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Neural Networks and Applicatio..
Lecture# 13
'Unconstrained Optimization: Gauss-Newton's Method' Video Lecture
Unconstrained Optimization: Gauss-Newton's Method
Course
:
Neural Networks and Applications
Discipline
:
Electronics and Communication Engineering
Faculty
: Prof. Somnath Sengupta
Institute
:
IIT Kharagpur
Unconstrained Optimization: Gauss-Newton's Method
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Neural Networks and Applications (Electronics and Communication Engineering)
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Course
:
Neural Networks and Applications
Discipline
:
Electronics and Communication Engineering
Faculty
: Prof. Somnath Sengupta
Institute
:
IIT Kharagpur
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Linear Least Squares Filters
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