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A reproducing kernel Hilbert space formulation of the principle of relevant information

机译:相关信息原理的再现核希尔伯特空间公式

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Information theory allows one to pose problems in principled terms that very often have direct interpretation. For instance, capturing the structure based on statistical regularities of data can be thought of as a problem of relevance determination, that is, information preservation under limited resources. The principle of relevant information is an information theoretic objective function that attempts to capture the statistical regularities through entropy minimization under an information preservation constraint. Here, we employ an information theoretic reproducing kernel Hilbert space (RKHS) formulation, which can overcome some of the limitations of previous approaches based on Parzen density estimation. Results are competitive with kernel-based feature extractors such as kernel PCA. Moreover, the proposed framework goes further on the relation between information theoretic learning, kernel methods and support vector algorithms.
机译:信息论允许人们以原则性的术语提出问题,而这些问题通常具有直接的解释。例如,基于数据的统计规律性来捕获结构可以被认为是相关性确定的问题,即,在有限资源下的信息保存。相关信息的原理是一种信息理论目标函数,它试图在信息保存约束下通过最小化熵来捕获统计规律。在这里,我们采用信息理论再现核希尔伯特空间(RKHS)公式,它可以克服基于Parzen密度估计的先前方法的某些局限性。结果与基于内核的特征提取器(例如内核PCA)相比具有竞争力。此外,提出的框架进一步研究了信息理论学习,内核方法和支持向量算法之间的关系。

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