A Novel Discriminative Dictionary Pair Learning Constrained by Ordinal Locality for Mixed Frequency Data Classification : Extended abstract

Hong Yu, Qianying Yang, Guoyin Wang, Yongfang Xie
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Abstract

A dilemma faced by classification is that the data is not collected at the same frequency in some applications. We investigate the mixed frequency data in a new way and recognize them as a special style of multi-view data, in which each view data is collected at a different sampling frequency. This paper proposes a discriminative dictionary pair learning method constrained by ordinal locality for mixed frequency data classification (shorted by DPLOL-MF). This method integrates synthesis dictionary and analysis dictionary into a dictionary pair, which not only improves computational cost caused by the ℓ0 or ℓ1-norm constraint, but also can deal with the sampling frequency inconsistency. The DPLOL-MF utilizes a synthesis dictionary to learn class-specified reconstruction information and employs an analysis dictionary to generate coding coefficients by analyzing samples. Particularly, the ordinal locality preserving term is leveraged to constrain the atoms of dictionaries pair to further facilitate the learned dictionary pair to be more discriminative. Besides, we design a specific classification scheme for the inconsistent sample size of mixed frequency data. This paper illustrates a novel idea to solve the classification task of mixed frequency data and the experimental results demonstrate the effectiveness of the proposed method.
一种基于有序局部性约束的混合频率数据分类判别字典对学习:扩展摘要
分类面临的一个难题是,在某些应用程序中,收集数据的频率不同。我们以一种新的方式研究了混合频率数据,并将其视为一种特殊的多视图数据,其中每个视图数据以不同的采样频率采集。提出了一种基于顺序局域约束的判别字典对学习方法,用于混合频率数据分类。该方法将合成字典和分析字典集成到一个字典对中,既改善了由0范数约束和1范数约束引起的计算成本,又能很好地解决采样频率不一致的问题。DPLOL-MF利用合成字典学习指定类的重构信息,利用分析字典通过分析样本生成编码系数。特别地,利用有序局部性保持项来约束字典对的原子,进一步使学习到的字典对具有更强的判别性。此外,针对混频数据样本大小不一致的问题,设计了具体的分类方案。本文提出了一种解决混合频率数据分类问题的新思路,实验结果证明了该方法的有效性。
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