从导航序列流中维护导航模式的知识库

Ajumobi Udechukwu, K. Barker, R. Alhajj
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引用次数: 1

摘要

在本文中,我们探讨了在流环境中导航模式发现的另一种设计目标。与其基于阈值进行挖掘并返回满足指定阈值的模式,我们建议在没有阈值的情况下进行挖掘,并在一次传递中返回所有已识别的模式及其支持计数。我们利用滑动窗口来捕获最近的导航序列,并提出了一种批量更新策略来维护滑动窗口内的模式。我们的批量更新策略依赖于在没有支持阈值的情况下有效挖掘导航模式的能力。为了实现这一目标,我们设计了一种有效的算法来挖掘连续的导航模式,而不需要支持阈值。实验表明,该算法优于现有的连续导航模式挖掘技术。我们的实验还表明,与现有的窗口更新策略相比,所提出的批量更新策略获得了相当大的加速,而现有的窗口更新策略需要在每个新窗口内重新计算模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Maintaining knowledge-bases of navigational patterns from streams of navigational sequences
In this paper we explore an alternative design goal for navigational pattern discovery in stream environments. Instead of mining based on thresholds and returning the patterns that satisfy the specified threshold(s), we propose to mine without thresholds and return all identified patterns along with their support counts in a single pass. We utilize a sliding window to capture recent navigational sequences and propose a batch-update strategy for maintaining the patterns within a sliding window. Our batch-update strategy depends on the ability to efficiently mine the navigational patterns without support thresholds. To achieve this, we have designed an efficient algorithm for mining contiguous navigational patterns without support thresholds. Our experiments show that our algorithm outperforms the existing techniques for mining contiguous navigational patterns. Our experiments also show that the proposed batch-update strategy achieves considerable speed-ups compared to the existing window update strategy, which requires total re-computation of patterns within each new window.
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