Liu, ChengChengLiuLiang, YongYongLiangLuan, Xin-ZeXin-ZeLuanProf. LEUNG Kwong SakChan, Tak-MingTak-MingChanXu, Zong-BenZong-BenXuZhang, HaiHaiZhang2023-03-172023-03-172012Proceedings - 2012 International Conference on Biomedical Engineering and Biotechnology, iCBEB 2012 6245043, pp. 8-11978-076954706-0http://hdl.handle.net/20.500.11861/7519The special importance of L1/2 regularization has been recognized in recent studies on sparsity problems, particularly, on feature selection. The L1/2 regularization is nonconvex optimization problem, it is difficult in general to has a efficient algorithm to solutions. The direct path seeking method can produce solutions that closely approximate those for any convex loss function and nonconvex constraints. The improve path seeking methods provide us an effect way to solve the problem of L1/2 regularization with nonconvex penalty. In this paper, we investigate a improve direct path seeking algorithm to solve the L1/2 regularization. This method adopts initial ordinary regression coefficients as warm start for first step increment, it is significantly faster than ordinary path seeking algorithm. We demonstrate its performance of feature selection on several simulated and real data sets. © 2012 IEEE.enLoss FunctionOptimization ProblemSimulated DataSparsityInequality ConstraintsIncremental StepsPerform Feature SelectionNon-Convex ConstraintsWarm StartProstate CancerPrediction ErrorVariable SelectionRegularization MethodCombinatorial Optimization ProblemLasso MethodA improve direct path seeking algorithm for L 1/2 regularization, with application to biological feature selectionConference Paper10.1109/iCBEB.2012.28