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Rigid or Flexible? A New Navigation Approach for Better Consumer Service Based on Knowledge Enhancement

机译:刚性还是柔性?基于知识增强的改善消费者服务的新导航方法

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With the rapid development of the Internet and E-commerce, online shopping sites are becoming a popular platform for products selling. Shopping sites such as amazon.com, dangdang.com provide consumers with a hierarchical navigation for selecting products easily from overwhelming amount of products. However, those man-made navigations are so general and professional that consumers still need to spend much time in filtering out their own undesired products personally. Shopping sites provide abundant textual product descriptions for most products, which describes the details of the product. In this paper, we propose a novel model to build a topic hierarchy from the detailed product descriptions, which can automatically model words into a tree structure by hierarchical Latent Dirichlet Allocation (hLDA), besides, our model can also augment words level allocations with the conceptual relation between words in WordNet automatically. Each node in the hierarchical tree contains some relevant keywords of product descriptions, thus clarifying the meaning of the concept in the node. Therefore, consumers can pick out their interested products by using the discovered descriptive and valuable navigation of products. The experimental results on amazon.com, one of the most popular shopping sites in America, demonstrate the efficiency and effectiveness of our proposed model.
机译:随着互联网和电子商务的飞速发展,在线购物网站正成为产品销售的流行平台。诸如amazon.com,dangdang.com之类的购物网站为消费者提供了分层导航,可以轻松地从大量商品中选择商品。但是,这些人造导航是如此普遍和专业,以至于消费者仍然需要花费大量时间来亲自过滤掉自己不想要的产品。购物站点为大多数产品提供了大量的文字产品描述,其中描述了产品的详细信息。在本文中,我们提出了一种新颖的模型,该模型可以根据详细的产品描述来构建主题层次结构,该模型可以通过分层的潜在Dirichlet分配(hLDA)将单词自动建模为树状结构,此外,我们的模型还可以通过使用WordNet中单词之间的概念关系自动。层次树中的每个节点都包含一些与产品描述相关的关键字,从而阐明了该概念在节点中的含义。因此,消费者可以通过使用发现的描述性和有价值的产品导航来挑选感兴趣的产品。在美国最受欢迎的购物网站之一amazon.com上的实验结果证明了我们提出的模型的效率和有效性。

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