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Linear causal model discovery using the MML criterion

机译:使用MML准则的线性因果模型发现

摘要

Determining the causal structure of a domain is a key task in the area of Data Mining and Knowledge Discovery.The algorithm proposed by Wallace et al. [15] has demonstrated its strong ability in discovering Linear Causal Models from given data sets. However, some experiments showed that this algorithm experienced difficulty in discovering linear relations with small deviation, and it occasionally gives a negative message length, which should not be allowed. In this paper, a more efficient and precise MML encoding scheme is proposed to describe the model structure and the nodes in a Linear Causal Model. The estimation of different parameters is also derived. Empirical results show that the new algorithm outperformed the previous MML-based algorithm in terms of both speed and precision.
机译:确定域的因果结构是数据挖掘和知识发现领域的关键任务。Wallace等人提出的算法。文献[15]证明了从给定数据集中发现线性因果模型的强大能力。但是,一些实验表明,该算法在发现具有小偏差的线性关系时遇到困难,并且有时会给出负的消息长度,这是不应该允许的。本文提出了一种更有效,更精确的MML编码方案来描述线性因果模型中的模型结构和节点。还推导了不同参数的估计。实验结果表明,新算法在速度和精度上均优于以前的基于MML的算法。

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