کد مقاله | کد نشریه | سال انتشار | مقاله انگلیسی | نسخه تمام متن |
---|---|---|---|---|
503994 | 864258 | 2015 | 7 صفحه PDF | دانلود رایگان |

• Application of k-support norm regularization to fMRI analysis.
• Experimental validation in cocaine addiction tasks.
• Classification and regression experiments, including challenging cross-subject tasks.
• Our results support the generalizability of the I-RISA model of cocaine addiction.
We explore various sparse regularization techniques for analyzing fMRI data, such as the ℓ1 norm (often called LASSO in the context of a squared loss function), elastic net, and the recently introduced k-support norm. Employing sparsity regularization allows us to handle the curse of dimensionality, a problem commonly found in fMRI analysis. In this work we consider sparse regularization in both the regression and classification settings. We perform experiments on fMRI scans from cocaine-addicted as well as healthy control subjects. We show that in many cases, use of the k-support norm leads to better predictive performance, solution stability, and interpretability as compared to other standard approaches. We additionally analyze the advantages of using the absolute loss function versus the standard squared loss which leads to significantly better predictive performance for the regularization methods tested in almost all cases. Our results support the use of the k-support norm for fMRI analysis and on the clinical side, the generalizability of the I-RISA model of cocaine addiction.
Journal: Computerized Medical Imaging and Graphics - Volume 46, Part 1, December 2015, Pages 40–46