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P-FCM: a proximity-based fuzzy clustering for user-centered web applications

机译:P-FCM:以用户为中心的Web应用程序的基于接近度的模糊聚类

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In last years, the Internet and the web have been evolved in an astonishing way. Standard web search services play an important role as useful tools for the Internet community even though they suffer from a certain difficulty. The web continues its growth, making the reliability of Internet-based information and retrieval systems more complex. Nevertheless there has been a substantial analysis of the gap between the expected information and the returned information, the work of web search engine is still very hard. There are different problems concerning web searching activity, one among these falls in the query phase. Each engine provide an interface which the user is forced to learn. Often, the searching process returns a huge list of answers that are irrelevant, unavailable, or outdated. The tediosity of querying, due to the fact the queries are too weak to cope with the user's expressiveness, has stimulated the designers to enrich the human-system interaction with new searching metaphors. One of these is the searching of "similar" pages, as offered by Google, Yahoo and others. The idea is very good, since the similarity gives an easy and intuitive mechanism to express a complex relation. We believe that this approach could become more effective if the user can rely on major flexibility in expressing the similarity dependencies with respect the current and available possibilities. In this paper we introduce a novel method for considering and processing the user-driven similarity during web navigation. We define an extension of fuzzy C-means algorithm, namely proximity fuzzy C-means (P-FCM) incorporating a measure of similarity or dissimilarity as user's feedback on the clusters. We present the theoretical framework of this extension and then we observe, through a suite of web-based experiments, how significant is the impact of user's feedback during P-FCM functioning. These observations suggest that the P-FCM approach can offer a relatively simple way of improving the web page classification according with the user interaction with the search engine.
机译:近年来,互联网和网络已经以惊人的方式发展。尽管标准Web搜索服务存在一定的困难,但它们作为Internet社区的有用工具仍发挥着重要作用。网络不断发展,使基于Internet的信息和检索系统的可靠性更加复杂。尽管如此,已经对预期信息和返回信息之间的差距进行了实质性分析,网络搜索引擎的工作仍然非常艰巨。有关Web搜索活动的问题很多,其中之一属于查询阶段。每个引擎都提供一个用户必须学习的界面。通常,搜索过程会返回大量不相关,不可用或过时的答案。由于查询太弱而无法应付用户的表现力,查询的冗长性激发了设计人员使用新的搜索隐喻来丰富人机交互。其中之一是Google,Yahoo和其他公司提供的“相似”页面的搜索。这个想法非常好,因为相似性提供了一种简单而直观的机制来表达复杂的关系。我们认为,如果用户可以依靠主要的灵活性来表达关于当前和可用可能性的相似性依赖性,则该方法将变得更加有效。在本文中,我们介绍了一种在Web导航期间考虑和处理用户驱动的相似性的新颖方法。我们定义了模糊C均值算法的扩展,即结合了相似性或不相似性的度量作为用户对集群的反馈的接近度模糊C均值(P-FCM)。我们介绍了此扩展程序的理论框架,然后通过一系列基于Web的实验观察了用户反馈在P-FCM运行期间的影响有多重要。这些观察结果表明,根据用户与搜索引擎的交互,P-FCM方法可以提供一种相对简单的方法来改进网页分类。

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