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An Improved Approach for the Discovery of Causal Models via MML

机译:一种通过MML发现因果模型的改进方法

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Discovering a precise causal structure accurately reflecting the given data is one of the most essential tasks in the area of data mining and machine learning. One of the successful causal discovery approaches is the information-theoretic approach using the Minimum Message Length Principle. This paper presents an improved and further experimental results of the MML discovery algorithm. We introduced a new encoding scheme for measuring the cost of describing the causal structure. Stiring function is also applied to further simplify the computational complexity and thus works more efficiently. The experimental results of the current version of the discovery system show that: (1) the current version is capable of discovering what discovered by previous system; (2) current system is capable of discovering more complicated causal models with large number of variables; (3) the new version works more efficiently compared with the previous version in terms of time complexity.
机译:发现精确反映因果关系的精确因果结构是数据挖掘和机器学习领域中最重要的任务之一。成功的因果发现方法之一是使用最小消息长度原理的信息理论方法。本文提出了MML发现算法的改进和进一步的实验结果。我们引入了一种新的编码方案,用于测量描述因果结构的成本。搅拌功能也被应用以进一步简化计算复杂度,从而更有效地工作。当前版本的发现系统的实验结果表明:(1)当前版本能够发现以前系统发现的内容; (2)当前系统能够发现具有大量变量的更复杂的因果模型; (3)在时间复杂度方面,新版本比旧版本更有效。

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