Learning Mixtures of DAG Models
Thiesson, Bo, Meek, Christopher, Chickering, David Maxwell, Heckerman, David
We describe computationally efficient methods for learning mixtures in which each component is a directed acyclic graphical model (mixtures of DAGs or MDAGs). We argue that simple search-and-score algorithms are infeasible for a variety of problems, and introduce a feasible approach in which parameter and structure search is interleaved and expected data is treated as real data. Our approach can be viewed as a combination of (1) the Cheeseman--Stutz asymptotic approximation for model posterior probability and (2) the Expectation--Maximization algorithm. We evaluate our procedure for selecting among MDAGs on synthetic and real examples.
May-16-2015
- Country:
- North America > United States > California > San Mateo County (0.14)
- Genre:
- Research Report (0.64)