Exact inference in BN
Across
- 1. Observed variable values used during inference.
- 4. Situation where one event does not affect another.
- 6. Table storing conditional probabilities in BN (Abbreviation).
- 8. Method used to compute joint distributions in BN (single word form).
- 11. Combined probability distribution over multiple variables.
- 12. The variable for which we want a probability answer.
- 15. The variable for which the probability is sought (single word form).
- 16. Directed connection between nodes in BN.
- 17. Posterior probability distribution for a variable.
Down
- 2. Exact inference becomes difficult due to this in large networks.
- 3. A function mapping variable assignments to probabilities.
- 4. The process of computing probabilities in a Bayesian network.
- 5. Probability given that another event has occurred.
- 7. Probability of a single variable independent of others.
- 9. Represents a variable in BN.
- 10. Type of network that represents probabilistic relationships.
- 13. Numerical value expressing uncertainty.
- 14. Structure of Bayesian network (Abbreviation for Directed Acyclic Graph).
- 18. Algorithm that removes variables to compute probabilities.