Rongrong Ji
2024
MMAPS: End-to-End Multi-Grained Multi-Modal Attribute-Aware Product Summarization
Tao Chen
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Ze Lin
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Hui Li
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Jiayi Ji
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Yiyi Zhou
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Guanbin Li
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Rongrong Ji
Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)
Given the long textual product information and the product image, Multi-modal Product Summarization (MPS) aims to increase customers’ desire to purchase by highlighting product characteristics with a short textual summary. Existing MPS methods can produce promising results. Nevertheless, they still 1) lack end-to-end product summarization, 2) lack multi-grained multi-modal modeling, and 3) lack multi-modal attribute modeling. To improve MPS, we propose an end-to-end multi-grained multi-modal attribute-aware product summarization method (MMAPS) for generating high-quality product summaries in e-commerce. MMAPS jointly models product attributes and generates product summaries. We design several multi-grained multi-modal tasks to better guide the multi-modal learning of MMAPS. Furthermore, we model product attributes based on both text and image modalities so that multi-modal product characteristics can be manifested in the generated summaries. Extensive experiments on a real large-scale Chinese e-commence dataset demonstrate that our model outperforms state-of-the-art product summarization methods w.r.t. several summarization metrics. Our code is publicly available at: https://github.com/KDEGroup/MMAPS.
2016
Variational Neural Discourse Relation Recognizer
Biao Zhang
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Deyi Xiong
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Jinsong Su
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Qun Liu
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Rongrong Ji
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Hong Duan
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Min Zhang
Proceedings of the 2016 Conference on Empirical Methods in Natural Language Processing
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Co-authors
- Biao Zhang 1
- Deyi Xiong 1
- Jinsong Su 1
- Qun Liu 1
- Hong Duan 1
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