Title :
Variational Inference for Infinite Mixtures of Gaussian Processes With Applications to Traffic Flow Prediction
Author :
Sun, Shiliang ; Xu, Xin
Author_Institution :
Dept. of Comput. Sci. & Technol., East China Normal Univ., Shanghai, China
fDate :
6/1/2011 12:00:00 AM
Abstract :
This paper proposes a new variational approximation for infinite mixtures of Gaussian processes. As an extension of the single Gaussian process regression model, mixtures of Gaussian processes can characterize varying covariances or multimodal data and reduce the deficiency of the computationally cubic complexity of the single Gaussian process model. The infinite mixture of Gaussian processes further integrates a Dirichlet process prior to allowing the number of mixture components to automatically be determined from data. We use variational inference and a truncated stick-breaking representation of the Dirichlet process to approximate the posterior of hidden variables involved in the model. To fix the hyperparameters of the model, the variational EM algorithm and a greedy algorithm are employed. In addition to presenting the variational infinite-mixture model, we apply it to the problem of traffic flow prediction. Experiments with comparisons to other approaches show the effectiveness of the proposed model.
Keywords :
Gaussian processes; expectation-maximisation algorithm; greedy algorithms; inference mechanisms; regression analysis; traffic engineering computing; Dirichlet process; EM algorithm; Gaussian process regression model; greedy algorithm; infinite mixtures; traffic flow prediction; variational inference; Approximation methods; Artificial neural networks; Data models; Gaussian distribution; Gaussian processes; Kernel; Training; Bayesian learning; Dirichlet process; Gaussian process; traffic flow prediction; variational inference;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2010.2093575