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A Novel SVM Based Multi-Facet Ranking Method for Topic Specific Web Pages

机译:基于SVM的特定网页的基于SVM的多面排序方法

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摘要

With the rapid development of network technology, Internet has become an important tool to publish, exchange and acquire information. Many fields such as news, advertising, consuming, finance, education, E-commerce are involved. However, the huge, dynamic, heterogeneous and semi-structured data structure environment makes general search engine hard to avoid "topic drift", which needs users to choose the topic they are interested in. So, a topic specific search engine, which is more explicit in classification, having more data related to the topic and updates more timely is needed. To compensate for the general search engine's weakness processing domain information, this paper proposes a novel ranking algorithm based on machine learning for topic specific web pages, describes an experimental search engine based on this algorithm, and presents the experiment results.
机译:随着网络技术的快速发展,互联网已成为发布,交换和获取信息的重要工具。涉及许多领域,如新闻,广告,消费,金融,教育,电子商务。但是,巨大,动态,异构和半结构的数据结构环境使得一般搜索引擎难以避免“主题漂移”,这需要用户选择他们感兴趣的主题。所以,一个专门的搜索引擎,更多在分类中显式,需要更多与主题和更新更新的数据。为了弥补一般搜索引擎的弱点处理域信息,本文提出了一种基于机器学习的新型排名算法,用于主题特定网页,描述了一种基于该算法的实验搜索引擎,并提出了实验结果。

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