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--- title: "SU-CS361: Derivatives, Bracketing, Descent, and Approximation Index" type: concept related: [Newton S Method] source: https://www.jemoka.com/posts/kbhderivatives_descent_and_approximation/ confidence: high status: active --- Formal Formulation of Optimization constraint types of conditions FONC and SONC Derivatives Directional Derivatives numerical methods Finite-Difference Method Forward Difference Central Difference Backward Difference Complex-Difference Method exact methods: autodiff Forward Accumulation cooool: Dual Number Method Bracketing (one dimensional optimization schemes) Fibonacci Search Quadratic Search Shubert-Piyavskill Method Descent Direction Iteration Line Search Approximate Line Search Sufficient Decrease Condition Curvature Condition Trust Region Methods First-Order Methods good ol gradient descent Conjugate Gradient Hyper-gradient Descent Second-Order Methods Newton’s Method or approximate it using Secant Method Direct Methods Cyclic Coordinate Search Accelerated Coordinate Search Powell’s Method Hooke-Jeeves Search Generalized Pattern Search opportunistic search dynamic ordering Nelder-Mead Simplex Method