Independent Component Analysis (ICA) is intended to recover the mutually independent sources from their linear mixtures, and F astICA is one of the most successful ICA algorithms. Although it seems reasonable to improve the performance of F astICA by introducing more nonlinear functions to the negentropy estimation, the original fixed-point method (approximate Newton method) in F astICA degenerates under this circumstance. To alleviate this problem, we propose a novel method based on the second-order approximation of minimum discrimination information (MDI). The joint maximization in our method is consisted of minimizing single weighted least squares and seeking unmixing matrix by the fixed-point method. Experimental results validate its efficiency compared with other popular ICA algorithms.
翻译:独立元件分析(ICA)旨在从其线性混合物中回收相互独立的来源,而F AstICA是最成功的ICA算法之一。虽然似乎合理的做法是通过对内线估计引入更多的非线性功能来改善F AstICA的性能,但F AstICA的原有固定点法(近似牛顿法)在此情况下会退化。为了缓解这一问题,我们提议了一种基于最低歧视信息第二阶近似法(MDI)的新方法。我们方法的共同最大化包括尽量减少单一加权最低方块,并寻求固定点法的不混合矩阵。实验结果证实了它与其他流行的ICA算法相比的效率。