Update Rules for Parameter Estimation in Bayesian Networks
Bauer, Eric, Koller, Daphne, Singer, Yoram
This paper re-examines the problem of parameter estimation in Bayesian networks with missing values and hidden variables from the perspective of recent work in on-line learning [Kivinen & Warmuth, 1994]. We provide a unified framework for parameter estimation that encompasses both on-line learning, where the model is continuously adapted to new data cases as they arrive, and the more traditional batch learning, where a pre-accumulated set of samples is used in a one-time model selection process. In the batch case, our framework encompasses both the gradient projection algorithm and the EM algorithm for Bayesian networks. The framework also leads to new on-line and batch parameter update schemes, including a parameterized version of EM. We provide both empirical and theoretical results indicating that parameterized EM allows faster convergence to the maximum likelihood parameters than does standard EM.
Feb-6-2013
- Country:
- North America > United States > California (0.28)
- Genre:
- Instructional Material (0.68)
- Research Report (0.50)
- Industry:
- Education > Educational Setting > Online (0.95)