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Unsupervised Extraction of Popular Product Attributes from E-Commerce Web Sites by Considering Customer Reviews

机译:通过考虑客户评论从电子商务网站无监督地提取流行产品属性

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摘要

We develop an unsupervised learning framework for extracting popular product attributes from product description pages originated from different E-commerce Web sites. Unlike existing information extraction methods that do not consider the popularity of product attributes, our proposed framework is able to not only detect popular product features from a collection of customer reviews but also map these popular features to the related product attributes. One novelty of our framework is that it can bridge the vocabulary gap between the text in product description pages and the text in customer reviews. Technically, we develop a discriminative graphical model based on hidden Conditional Random Fields. As an unsupervised model, our framework can be easily applied to a variety of new domains and Web sites without the need of labeling training samples. Extensive experiments have been conducted to demonstrate the effectiveness and robustness of our framework.
机译:我们开发了一种无监督的学习框架,用于从源自不同电子商务网站的产品描述页面中提取受欢迎的产品属性。与不考虑产品属性受欢迎程度的现有信息提取方法不同,我们提出的框架不仅能够从客户评论的集合中检测到流行的产品功能,而且还能将这些流行的功能映射到相关的产品属性。我们框架的新颖之处在于,它可以弥合产品描述页面中的文本与客户评论中的文本之间的词汇鸿沟。从技术上讲,我们开发了基于隐藏条件随机场的判别图形模型。作为一种不受监督的模型,我们的框架可以轻松地应用于各种新域和网站,而无需标记培训样本。已经进行了广泛的实验以证明我们框架的有效性和鲁棒性。

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