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Analysis and Design of Digital Control Systems, Fall 2006
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A comprehensive introduction to control system synthesis in which the digital computer ... More

A comprehensive introduction to control system synthesis in which the digital computer plays a major role, reinforced with hands-on laboratory experience. Covers elements of real-time computer architecture; input-output interfaces and data converters; analysis and synthesis of sampled-data control systems using classical and modern (state-space) methods; analysis of trade-offs in control algorithms for computation speed and quantization effects. Laboratory projects emphasize practical digital servo interfacing and implementation problems with timing, noise, nonlinear devices. Less

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Subject:
Engineering
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Activities and Labs
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M.I.T.
Provider Set:
MIT OpenCourseWare
Author:
Trumper, David L.
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Communicating With Data, Summer 2003
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Introduces students to the basic tools in using data to make informed ... More

Introduces students to the basic tools in using data to make informed management decisions. Covers introductory probability, decision analysis, basic statistics, regression, simulation, and linear and nonlinear optimization. Computer spreadsheet exercises and examples drawn from marketing, finance, operations management, and other management functions. Restricted to Sloan Fellows. Less

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Subject:
Finance
Marketing
Statistics and Probability
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Activities and Labs
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Provider:
M.I.T.
Provider Set:
MIT OpenCourseWare
Author:
Carroll, John S.
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Nonlinear Econometric Analysis, Fall 2007
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This course presents micro-econometric models, including large sample theory for estimation and ... More

This course presents micro-econometric models, including large sample theory for estimation and hypothesis testing, generalized method of moments (GMM), estimation of censored and truncated specifications, quantile regression, structural estimation, nonparametric and semiparametric estimation, treatment effects, panel data, bootstrapping, simulation methods, and Bayesian methods. The methods are illustrated with economic applications Less

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Subject:
Economics
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Provider:
M.I.T.
Provider Set:
MIT OpenCourseWare
Author:
Chernozhukov, Victo
Newey, Whitney
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Readings in Optimization, Fall 2003
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Doctoral student seminar covering current topics related to operations research not otherwise ... More

Doctoral student seminar covering current topics related to operations research not otherwise included in the curriculum. In keeping with the tradition of the last twenty-some years, the Readings in Optimization seminar will focus on an advanced topic of interest to a portion of the MIT optimization community: randomized methods for deterministic optimization. In contrast to conventional optimization algorithms whose iterates are computed and analyzed deterministically, randomized methods rely on stochastic processes and random number/vector generation as part of the algorithm and/or its analysis. In the seminar, we will study some very recent papers on this topic, many by MIT faculty, as well as some older papers from the existing literature that are only now receiving attention. Less

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Subject:
Literature
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Full Course
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Provider:
M.I.T.
Provider Set:
MIT OpenCourseWare
Author:
Freund, Robert Michael
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.)310.1( tcejbus ngised enotspac eht dna )150.1 ,140.1 ,130.1( stcejbus ngised aera ... More

.)310.1( tcejbus ngised enotspac eht dna )150.1 ,140.1 ,130.1( stcejbus ngised aera ytlaiceps tneuqesbus eht ni desu si hcihw decudortni si esac ngised egral A .naps efil detcepxe dna ,srotcaf laicos dna cimonoce ,tnemnorivne larutan ,tnemnorivne tliub gnitsixe eht fo noitaredisnoc sa llew sa sehcaorppa lacinhcet snrecnoc ylticilpxe ngised tcejorP .)sdaor dna segdirb ,sgnidliub ,.g.e( seitilicaf tliub no sisahpme na htiw ,sesac ngised lareves sedulcnI .gnireenigne livic ni secitcarp dna seussi ngised sa llew sa ,gnivlos-melborp evitaerc dna ngised gnireenigne fo seuqinhcet dna ,sloot ,yroeht eht ot stneduts secudortnI Less

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