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Joint Markov Blankets in Feature Sets Extracted from Wavelet Packet Decompositions

机译:从小波包分解中提取的特征集中的联合马尔可夫毯

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摘要

Since two decades, wavelet packet decompositions have been shown effective as a generic approach to feature extraction from time series and images for the prediction of a target variable. Redundancies exist between the wavelet coefficients and between the energy features that are derived from the wavelet coefficients. We assess these redundancies in wavelet packet decompositions by means of the Markov blanket filtering theory. We introduce the concept of joint Markov blankets. It is shown that joint Markov blankets are a natural extension of Markov blankets, which are defined for single features, to a set of features. We show that these joint Markov blankets exist in feature sets consisting of the wavelet coefficients. Furthermore, we prove that wavelet energy features from the highest frequency resolution level form a joint Markov blanket for all other wavelet energy features. The joint Markov blanket theory indicates that one can expect an increase of classification accuracy with the increase of the frequency resolution level of the energy features.
机译:自二十年来以来,小波包分解已被证明是一种有效的通用方法,可以从时间序列和图像中提取特征以预测目标变量。小波系数之间以及从小波系数导出的能量特征之间存在冗余。我们利用马尔可夫毯式过滤理论评估小波包分解中的这些冗余。我们介绍了联合马尔可夫毯子的概念。结果表明,联合马尔可夫毯是对单个特征定义的马尔可夫毯到一组特征的自然延伸。我们证明了这些联合马尔可夫毯存在于由小波系数组成的特征集中。此外,我们证明了来自最高频率分辨率级别的小波能量特征构成了所有其他小波能量特征的联合马尔可夫毯。联合马尔可夫毯式理论表明,随着能量特征频率分辨率水平的提高,可以期待分类精度的提高。

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