A strategy for identification of Web query interfaces using supervised learning

H. Marin-Castro, V. Sosa-Sosa, I. Lopez-Arevalo
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引用次数: 2

Abstract

The Deep Web is an enormous source of information constantly growing. It comprises a large amount of databases on the Web that are accessed through Web query interfaces related to different domains. The content of the Deep Web can not be reachable by traditional search engines, what makes almost impossible for common users to get access to this useful information. There are several problems related to the search for content in the Deep Web. One of them is the automatic identification of Web query interfaces, being this a mean to access the information in the Deep Web. The task of classify HTML forms contained inside Web page as Web query interface is challenging due to their enormous heterogeneity. This paper introduce a strategy that automatically identifies Web query interfaces independent of their domain. We make an adequate selection of HTML elements and use them appropriately to build characteristic vectors that are used as input of a supervised classifier to determine if a Web page contains or not a Web query interface. The experimental results show that the proposed strategy is efficient and accurate, achieving better classification results than works previously reported.
一种使用监督学习识别Web查询接口的策略
深网是一个不断增长的巨大信息来源。它由Web上的大量数据库组成,这些数据库可以通过与不同域相关的Web查询接口进行访问。传统的搜索引擎无法访问深网的内容,这使得普通用户几乎不可能获得这些有用的信息。在深层网络中搜索内容有几个问题。其中之一是Web查询接口的自动识别,这是访问深层网络中信息的一种手段。由于Web页面中包含的HTML表单具有巨大的异构性,因此将其分类为Web查询接口是一项具有挑战性的任务。本文介绍了一种独立于域自动识别Web查询接口的策略。我们对HTML元素进行了充分的选择,并适当地使用它们来构建特征向量,这些特征向量用作监督分类器的输入,以确定Web页面是否包含Web查询接口。实验结果表明,该方法有效、准确,取得了较好的分类效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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