Philosophy
PHIL 3050: Information and Uncertainty
Lecture - 4 credits
ND
EI
IC
FQ
SI
AD
DD
ER
WF
WD
WI
EX
CE
- Introduces the foundations of probabilistic inference, information theory, and their uses for drawing conclusions from noisy data.
- Applications include diagnosing diseases with inconclusive medical tests, locating autonomous vehicles when sensors are imperfect, and how best to make inferences with incomplete or partial information.
- Central topics include distinguishing deductive and probabilistic inference, philosophical interpretations of probability, fundamental justifications for the rules of probability, and key concepts of information theory.
- Introduces analytic and mathematical methods of analysis in these cases and contemporary computational (i.e., programming) techniques for implementing and applying theories of information and probabilistic inference.
Introduces the foundations of probabilistic inference, information theory, and their uses for drawing conclusions from noisy data. Show more.