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Generating feature spaces for linear algorithms with regularized sparse kernel slow feature analysis

机译:使用正则稀疏内核慢特征分析为线性算法生成特征空间

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摘要

Without non-linear basis functions many problems can not be solved by linear algorithms. This article proposes a method to automatically construct such basis functions with slow feature analysis (SFA). Non-linear optimization of this unsupervised learning method generates an orthogonal basis on the unknown latent space for a given time series. In contrast to methods like PCA, SFA is thus well suited for techniques that make direct use of the latent space. Real-world time series can be complex, and current SFA algorithms are either not powerful enough or tend to over-fit. We make use of the kernel trick in combination with sparsification to develop a kernelized SFA algorithm which provides a powerful function class for large data sets. Sparsity is achieved by a novel matching pursuit approach that can be applied to other tasks as well. For small data sets, however, the kernel SFA approach leads to over-fitting and numerical instabilities. To enforce a stable solution, we introduce regularization to the SFA objective. We hypothesize that our algorithm generates a feature space that resembles a Fourier basis in the unknown space of latent variables underlying a given real-world time series. We evaluate this hypothesis at the example of a vowel classification task in comparison to sparse kernel PCA. Our results show excellent classification accuracy and demonstrate the superiority of kernel SFA over kernel PCA in encoding latent variables.
机译:如果没有非线性基函数,则线性算法无法解决许多问题。本文提出了一种利用慢特征分析(SFA)自动构造此类基础函数的方法。对于给定的时间序列,这种无监督学习方法的非线性优化会在未知潜在空间上生成正交基础。与PCA之类的方法相比,SFA因此非常适合直接利用潜在空间的技术。现实世界中的时间序列可能很复杂,并且当前的SFA算法不够强大或趋于过度拟合。我们将内核技巧与稀疏化结合使用,开发了内核化SFA算法,该算法为大型数据集提供了功能强大的函数类。稀疏性是通过一种新颖的匹配追踪方法实现的,该方法也可以应用于其他任务。但是,对于小型数据集,内核SFA方法会导致过度拟合和数值不稳定。为了实施稳定的解决方案,我们在SFA目标中引入了正则化。我们假设我们的算法在给定的真实世界时间序列基础上的潜在变量的未知空间中生成类似于傅立叶基础的特征空间。与稀疏内核PCA相比,我们在元音分类任务示例中评估了该假设。我们的结果显示出极好的分类精度,并证明了在编码潜在变量方面,内核SFA优于内核PCA。

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