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A Bayesian analysis of spherical pattern based on finite Langevin mixture
Affiliation:1. Department of Quantitative Methods & LEFA, IHEC Carthage, Carthage University, 2016 Carthage Présidence, Tunisia;2. BETA, Strasbourg University, 61 Avenue de la Forêt Noire, F-67085 Strasbourg, France;3. Department of Quantitative Methods, Sfax University, Tunisia;1. CAS Key Laboratory of Technology in Geo-spatial Information Processing and Application Systems, University of Science and Technology of China, Hefei, China;2. USTC-Birmingham Joint Research Institute in Intelligent Computation and Its Applications (UBRI), University of Science and Technology of China, Hefei, China;1. Department of Electrical Engineering, COMSATS Institute of Information Technology, Attock, Pakistan;2. Hamdard Institute of Information Technology, Hamdard University, Islamabad, Pakistan;3. Department of Electronic Engineering, International Islamic University, Islamabad, Pakistan;4. Department of Mathematics, Imam Khomeini International University, Qazvin, 34149-16818, Iran;1. Department of Applied Mathematics and Computer Science, Ghent University, Belgium;2. Affectv Limited, London, United Kingdom;3. Department of Computer Science and AI, Research Center on Information and Communications Technology (CITIC-UGR), University of Granada, Spain;4. Department of Information Systems, Faculty of Computing and Information Technology, King Abdulaziz University, Jeddah, Saudi Arabia
Abstract:Parameter estimation is a cornerstone of most fundamental problems of statistical research and practice. In particular, finite mixture models have long been heavily relied on deterministic approaches such as expectation maximization (EM). Despite their successful utilization in wide spectrum of areas, they have inclined to converge to local solutions. An alternative approach is the adoption of Bayesian inference that naturally addresses data uncertainty while ensuring good generalization. To this end, in this paper we propose a fully Bayesian approach for Langevin mixture model estimation and selection via MCMC algorithm based on Gibbs sampler, Metropolis–Hastings and Bayes factors. We demonstrate the effectiveness and the merits of the proposed learning framework through synthetic data and challenging applications involving topic detection and tracking and image categorization.
Keywords:Langevin mixture  Bayesian inference  MCMC  Spherical data  Topic detection and tracking  Image categorization
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