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A practical kernel density estimator algorithm for maximum likelihood blind signal separation

机译:一种用于最大似然盲信号分离的实用核密度估计算法

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The recent development of blind signal separation techniques using computationally tractable neural network-based algoprithms such as Independent COmponent Analysis (ICA) has precipitated a revival of interest in blind signal signal separation techniques based on Maximum Likelihood (ML). ICA and similar methods rely on training networks using data whose channels each contain some mixture of `real' components deriving from an unknown model and some level of noise; the goal is to recover the real components from the mixture as faithfully as possible. We consider an alternative ML-based blind signal separation approach that uses kernel density estimators t o solve the same spearation problem. Wile several kernel density estimation methods exist, using them to perform blind signal separation has been impractical becausee their computation requires the computationally expensive evaluation of multi-dimensional integrals. We present results on our work with a new implementatioin of a ML-based kernel density estimator algorithm that uses the Epanechnikov kernel. This method avoids the costly evaluation of multi-dimensional integrals, and provides a computationally viable and practical alternative for ML-based blind signal separation. We also review some theoretical performance results on Epanechnikov kernels, and show that these are more efficient than logistic kernels from the perspective of Asymptotic Mean Integrated Squared Error. Moreover, methods using Epanechnikov kernels to solve blind signal separation problems converge more rapidly than methods using either Gassuian or gogistic kernels. In the last part of the presentation, we present an application of the proposed Epanechnikov kernel separation algorithm to the analysis of brain electric potential data and contrast its performance with ICA and representative non-statistical blind separators.
机译:最近利用诸如独立分量分析(ICA)的基于计算的杂物网络的抗血管血管脱位的盲信号分离技术的开发已经促使基于最大似然(ML)的盲信号信号分离技术的兴趣复兴。 ICA和类似方法依赖培训网络使用渠道各自包含来自未知模型的某些“真实”组件的混合和一些噪声水平的数据;目标是尽可能忠实地将真实组成部分从混合物中恢复。我们考虑一种基于ML的基于ML的盲信号分离方法,它使用内核密度估计器T O解决了相同的旋转问题。存在几种内核密度估计方法,使用它们来执行盲信号分离已经是不切实际的,因为它们的计算需要计算昂贵的多维积分评估。我们对我们的工作提供了使用EPAnechnikov内核的ML的内核密度估计算法的新实施方式。该方法避免了多维积分的昂贵评估,并提供基于ML的盲信号分离的计算可行和实用的替代方案。我们还审查了EPAnechnikov内核的一些理论绩效结果,并表明这些比渐近均集成方形错误的视角比Logistic内核更有效。此外,使用EPAnechnikov内核解决盲信号分离问题的方法比使用Gassuian或宫腔内核的方法更快地收敛。在演示的最后一部分中,我们向拟议的EPAnechnikov内核分离算法展示了脑电潜在数据的分析,并用ICA和代表性非统计盲分离器对比其性能。

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