|
16
|
Graphical Models for Probabilistic and Causal Reasoning
– Judea Pearl
- 1997
|
|
393
|
Dynamic Bayesian Networks: Representation, Inference and Learning
– Kevin Patrick Murphy
- 2002
|
|
17
|
A `Microscopic' Study of Minimum Entropy Search in Learning Decomposable Markov Networks
– Y. Xiang, S.K.M. Wong, N. Cercone
- 1995
|
|
3
|
Learning Bayesian Networks for Solving Real-World Problems
– Moninder Singh
- 1998
|
|
214
|
Operations for Learning with Graphical Models
– Wray L. Buntine
- 1994
|
|
4
|
Decision Analytic Networks in Artificial Intelligence
– Izhar Matzkevich, Bruce Abramson
- 1995
|
|
164
|
Learning Bayesian belief networks: An approach based on the MDL principle
– Wai Lam, Fahiem Bacchus
- 1994
|
|
|
Bayesian AI Tutorial
– Kevin B. Korb, Ann E. Nicholson
|
|
24
|
A Survey of Algorithms for Real-Time Bayesian Network Inference
– Haipeng Guo, William Hsu
- 2002
|
|
|
Massively Parallel Probabilistic Reasoning with Boltzmann Machines
– Petri MyllymÄki, Petri Myllym Äki
- 1999
|
|
|
A guide to the literature on learning probabilistic . . .
– Wray Buntine
|
|
156
|
A Guide to the Literature on Learning Probabilistic Networks From Data
– Wray Buntine
- 1996
|
|
31
|
Learning Bayesian Networks from Data: An Efficient Approach Based on Information Theory
– Jie Cheng, David Bell, Weiru Liu
- 1997
|
|
67
|
Learning Bayesian Networks from Data: An Information-Theory Based Approach
– Jie Cheng, Russell Greiner, Jonathan Kelly, David Bell, Weiru Liu
|
|
27
|
Learning Probabilistic Networks
– Paul J Krause
- 1998
|
|
6
|
Flexible Policy Construction by Information Refinement
– Michael C. Horsch
- 1998
|
|
710
|
A tutorial on learning with Bayesian networks
– David Heckerman
- 1995
|
|
15
|
A Bayesian Analysis of Simulation Algorithms for Inference in Belief Networks,
– Paul Dagum, Eric Horvitz
- 1993
|
|
203
|
Bayesian Networks Without Tears
– Eugene Charniak
- 1991
|