分布式遗传过程挖掘

Carmen Bratosin, N. Sidorova, Wil M.P. van der Aalst
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引用次数: 34

摘要

流程挖掘旨在从数据日志中发现流程模型,以便深入了解信息系统的实际使用情况。大多数现有的过程挖掘算法无法发现复杂的结构,或者在处理噪声和罕见行为方面存在问题。遗传过程挖掘算法利用遗传算子在所有可能过程模型的空间中寻找最适合的解,克服了这些问题。遗传过程挖掘的主要缺点是计算时间长。本文提出了一种减少计算时间的遗传挖掘器的粗粒度分布式变体。改进的程度在很大程度上取决于参数值和事件日志特征。我们进行了经验评估,以确定设置分布式算法参数的指导方针。
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Distributed genetic process mining
Process mining aims at discovering process models from data logs in order to offer insight into the real use of information systems. Most of the existing process mining algorithms fail to discover complex constructs or have problems dealing with noise and infrequent behavior. The genetic process mining algorithm overcomes these issues by using genetic operators to search for the fittest solution in the space of all possible process models. The main disadvantage of genetic process mining is the required computation time. In this paper we present a coarse-grained distributed variant of the genetic miner that reduces the computation time. The degree of the improvement obtained highly depends on the parameter values and event logs characteristics. We perform an empirical evaluation to determine guidelines for setting the parameters of the distributed algorithm.
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