利用加权FP-Tree方法从有向图遍历中有效挖掘具有权约束的封闭频繁模式

Runian Geng, Xiangjun Dong, Xingye Zhang, Wenbo Xu
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引用次数: 5

摘要

为了解决加权遍历模式挖掘问题,提出了一种边缘加权有向图和顶点加权有向图的转换模型。在此基础上,提出了一种有效的基于图遍历的封闭加权频繁模式挖掘算法GTCWFP。该算法利用分而治之的模式生长方法,从有向图的遍历中挖掘出具有权约束的封闭频繁模式。该算法将闭包特性与权值约束相结合,有效地减少了搜索空间,并从图遍历TDB中提取出简洁无损的模式。综合数据的实验结果表明,该算法是一种高效、可扩展的基于图遍历的封闭加权频繁模式挖掘算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficiently Mining Closed Frequent Patterns with Weight Constraint from Directed Graph Traversals Using Weighted FP-Tree Approach
In this paper, a transformable model of EWDG (edge-weighted directed graph) and VWDG (vertex-weighted directed graph) is proposed to resolve the problem of weighted traversal patterns mining. Based on the model, an effective algorithm called GTCWFP miner (graph traversals-based closed weighted frequent patterns miner) is presented. The algorithm exploits a divide-and-conquer paradigm with a pattern growth method to mine closed frequent patterns with weight constraint from the traversals on directed graph. It incorporates the closure property with weight constrains to reduce effectively search space and extracts succinct and lossless patterns from graph traversal TDB. Experimental results of synthetic data show that the algorithm is an efficient and scalable algorithm for mining closed weighted frequent patterns based on graph traversals.
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