san_sim:真实高效的URL文本相似度算法

Sandhya Pundhir, Udayan Ghose
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引用次数: 1

摘要

相似性决定了两个对象之间的关系。我们需要这个来建立正在比较的两个对象之间的顺序。这里我们要比较两个url(统一资源定位器),找出哪个与输入查询更相关。内容挖掘是一种利用网页文本的web挖掘技术。在线学习用于由于数据集的大小而无法在训练时使用整个数据集的情况。本文介绍了几种常用的文本相似度方法,并与本文提出的方法进行了相关性比较。我们发现我们的算法比传统的tex相似度度量如LCS(最长公共序列)和Dice得分表现得更好。该方法具有较高的查全率、查全率和F度量,性能较好。这证明了数据特定过滤方法、在线学习原理与统计学方法结合使用会产生更好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
san_sim: Factual and efficient URL text similarity algorithm
Similarity determines the relation between two objects. We need this to establish an order between the two objects being compared. Here we want to compare two URLs (Uniform Resource Locater) and find which is more relevant to the input query. Content mining is one of web mining technique which uses text of the web page. Online learning is used where entire dataset cannot be used at training time because of its size. Here few popular text similarity methods are implemented and their relevance is compared with our proposed method. We find that our algo-rithmperforms better than the traditional tex similarity measures such as LCS (Longest Common Sequence) and Dice score. Performance of our proposed method is better as higher Precision, Recall and F measures are achieved. This proves that data specific filtering methods, online learning principles when used with statistical method produces better result.
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