Personalized reviews generation for explainable recommendations
In recent years, the recommendation community is increasingly paying attention to the interpretability of recommendations. Due to the black box feature of the recommendation system, users usually do not understand the reason for passively obtaining the recommendation results, which will directly aff...
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2023
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sg-ntu-dr.10356-1694452023-08-01T07:08:34Z Personalized reviews generation for explainable recommendations Li, Ling Alex Chichung Kot School of Electrical and Electronic Engineering EACKOT@ntu.edu.sg Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence In recent years, the recommendation community is increasingly paying attention to the interpretability of recommendations. Due to the black box feature of the recommendation system, users usually do not understand the reason for passively obtaining the recommendation results, which will directly affect users' satisfaction with the system. Existing works usually suffer from ground truth information leaking because they require an aspect word from ground truth to steer the generating processing. To remedy this problem, we propose a BERT-guided generator for explainable recommendations named ExBERT, which can generate reliable reviews only from user/item IDs and their review history. A self-attention mechanism encoder is adopted to explore user and item review history. Moreover, We adapt the BERT-NSP task in our decoder as a contrastive sentence-level classifier, which distinguishes between the full-sentence meanings of the positive and negative samples. Moreover, the sentences generated by most of the existing works are too general (e.g., “The product is great”) rather than containing fine-grained words, we propose a Diffusion Model-based Review Generation towards EXplainable Recommendation named Diffusion-EXR. Diffusion-EXR corrupts the sequence of review embeddings by incrementally introducing varied levels of Gaussian noise to the sequence of word embeddings and learns to reconstruct the original word representations in the reverse process. The nature of DDPM enables our lightweight Transformer backbone to perform well in the recommendation review generation task. Extensive experiments have shown that ExBERT and Diffusion-EXR are effective and significantly outperform state-of-the-art baselines on two real-world explainable recommendation benchmark datasets (i.e., Amazon-Clothing Shoes Jewellery and TripAdvisor). Master of Engineering 2023-07-19T02:02:40Z 2023-07-19T02:02:40Z 2023 Thesis-Master by Research Li, L. (2023). Personalized reviews generation for explainable recommendations. Master's thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/169445 https://hdl.handle.net/10356/169445 10.32657/10356/169445 en This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC 4.0). application/pdf Nanyang Technological University |
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Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence Li, Ling Personalized reviews generation for explainable recommendations |
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In recent years, the recommendation community is increasingly paying attention to the interpretability of recommendations. Due to the black box feature of the recommendation system, users usually do not understand the reason for passively obtaining the recommendation results, which will directly affect users' satisfaction with the system. Existing works usually suffer from ground truth information leaking because they require an aspect word from ground truth to steer the generating processing. To remedy this problem, we propose a BERT-guided generator for explainable recommendations named ExBERT, which can generate reliable reviews only from user/item IDs and their review history. A self-attention mechanism encoder is adopted to explore user and item review history. Moreover, We adapt the BERT-NSP task in our decoder as a contrastive sentence-level classifier, which distinguishes between the full-sentence meanings of the positive and negative samples. Moreover, the sentences generated by most of the existing works are too general (e.g., “The product is great”) rather than containing fine-grained words, we propose a Diffusion Model-based Review Generation towards EXplainable Recommendation named Diffusion-EXR. Diffusion-EXR corrupts the sequence of review embeddings by incrementally introducing varied levels of Gaussian noise to the sequence of word embeddings and learns to reconstruct the original word representations in the reverse process. The nature of DDPM enables our lightweight Transformer backbone to perform well in the recommendation review generation task. Extensive experiments have shown that ExBERT and Diffusion-EXR are effective and significantly outperform state-of-the-art baselines on two real-world explainable recommendation benchmark datasets (i.e., Amazon-Clothing Shoes Jewellery and TripAdvisor). |
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Alex Chichung Kot |
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Alex Chichung Kot Li, Ling |
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Thesis-Master by Research |
author |
Li, Ling |
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Li, Ling |
title |
Personalized reviews generation for explainable recommendations |
title_short |
Personalized reviews generation for explainable recommendations |
title_full |
Personalized reviews generation for explainable recommendations |
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Personalized reviews generation for explainable recommendations |
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Personalized reviews generation for explainable recommendations |
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personalized reviews generation for explainable recommendations |
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Nanyang Technological University |
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2023 |
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https://hdl.handle.net/10356/169445 |
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