Abstract

Identifying informative biomarkers from a large pool of candidates is the key step for accurate prediction of an individualâs health status. In clinical applications traditional static feature selection methods that flatten the temporal data cannot be directly applied since the patientâs observed clinical condition is a temporal multivariate time series where different variables can capture various stages of temporal change in the patientâs health status. In this study, in order to identify informative genes in temporal microarray data, a margin based feature selection filter is proposed. The proposed method is based on well-established machine learning techniques without any assumptions about the data distribution. The objective function of temporal margin-based feature selection is defined to maximize each subject's temporal margin in its own relevant subspace. In the objective function, the uncertainty in calculating nearest neighbors is taken into account by considering the change in feature weights in each iteration. A fixed-point gradient descent method is proposed to solve the formulated objective function. The experimental results on both synthetic and real data provide evidence that the proposed method can identify more informative features than the alternatives that flatten the temporal data in advance.

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