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Adaptive Feature Selection Based on the Most Informative Graph-Based Features

机译:基于基于信息性的基于图形的特征​​的自适应特征选择

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In this paper, we propose a novel method to adaptively select the most informative and least redundant feature subset, which has strong discriminating power with respect to the target label. Unlike most traditional methods using vectorial features, our proposed approach is based on graph-based features and thus incorporates the relationships between feature samples into the feature selection process. To efficiently encapsulate the main characteristics of the graph-based features, we probe each graph structure using the steady state random walk and compute a probability distribution of the walk visiting the vertices. Furthermore, we propose a new information theoretic criterion to measure the joint relevance of different pairwise feature combinations with respect to the target feature, through the Jensen-Shannon divergence measure between the probability distributions from the random walk on different graphs. By solving a quadratic programming problem, we use the new measure to automatically locate the subset of the most informative features, that have both low redundancy and strong discriminating power. Unlike most existing state-of-the-art feature selection methods, the proposed information theoretic feature selection method can accommodate both continuous and discrete target features. Experiments on the problem of P2P lending platforms in China demonstrate the effectiveness of the proposed method.
机译:在本文中,我们提出了一种新的方法来自适应地选择最富有信息的和最冗余特征子集,其具有相对于目标标签具有强的辨别力。与使用矢量特征的最传统方法不同,我们所提出的方法基于基于图形的特征​​,因此将特征样本之间的关系结合到特征选择过程中。为了有效地封装基于图形的特征​​的主要特征,我们使用稳态随机步行探测每个图形结构,并计算散步的概率分布访问顶点。此外,我们提出了一种新的信息理论标准,以测量不同成对特征组合关于目标特征的联合相关性,通过Jensen-Shannon在不同图中的随机行走的概率分布之间的概率分布之间的分发测量来测量。通过解决二次编程问题,我们使用新的度量来自动定位最具信息性功能的子集,这具有低冗余和强辨别电源。与大多数现有的最先进的特征选择方法不同,所提出的信息理论特征选择方法可以适应连续和离散的目标特征。中国P2P贷款平台问题的实验证明了该方法的有效性。

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