Select the desired Level or Schedule Type to find available classes for the course. |
IS 3050 - Information and Uncertainty |
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.
4.000 Credit hours 4.000 Lecture hours Levels: Undergraduate Schedule Types: Lecture Information Science Department Course Attributes: NUpath Analyzing/Using Data, NUpath Formal/Quant Reasoning, Computer&Info Sci, Crosslisted Course Restrictions: Must be enrolled in one of the following Levels: Undergraduate |
Return to Previous | New Search |