INF2D: Week 10: Rational Decision Making

Welcome to the final week of lectures for Inf2D!

Having studied how to reason about your beliefs in the face of uncertainty, both in a static environment (BNs) and in a dynamic one (DBNs or the special case, HMMs), we are finally in a position to merge those probabilistic inferences with a numeric representation of preferences to show how an agent can make rational decisions: recall the principle of Maximising Expected Utility, which captures an optimal trade off between what the agent prefers and what it thinks it can achieve.

28: Decision Making under Uncertainty

29: Markov Decision Processes

30: Revision Lecture

As always, these lectures will be delivered in person and live streamed. If there is anything you don't understand, then you have several options: 

  1. Post a question on piazza;
  2. Ask a question at the in-person lecture; and/or
  3.  Ask your tutor.

Good luck with your assignments and your exam, and I very much hope you will continue to pursue further AI courses on your degree programme next year.

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