ORIE 4742
Last Updated
- Schedule of Classes - June 19, 2018 12:09PM EDT
- Course Catalog - March 23, 2018 2:31PM EDT
Classes
ORIE 4742
Course Description
Course information provided by the 2017-2018 Catalog.
This course is about building and understanding machine learning models for scientific and financial applications. It will cover foundational aspects of information theory and probabilistic inference as they relate to model construction and deep learning. Topics include hamming codes, repetition codes, entropy, mutual information, Shannon information, channel capacity, likelihood functions, Bayesian inference, graphical models, and deep neural networks. The section on deep neural networks will consider fully connected, convolutional, recurrent, and LSTM networks, generative adversarial training, and variational autoencoders.
Prerequisites/Corequisites Prerequisite: ORIE 3500 and MATH 2940 or equivalent. Programming experience at the level of CS 2110 or equivalent. Exposure to statistical machine learning at the level of ORIE 4740, ORIE 4741 or equivalent or permission of the instructor.
When Offered Spring.
Regular Academic Session.
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Credits and Grading Basis
3 Credits Graded(Letter grades only)
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Class Number & Section Details
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Meeting Pattern
- TR Hollister Hall 320
Instructors
Wilson, A
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Additional Information
Instruction Mode: In Person
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