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Unsupervised Extraction of Popular Product Attributes from Web Sites

机译:无监督从网站上提取流行的产品属性

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We develop an unsupervised learning framework for extracting popular product attributes from different Web product description pages. Unlike existing systems which do not differentiate the popularity of the attributes, we propose a framework which is able not only to detect concerned popular features of a product from a collection of customer reviews, but also to map these popular features to the related product attributes, and at the same time to extract these attributes from description pages. To tackle the technical challenges, we develop a discriminative graphical model based on hidden Conditional Random Fields. We have conducted experiments on several product domains. The empirical results show that our framework is effective.
机译:我们开发了一个无监督的学习框架,用于从不同的Web产品描述页面中提取流行的产品属性。与现有系统不区分属性的普及,我们提出了一个能够从客户评论的集合中检测产品的有关流行功能的框架,也提出了一个框架,而且还可以将这些流行的功能映射到相关的产品属性,同时从描述页面中提取这些属性。为了解决技术挑战,我们基于隐藏条件随机字段开发一种判别图形模型。我们对几个产品域进行了实验。经验结果表明,我们的框架是有效的。

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