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方法族Process / pipelineProcess / pipelineProcess / pipeline
起源年份200619571951 (SGD); 2014 (Adam)
提出者Jorge Nocedal & Stephen WrightRichard Bellman
类型Continuous mathematical optimizationExact combinatorial optimization via recursive decompositionGradient-based iterative optimization
开创性文献Nocedal, J., & Wright, S. J. (2006). Numerical Optimization (2nd ed.). Springer. ISBN: 978-0-387-30303-1Bellman, R. (1957). Dynamic Programming. Princeton University Press. ISBN: 978-0-691-07951-6Robbins, H. & Monro, S. (1951). A Stochastic Approximation Method. Annals of Mathematical Statistics, 22(3), 400-407. DOI ↗
别名NLP optimization, Constrained nonlinear optimization, Smooth optimization, Doğrusal olmayan programlamaDP, Bellman's Principle of Optimality, Recursive Optimization, Dinamik ProgramlamaStokastik Optimizasyon (SGD & Varyantları), stochastic gradient descent, SGD, Adam
相关333
摘要Nonlinear programming (NLP) is a branch of mathematical optimization concerned with problems in which the objective function or at least one constraint is nonlinear. Formalized comprehensively by Jorge Nocedal and Stephen Wright in their seminal 2006 text, NLP encompasses gradient-based algorithms — including sequential quadratic programming (SQP), interior-point methods, and quasi-Newton approaches — for finding locally or globally optimal solutions to continuous decision problems arising across engineering, economics, and the physical sciences.Dynamic Programming (DP) is an exact optimization technique introduced by Richard Bellman in 1957 for solving multi-stage decision problems. It decomposes a complex problem into simpler, overlapping subproblems, solves each subproblem once, and stores the results to avoid redundant computation. Grounded in the Principle of Optimality, DP guarantees globally optimal solutions whenever the problem exhibits overlapping subproblems and optimal substructure.Stochastic optimization is a family of iterative methods that minimize an objective function by computing gradients on randomly sampled subsets of data — mini-batches — rather than on the entire dataset at once. Pioneered by Robbins and Monro in 1951 as stochastic approximation, the approach became the standard engine for training large-scale machine-learning models through variants such as SGD with momentum, AdaGrad, RMSProp, and Adam.
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ScholarGate方法对比: Nonlinear Programming · Dynamic Programming · Stochastic Optimization. 于 2026-06-15 检索自 https://scholargate.app/zh/compare