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A Linear-time Independence Criterion Based on a Finite Basis Approximation

机译:基于有限基础近似的线性时间独立性标准

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Detection of statistical dependence between random variables is an essential component in many machine learning algorithms. We propose a novel independence criterion for two random variables with linear-time complexity. We establish that our independence criterion is an upper bound of the Hirschfeld-Gebelein-Rényi maximum correlation coefficient between tested variables. A finite set of basis functions is employed to approximate the mapping functions that can achieve the maximal correlation. Using classic benchmark experiments based on independent component analysis, we demonstrate that our independence criterion performs comparably with the state-of-the-art quadratic-time kernel dependence measures like the Hilbert-Schmidt Independence Criterion, while being more efficient in computation. The experimental results also show that our independence criterion outperforms another contemporary linear-time kernel dependence measure, the Finite Set Independence Criterion. The potential application of our criterion in deep neural networks is validated experimentally.
机译:检测随机变量之间的统计依赖性是许多机器学习算法中的重要组成部分。我们为两个随机变量提出了一种新颖的独立性标准,具有线性时间复杂性。我们建立了我们的独立性标准是Hirschfeld-Gebelein-Rényi的上限,在测试变量之间的最大相关系数。采用有限的基础函数来近似可以实现最大相关的映射函数。使用基于独立分量分析的经典基准实验,我们证明了我们的独立性标准与如Hilbert-Schmidt独立性标准这样的最先进的二次时间内核依赖措施相当地执行,同时在计算中更有效。实验结果还表明,我们的独立性标准优于另一个当代线性时间内核依赖措施,有限集独立性标准。我们在深神经网络中的标准的潜在应用是通过实验验证的。

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