Affiliation:
1. University of Science and Technology of China, Hefei, Anhui, China
2. University of Amsterdam, Amsterdam, the Netherlands
3. Southern University of Science and Technology, Shenzhen, Guangdong, China
Abstract
Sparse Bayesian learning is a state-of-the-art supervised learning algorithm that can choose a subset of relevant samples from the input data and make reliable probabilistic predictions. However, in the presence of high-dimensional data with irrelevant features, traditional sparse Bayesian classifiers suffer from performance degradation and low efficiency due to the incapability of eliminating irrelevant features. To tackle this problem, we propose a novel sparse Bayesian embedded feature selection algorithm that adopts truncated Gaussian distributions as both sample and feature priors. The proposed algorithm, called probabilistic feature selection and classification vector machine (PFCVM
LP
) is able to simultaneously select relevant features and samples for classification tasks. In order to derive the analytical solutions, Laplace approximation is applied to compute approximate posteriors and marginal likelihoods. Finally, parameters and hyperparameters are optimized by the type-II maximum likelihood method. Experiments on three datasets validate the performance of PFCVM
LP
along two dimensions: classification performance and effectiveness for feature selection. Finally, we analyze the generalization performance and derive a generalization error bound for PFCVM
LP
. By tightening the bound, the importance of feature selection is demonstrated.
Funder
the Microsoft Research Ph.D. program
the Google Faculty Research Awards program
the Criteo Faculty Research Award program
the Netherlands Institute for Sound and Vision, and the Netherlands Organisation for Scientific Research
Science and Technology Innovation Committee Foundation of Shenzhen
European Community's Seventh Framework Programme
National Natural Science Foundation of China
Ahold Delhaize, Amsterdam Data Science, and the Bloomberg Research Grant program
the China Scholarship Council
Publisher
Association for Computing Machinery (ACM)
Cited by
33 articles.
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