web环境中路径遍历模式的数据挖掘

Ming-Syan Chen, Jong Soo Park, Philip S. Yu
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引用次数: 17

摘要

在本文中,我们探索了一种新的数据挖掘能力,该能力涉及在像万维网这样的分布式信息提供环境中挖掘路径遍历模式。首先,将原始日志数据序列转换为最大前向引用集合,并过滤掉一些主要是为了便于旅行而产生的后向引用的影响。其次,我们推导了从获得的最大前向引用中确定频繁遍历模式(即大引用序列)的算法。设计了两种确定大参考序列的算法:一种基于一些哈希和修剪技术,另一种进一步改进了批量确定大参考序列的选项,以减少所需的数据库扫描次数。对两种方法的性能进行了比较分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data mining for path traversal patterns in a web environment
In this paper, we explore a new data mining capability which involved mining path traversal patterns in a distributed information providing environment like world-wide-web. First, we convert the original sequence of log data into a set of maximal forward references and filter out the effect of some backward references which are mainly made for ease of traveling. Second, we derive algorithms to determine the frequent traversal patterns, i.e., large reference sequences, from the maximal forward references obtained. Two algorithms are devised for determining large reference sequences: one is based on some hashing and pruning techniques, and the other is further improved with the option of determining large reference sequences in batch so as to reduce the number of database scans required. Performance of these two methods is comparatively analyzed.
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