From Absolute Logic to Probabilistic Reasoning
Understanding how AI reasons under uncertainty and incomplete knowledgeThis lecture introduces a fundamental paradigm shift in AI: moving from formal logic's absolute certainty to probabilistic reasoning under uncertainty. We explore why real-world AI systems need probability theory, covering Bayesian reasoning, conditional probability, and the philosophical contrast between two views of intelligence.
Historically, humanity has viewed intelligence from two fundamentally different perspectives:
"From proving truths to estimating truths" - This lecture explores why modern AI embraces uncertainty not as a weakness, but as a more realistic model of human intelligence and the real world.
Quick reference guide covering probability axioms, Bayes' rule, distributions, and key formulas. Perfect for studying and quick lookups!
Complete lecture presentation (32 slides) covering reasoning under uncertainty, probability theory, Bayes' Rule, and Bayesian inference. Perfect for reviewing lecture content!
Visualize and interact with probability concepts and Bayesian inference in real-time.
Work through these exercises to master probability and Bayesian reasoning.
Practice computing probabilities, applying axioms, and working with sample spaces.
Apply Bayes' theorem to medical diagnosis, spam detection, and other real scenarios.
Identify independent variables and apply conditional independence to simplify models.
Complete step-by-step Bayesian inference with prior beliefs and evidence updates.