May 04, 2024  
2016-2017 Undergraduate Catalog 
    
2016-2017 Undergraduate Catalog [ARCHIVED CATALOG]

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MATH 465 - Introduction to Artificial Neural Networks

(3.00)
This course gives a systematic introduction to artificial neural networks, which represent a rather new and fundamentally different approach to computing and information processing. Providing parsimonious universal approximators for static and dynamic mappings, synthetic methodologies for building models and/or solutions, abilities to learn from and adapt to environments, and massively parallel computation paradigms, the artificial neural networks have formed a powerful approach to solving nonlinear or complex problems in a broad spectrum of areas including signal speech/image processing, system control, pattern recognition, robotics, financial management, digital communication, etc. This course will cover multi-layer perceptrons, recurrent neural nets, global minimization for training, adaptive and robust neural nets, neural filtering, identification # and control, support vector machines, self-organizing maps, etc.

Course ID: 55260
Consent: No Special Consent Required
Components: Lecture
Requirement Group: You must have completed MATH 221  and MATH 251  and MATH 301  and STAT 451  all with a grade of ‘C’ or better before you can enroll in this course.



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