
Xu, Hao
Yao, Jui-Feng
Kao, Hung-Yu
contents The Explainable Recommendation task is designed to receive a pair of user and item and output explanations to justify why an item is recommended to a user. Many models approach review generation as a proxy for explainable recommendations. While these models can produce fluent and grammatically correct sentences, they often lack precision and fail to provide personalized, informative recommendations. To address this issue, we propose a personalized, aspect-controlled model called Multi-Aspect Prompt LEarner (MAPLE), which integrates aspect category as another input dimension to facilitate memorizing fine-grained aspect terms. Experiments conducted on two real-world review datasets in the restaurant domain demonstrate that MAPLE significantly outperforms baseline review-generation models. MAPLE excels in both text and feature diversity, ensuring that the generated content covers a wide range of aspects. Additionally, MAPLE delivers good generation quality while maintaining strong coherence and factual relevance. The code and dataset used in this paper can be found here https://github.com/Nana2929/MAPLE.git.
format Preprint
id arxiv_https___arxiv_org_abs_2408_09865
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MAPLE: Enhancing Review Generation with Multi-Aspect Prompt LEarning in Explainable Recommendation
Yang, Ching-Wen
Feng, Zhi-Quan
Lin, Ying-Jia
Chen, Che-Wei
Wu, Kun-da
Xu, Hao
Yao, Jui-Feng
Kao, Hung-Yu
Machine Learning
Computation and Language
Information Retrieval
The Explainable Recommendation task is designed to receive a pair of user and item and output explanations to justify why an item is recommended to a user. Many models approach review generation as a proxy for explainable recommendations. While these models can produce fluent and grammatically correct sentences, they often lack precision and fail to provide personalized, informative recommendations. To address this issue, we propose a personalized, aspect-controlled model called Multi-Aspect Prompt LEarner (MAPLE), which integrates aspect category as another input dimension to facilitate memorizing fine-grained aspect terms. Experiments conducted on two real-world review datasets in the restaurant domain demonstrate that MAPLE significantly outperforms baseline review-generation models. MAPLE excels in both text and feature diversity, ensuring that the generated content covers a wide range of aspects. Additionally, MAPLE delivers good generation quality while maintaining strong coherence and factual relevance. The code and dataset used in this paper can be found here https://github.com/Nana2929/MAPLE.git.
title MAPLE: Enhancing Review Generation with Multi-Aspect Prompt LEarning in Explainable Recommendation
topic Machine Learning
Computation and Language
Information Retrieval
url https://arxiv.org/abs/2408.09865