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A Direct Measure for the Efficacy of Bayesian Network Structures Learned from Data

机译:从数据中学到的贝叶斯网络结构有效性的直接度量

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Current metrics for evaluating the performance of Bayesian network structure learning includes order statistics of the data likelihood of learned structures, the average data likelihood, and average convergence time. In this work, we define a new metric that directly measures a structure learning algorithm's ability to correctly model causal associations among variables in a data set. By treating membership in a Markov Blanket as a retrieval problem, we use ROC analysis to compute a structure learning algorithm's efficacy in capturing causal associations at varying strengths. Because our metric moves beyond error rate and data-likelihood with a measurement of stability, this is a better characterization of structure learning performance. Because the structure learning problem is NP-hard, practical algorithms are either heuristic or approximate. For this reason, an understanding of a structure learning algorithm's stability and boundary value conditions is necessary. We contribute to state of the art in the data-mining community with a new tool for understanding the behavior of structure learning techniques.
机译:当前用于评估贝叶斯网络结构学习性能的指标包括学习到的结构的数据似然性,平均数据似然性和平均收敛时间的顺序统计。在这项工作中,我们定义了一个直接衡量结构学习算法正确建模数据集中变量之间因果关系的能力的新指标。通过将Markov毯子中的成员资格视为检索问题,我们使用ROC分析来计算结构学习算法在捕获强度不同的因果关联时的功效。由于我们的度量标准超越了错误率和数据似然度(通过度量稳定性),因此可以更好地表征结构学习性能。由于结构学习问题是NP难的,因此实用算法不是启发式算法就是近似算法。因此,必须了解结构学习算法的稳定性和边界值条件。我们使用了解结构学习技术行为的新工具,为数据挖掘领域的最新技术做出了贡献。

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