DocumentCode :
177394
Title :
Metric learning with rank and sparsity constraints
Author :
Bah, Bubacarr ; Becker, Steffen ; Cevher, Volkan ; Gozcu, Baron
Author_Institution :
Lab. for Inf. & Inference Syst., EPFL, Lausanne, Switzerland
fYear :
2014
fDate :
4-9 May 2014
Firstpage :
21
Lastpage :
25
Abstract :
Choosing a distance preserving measure or metric is fundamental to many signal processing algorithms, such as k-means, nearest neighbor searches, hashing, and compressive sensing. In virtually all these applications, the efficiency of the signal processing algorithm depends on how fast we can evaluate the learned metric. Moreover, storing the chosen metric can create space bottlenecks in high dimensional signal processing problems. As a result, we consider data dependent metric learning with rank as well as sparsity constraints. We propose a new non-convex algorithm and empirically demonstrate its performance on various datasets; a side benefit is that it is also much faster than existing approaches. The added sparsity constraints significantly improve the speed of multiplying with the learned metrics without sacrificing their quality.
Keywords :
compressed sensing; concave programming; gradient methods; learning (artificial intelligence); compressive sensing; data dependent metric learning; distance preserving metric; hashing algorithms; high dimensional signal processing problems; k-means algorithms; nearest neighbor searches; nonconvex algorithm; rank constraints; signal processing algorithms; sparsity constraints; Acceleration; Gradient methods; Measurement; Principal component analysis; Signal processing algorithms; Sparse matrices; Vectors; Metric learning; Nesterov acceleration; low-rank; proximal gradient methods; sparsity;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2014 IEEE International Conference on
Conference_Location :
Florence
Type :
conf
DOI :
10.1109/ICASSP.2014.6853550
Filename :
6853550
Link To Document :
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