CUSTOM: Aspect-Oriented Product Summarization for E-Commerce
- URL: http://arxiv.org/abs/2108.08010v1
- Date: Wed, 18 Aug 2021 07:26:22 GMT
- Title: CUSTOM: Aspect-Oriented Product Summarization for E-Commerce
- Authors: Jiahui Liang, Junwei Bao, Yifan Wang, Youzheng Wu, Xiaodong He, and
Bowen Zhou
- Abstract summary: Product summarization aims to automatically generate product descriptions, which is of great commercial potential.
Considering the customer preferences on different product aspects, it would benefit from generating aspect-oriented customized summaries.
We propose CUSTOM, which generates diverse and controllable summaries towards different product aspects.
- Score: 33.148235036915885
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Product summarization aims to automatically generate product descriptions,
which is of great commercial potential. Considering the customer preferences on
different product aspects, it would benefit from generating aspect-oriented
customized summaries. However, conventional systems typically focus on
providing general product summaries, which may miss the opportunity to match
products with customer interests. To address the problem, we propose CUSTOM,
aspect-oriented product summarization for e-commerce, which generates diverse
and controllable summaries towards different product aspects. To support the
study of CUSTOM and further this line of research, we construct two Chinese
datasets, i.e., SMARTPHONE and COMPUTER, including 76,279 / 49,280 short
summaries for 12,118 / 11,497 real-world commercial products, respectively.
Furthermore, we introduce EXT, an extraction-enhanced generation framework for
CUSTOM, where two famous sequence-to-sequence models are implemented in this
paper. We conduct extensive experiments on the two proposed datasets for CUSTOM
and show results of two famous baseline models and EXT, which indicates that
EXT can generate diverse, high-quality, and consistent summaries.
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