Bootstrap estimation and model selection for multivariate normal mixtures using parallel computing with graphics processing units |
| |
Authors: | Masanari Iida Yoichi Miyata |
| |
Affiliation: | 1. Graduate School of Engineering, Tokyo University of Science, Niijuku, Katsushika, Tokyo, Japan;2. Faculty of Economics, Takasaki City University of Economics, Kaminamie, Takasaki, Gunma, Japan |
| |
Abstract: | In applications of multivariate finite mixture models, estimating the number of unknown components is often difficult. We propose a bootstrap information criterion, whereby we calculate the expected log-likelihood at maximum a posteriori estimates for model selection. Accurate estimation using the bootstrap requires a large number of bootstrap replicates. We accelerate this computation by employing parallel processing with graphics processing units (GPUs) on the Compute Unified Device Architecture (CUDA) platform. We conducted a runtime comparison of CUDA algorithms between implementation on the GPU and that on a CPU. The results showed significant performance gains in the proposed CUDA algorithms over multithread CPUs. |
| |
Keywords: | Bootstrap method EM algorithm Finite mixture model GPGPU Information criteria |
|
|