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Instant Exceptional Model Mining Using Weighted Controlled Pattern Sampling

机译:使用加权控制模式采样的即时异常模型挖掘

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When plugged into instant interactive data analytics processes, pattern mining algorithms are required to produce small collections of high quality patterns in short amounts of time. In the case of Exceptional Model Mining (EMM), even heuristic approaches like beam search can fail to deliver this requirement, because in EMM each search step requires a relatively expensive model induction. In this work, we extend previous work on high performance controlled pattern sampling by introducing extra weighting functionality, to give more importance to certain data records in a dataset. We use the extended framework to quickly obtain patterns that are likely to show highly deviating models. Additionally, we combine this randomized approach with a heuristic pruning procedure that optimizes the pattern quality further. Experiments show that in contrast to traditional beam search, this combined method is able to find higher quality patterns using short time budgets.
机译:当插入即时交互式数据分析过程时,需要模式挖掘算法以在短时间内生成少量高质量模式的集合。在例外模型挖掘(EMM)的情况下,即使像波束搜索之类的启发式方法也无法满足这一要求,因为在EMM中,每个搜索步骤都需要相对昂贵的模型归纳。在这项工作中,我们通过引入额外的加权功能扩展了以前在高性能控制模式采样方面的工作,以更加重视数据集中的某些数据记录。我们使用扩展的框架来快速获取可能显示出高度偏离的模型的模式。此外,我们将此随机方法与启发式修剪程序相结合,进一步优化了图案质量。实验表明,与传统的波束搜索相比,这种组合方法能够在较短的时间预算内找到更高质量的模式。

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