Apr 19, 2024  
Rensselaer Catalog 2009-2010 
    
Rensselaer Catalog 2009-2010 [Archived Catalog]

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CSCI 4100 - Machine and Computational Learning


Introduction to the theory, algorithms, and applications of automated learning (supervised, reinforcement, and unsupervised), how much information and computation are needed to learn a task, and how to accomplish it. Emphasis will be given to unifying approaches coming from statistics, function approximation, optimization and pattern recognition. Topics include: Decision Trees, Neural Networks, RBF’s, Bayesian Learning, PAC Learning, Support Vector Machines, Gaussian processes, Hidden Markov Models.

Prerequisites/Corequisites: Prerequisites: familiarity with probability, linear algebra, and calculus.

When Offered: Offered on availability of instructor.



Credit Hours: 4



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