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6.041 / 6.431 Probabilistic Systems Analysis and Applied Probability, Fall 2002

Author(s)
Medard, Muriel; Tsitsiklis, John N.; Bertsekas, Dimitri P.; Abou Faycal, Ibrahim C. (Ibrahim Chafik)
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Download6-041Fall-2002/OcwWeb/Electrical-Engineering-and-Computer-Science/6-041Probabilistic-Systems-Analysis-and-Applied--ProbabilityFall2002/CourseHome/index.htm (16.54Kb)
Alternative title
Probabilistic Systems Analysis and Applied Probability
Terms of use
Usage Restrictions: This site (c) Massachusetts Institute of Technology 2003. Content within individual courses is (c) by the individual authors unless otherwise noted. The Massachusetts Institute of Technology is providing this Work (as defined below) under the terms of this Creative Commons public license ("CCPL" or "license"). The Work is protected by copyright and/or other applicable law. Any use of the work other than as authorized under this license is prohibited. By exercising any of the rights to the Work provided here, You (as defined below) accept and agree to be bound by the terms of this license. The Licensor, the Massachusetts Institute of Technology, grants You the rights contained here in consideration of Your acceptance of such terms and conditions.
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Abstract
Modeling, quantification, and analysis of uncertainty. Formulation and solution in sample space. Random variables, transform techniques, simple random processes and their probability distributions, Markov processes, limit theorems, and elements of statistical inference. Interpretations, applications, and lecture demonstrations. Meets with graduate subject 6.431, but assignments differ. From the course home page: Course Description This course is offered both to undergraduates (6.041) and graduates (6.431), but the assignments differ. 6.041/6.431 introduces students to the modeling, quantification, and analysis of uncertainty. Topics covered include: formulation and solution in sample space, random variables, transform techniques, simple random processes and their probability distributions, Markov processes, limit theorems, and elements of statistical inference. The materials are largely based on the textbook, Dynamic Programming and Optimal Control, written by Professors John Tsitsiklis and Dimitri Bertsekas (see http://www.athenasc.com/probbook.html for more information).
Date issued
2002-12
URI
http://hdl.handle.net/1721.1/35860
Department
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer Science
Other identifiers
6.041-Fall2002
local: 6.041
local: 6.431
local: IMSCP-MD5-5bad3c0f3b163a61a1938e3597dd4cb2
Keywords
probabilistic systems, probabilistic systems analysis, applied probability, uncertainty, uncertainty modeling, uncertainty quantification, analysis of uncertainty, uncertainty analysis, sample space, random variables, transform techniques, simple random processes, probability distribution, Markov process, limit theorem, statistical inference, 6.041, 6.431, Probabilities

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