DocumentCode :
105410
Title :
Localized Multiple Kernel Learning Via Sample-Wise Alternating Optimization
Author :
Yina Han ; Kunde Yang ; Yuanliang Ma ; Guizhong Liu
Author_Institution :
Sch. of Marine Eng., Northwestern Polytech. Univ., Xi´an, China
Volume :
44
Issue :
1
fYear :
2014
fDate :
Jan. 2014
Firstpage :
137
Lastpage :
148
Abstract :
Our objective is to train support vector machines (SVM)-based localized multiple kernel learning (LMKL), using the alternating optimization between the standard SVM solvers with the local combination of base kernels and the sample-specific kernel weights. The advantage of alternating optimization developed from the state-of-the-art MKL is the SVM-tied overall complexity and the simultaneous optimization on both the kernel weights and the classifier. Unfortunately, in LMKL, the sample-specific character makes the updating of kernel weights a difficult quadratic nonconvex problem. In this paper, starting from a new primal-dual equivalence, the canonical objective on which state-of-the-art methods are based is first decomposed into an ensemble of objectives corresponding to each sample, namely, sample-wise objectives. Then, the associated sample-wise alternating optimization method is conducted, in which the localized kernel weights can be independently obtained by solving their exclusive sample-wise objectives, either linear programming (for l1-norm) or with closed-form solutions (for lp-norm). At test time, the learnt kernel weights for the training data are deployed based on the nearest-neighbor rule. Hence, to guarantee their generality among the test part, we introduce the neighborhood information and incorporate it into the empirical loss when deriving the sample-wise objectives. Extensive experiments on four benchmark machine learning datasets and two real-world computer vision datasets demonstrate the effectiveness and efficiency of the proposed algorithm.
Keywords :
convex programming; learning (artificial intelligence); linear programming; support vector machines; LMKL; SVM; benchmark machine learning datasets; computer vision; linear programming; localized multiple kernel learning; quadratic nonconvex problem; sample wise alternating optimization; state-of-the-art methods; support vector machines; Closed-form solutions; Frequency modulation; Kernel; Optimization; Standards; Support vector machines; Training data; Local learning; multiple kernel learning; support vector machine;
fLanguage :
English
Journal_Title :
Cybernetics, IEEE Transactions on
Publisher :
ieee
ISSN :
2168-2267
Type :
jour
DOI :
10.1109/TCYB.2013.2248710
Filename :
6485021
Link To Document :
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