This document discusses conjugate direction methods for optimization. Specifically, it introduces the conjugate gradient method, which is an algorithm for finding the minimum of a function. The document was prepared by Shaheen Sardar, a professor at Hanyang University in South Korea. It provides references for further reading on conjugate gradient methods and linear/nonlinear programming.
24. References
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2. David G. Luenberger and Yinyu Ye. Linear and
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2007.http://www.cs.iastate.edu/~cs577/handouts/c
onjugate-gradient.pdf