Independent component analysis is intended to recover the mutually independent components from their linear mixtures. This technique has been widely used in many fields, such as data analysis, signal processing, and machine learning. To alleviate the dependency on prior knowledge concerning unknown sources, many nonparametric methods have been proposed. In this paper, we present a novel boosting-based algorithm for independent component analysis. Our algorithm consists of maximizing likelihood estimation via boosting and seeking unmixing matrix by the fixed-point method. A variety of experiments validate its performance compared with many of the presently known algorithms.
翻译:独立部件分析旨在从线性混合物中回收相互独立的部件。这一技术在数据分析、信号处理和机器学习等许多领域被广泛使用。为了减轻对未知来源的先前知识的依赖,提出了许多非参数方法。在本文件中,我们提出了一个新的基于促进的算法,用于独立部件分析。我们的算法包括通过固定点方法推增和寻求解密矩阵,最大限度地估计可能性。各种实验都证实了其与许多目前已知的算法相比的性能。