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A Brief Survey of Modern Optimization for Statisticians

机译:统计学家现代优化概论

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摘要

Modern computational statistics is turning more and more to high-dimensional optimization to handle the deluge of big data. Once a model is formulated, its parameters can be estimated by optimization. Because model parsimony is important, models routinely include nondifferentiable penalty terms such as the lasso. This sober reality complicates minimization and maximization. Our broad survey stresses a few important principles in algorithm design. Rather than view these principles in isolation, it is more productive to mix and match them. A few well chosen examples illustrate this point. Algorithm derivation is also emphasized, and theory is downplayed, particularly the abstractions of the convex calculus. Thus, our survey should be useful and accessible to a broad audience.
机译:现代计算统计越来越多地转向高维优化来处理大量数据。建立模型后,即可通过优化估算其参数。由于模型简约性很重要,因此模型通常会包含不可微分的惩罚项,例如套索。这种清醒的现实使最小化和最大化变得复杂。我们的广泛调查强调了算法设计中的一些重要原则。与其孤立地看待这些原理,不如将它们混合和匹配起来会更有效率。一些精选的例子说明了这一点。还强调算法推导,并且不重视理论,尤其是凸演算的抽象。因此,我们的调查应该是有用的,并为广大受众所接受。

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