Title :
Bayesian Estimation of the von-Mises Fisher Mixture Model with Variational Inference
Author :
Taghia, Jalil ; Zhanyu Ma ; Leijon, Arne
Author_Institution :
Commun. Theor. Lab., KTH R. Inst. of Technol., Stockholm, Sweden
Abstract :
This paper addresses the Bayesian estimation of the von-Mises Fisher (vMF) mixture model with variational inference (VI). The learning task in VI consists of optimization of the variational posterior distribution. However, the exact solution by VI does not lead to an analytically tractable solution due to the evaluation of intractable moments involving functional forms of the Bessel function in their arguments. To derive a closed-form solution, we further lower bound the evidence lower bound where the bound is tight at one point in the parameter distribution. While having the value of the bound guaranteed to increase during maximization, we derive an analytically tractable approximation to the posterior distribution which has the same functional form as the assigned prior distribution. The proposed algorithm requires no iterative numerical calculation in the re-estimation procedure, and it can potentially determine the model complexity and avoid the over-fitting problem associated with conventional approaches based on the expectation maximization. Moreover, we derive an analytically tractable approximation to the predictive density of the Bayesian mixture model of vMF distributions. The performance of the proposed approach is verified by experiments with both synthetic and real data.
Keywords :
Bayes methods; Bessel functions; approximation theory; computational complexity; data analysis; inference mechanisms; learning (artificial intelligence); mixture models; optimisation; statistical distributions; variational techniques; Bayesian estimation; Bessel function; VI procedure; analytically tractable approximation; closed-form solution; functional forms; intractable moment evaluation; learning task; lower bound; model complexity; parameter distribution; performance verification; predictive density; re-estimation procedure; real data; synthetic data; tight bound; vMF distributions; vMF mixture model; variational inference; variational posterior distribution optimization; von-Mises Fisher mixture model; Approximation methods; Bayes methods; Computational modeling; Data models; Numerical models; Optimization; Vectors; Bayesian estimation; directional distribution; gene expressions; mixture model; predictive density; speaker identification; variational inference; von-Mises Fisher distribution;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2014.2306426