Title :
Sparse multinomial logistic regression: fast algorithms and generalization bounds
Author :
Krishnapuram, Balaji ; Carin, Lawrence ; Figueiredo, Mário A T ; Hartemink, Alexander J.
Author_Institution :
Comput. Aided Diagnosis & Therapy Group, Siemens Medical Solutions, PA, USA
fDate :
6/1/2005 12:00:00 AM
Abstract :
Recently developed methods for learning sparse classifiers are among the state-of-the-art in supervised learning. These methods learn classifiers that incorporate weighted sums of basis functions with sparsity-promoting priors encouraging the weight estimates to be either significantly large or exactly zero. From a learning-theoretic perspective, these methods control the capacity of the learned classifier by minimizing the number of basis functions used, resulting in better generalization. This paper presents three contributions related to learning sparse classifiers. First, we introduce a true multiclass formulation based on multinomial logistic regression. Second, by combining a bound optimization approach with a component-wise update procedure, we derive fast exact algorithms for learning sparse multiclass classifiers that scale favorably in both the number of training samples and the feature dimensionality, making them applicable even to large data sets in high-dimensional feature spaces. To the best of our knowledge, these are the first algorithms to perform exact multinomial logistic regression with a sparsity-promoting prior. Third, we show how nontrivial generalization bounds can be derived for our classifier in the binary case. Experimental results on standard benchmark data sets attest to the accuracy, sparsity, and efficiency of the proposed methods.
Keywords :
learning (artificial intelligence); optimisation; pattern classification; regression analysis; bound optimization; feature dimensionality; learning sparse classifiers; sparse multinomial logistic regression; supervised learning; Bayesian methods; Classification algorithms; Inference algorithms; Kernel; Laplace equations; Logistics; Supervised learning; Support vector machine classification; Support vector machines; Training data; Bayesian inference; Index Terms- Supervised learning; bound optimization; classification; expectation maximization (EM); generalization bounds.; learning theory; multinomial logistic regression; sparsity; Algorithms; Artificial Intelligence; Cluster Analysis; Computer Simulation; Information Storage and Retrieval; Models, Biological; Models, Statistical; Pattern Recognition, Automated; Regression Analysis;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2005.127