AI Qualifying Exam Reading List Associated with CS 731 - ADVANCED ARTIFICIAL INTELLIGENCE
For Spring 2009 and Later Exams
Topics
- Probabilistic Graphical Models:
Bayesian networks; inference by variable elimination, junction (clique) trees, Markov chain Monte Carlo; structure and parameter learning in Bayesian networks.
[KOLL09, Chapters 3, 10, 11, 13, 19, 20]
- First-order Logic and Inductive Logic Programming:
Syntax and semantics of first-order logic; unification and resolution; refinement and least general generalization.
[NILS00, Chapters 1-3; LAVR94, Chapters 2, 3, 7]
- Statistical Relational Learning:
Probabilistic relational models; Markov logic networks; view learning.
[GETO01; RICH06; DAVI05]
References
- [DAVI05]
-
Davis, J., Burnside, E., Dutra, I., Page, D., Ramakrishnan, R., Santos Costa, V. and Shavlik, J. (2005).
View Learning for Statistical Relational Learning: With an Application to Mammography.
IJCAI-05.
- [GETO01]
-
Getoor, L., Friedman, N., Koller, D. and Pfeffer, A. (2001).
Learning Probabilistic Relational Models.
In Relational Data Mining, S. Dzeroski and N. Lavrac, Eds, Springer-Verlag.
- [KOLL09]
-
Koller, D. and Friedman, N. (2009, to appear).
Structured Probabilistic Models: Principles and Techniques.
Hardcopy chapter handouts available from David Page, 6743 Medical Sciences Center, 265-6168.
- [LAVR94]
-
Lavrac, N. and Dzeroski, S. (1994).
Inductive Logic Programming: Techniques and Applications.
- [NILS00]
-
Nilsson, U. and Malusynski, J. (2000).
Logic, Programming and Prolog (2nd ed.).
- [RICH06]
-
Richardson, M. and Domingos, P. (2006).
Markov Logic Networks.
Machine Learning, 62, pp. 107-136.