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Improved Approximation Algorithm for Maximal Information Coefficient

机译:改进的最大信息系数的近似算法

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A novel statistical maximal information coefficient (MIC) that can detect the nonlinear relationships in large data sets was proposed by Reshef et al. (2011), with emphasis being placed on the equitability, which is a very important concept in data exploration. In this paper, an improved algorithm for approximation of the MIC (IAMIC) is proposed for the development of the equitability. Based on quadratic optimization processes, the IAMIC can search for a more optimal partition on the y-axis rather than use that which was obtained simply through the equipartition of the y-axis, to enable it to come closer to the true value of the MIC. It has been proved that the IAMIC can search for a local optimal value while using a lower number of iterations. It has also been shown that the IAMIC provides higher accuracy and a more acceptable run-time, based on both a mathematical proof and the results of simulations.
机译:通过RESHEF等人提出了一种可以检测大数据集中的非线性关系的新型统计最大信息系数(MIC)。 (2011年),重点是符合可用性,这是数据探索中的一个非常重要的概念。 在本文中,提出了一种改进的麦克风(IAMIC)近似算法,用于开发可用性。 基于二次优化过程,IAMIC可以在Y轴上搜索更优化的分区,而不是使用简单地通过y轴的eciparitip获得的分区,以使其能够更接近MIC的真实值 。 已经证明,IAMIC可以在使用较低数量的迭代时搜索本地最佳值。 还表明,基于数学证明和模拟结果,IAMIC提供更高的准确性和更可接受的运行时间。

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