Graph feature selection for dementia diagnosis

Date

2016

Authors

Zhu, Y.
Zhong, Z.
Cao, W.
Cheng, D.

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Journal article

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Neurocomputing, 2016; 195:19-22

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Abstract

This paper proposes a graph feature selection method for dementia diagnosis, by adding the information inherent in the observations into a sparse multi-task learning framework. Specifically, this paper first defines two relations (i.e., the feature-feature relation and the sample-sample relation, respectively) based on the prior knowledge in the data. The feature-feature selection enforces the similarity relationship between features to be preserved in the coefficient matrix while the sample-sample relation is designed to preserve the relation between samples invariant in the predicted space. Then we embed these two kinds of relations into a multi-task learning framework (i.e., a least square loss function plus an l2-norm regularization term) to conduct feature selection. Furthermore, we feed the reduced data into Support Vector Machine (SVM) for conducting the identification of Alzheimer's Disease (AD). Finally, the experimental results on a subset of the Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset showed the effectiveness of the proposed method in terms of classification accuracy, by comparing with the state-of-the-art methods, including k Nearest Neighbor (kNN), ridge regression, SVM, and so on.

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Copyright 2016 Elsevier

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