DocumentCode :
3407234
Title :
Learning kernels for variants of normalized cuts: Convex relaxations and applications
Author :
Mukherjee, Lopamudra ; Singh, Vikas ; Peng, Junbiao ; Hinrichs, Chris
Author_Institution :
Univ. of Wisconsin-Whitewater, Whitewater, WI, USA
fYear :
2010
fDate :
13-18 June 2010
Firstpage :
3145
Lastpage :
3152
Abstract :
We propose a new algorithm for learning kernels for variants of the Normalized Cuts (NCuts) objective - i.e., given a set of training examples with known partitions, how should a basis set of similarity functions be combined to induce NCuts favorable distributions. Such a procedure facilitates design of good affinity matrices. It also helps assess the importance of different feature types for discrimination. Rather than formulating the learning problem in terms of the spectral relaxation, the alternative we pursue here is to work in the original discrete setting (i.e., the relaxation occurs much later). We show that this strategy is useful - while the initial specification seems rather difficult to optimize efficiently, a set of manipulations reveal a related model which permits a nice SDP relaxation. A salient feature of our model is that the eventual problem size is only a function of the number of input kernels and not the training set size. This relaxation also allows strong optimality guarantees, if certain conditions are satisfied. We show that the sub-kernel weights obtained provide a complementary approach for MKL based methods. Our experiments on Cal-tech101 and ADNI (a brain imaging dataset) show that the quality of solutions is competitive with the state-of-the-art.
Keywords :
brain models; learning (artificial intelligence); matrix algebra; medical image processing; relaxation theory; ADNI; Cal-tech101; MKL based methods; NCuts; SDP relaxation; affinity matrices; brain imaging dataset; convex relaxations; learning kernels; normalized cuts; similarity functions; spectral relaxation; subkernel weights; Brain; Costs; Image analysis; Kernel; Laplace equations; Partitioning algorithms; Polynomials; Stability; Support vector machines; Unsupervised learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2010 IEEE Conference on
Conference_Location :
San Francisco, CA
ISSN :
1063-6919
Print_ISBN :
978-1-4244-6984-0
Type :
conf
DOI :
10.1109/CVPR.2010.5540076
Filename :
5540076
Link To Document :
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