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引用次数: 52

摘要

自动微分法是一种精确、高效、方便的计算函数导数的方法。它的前向模式实现非常简单,即使扩展到计算所有的高阶导数也是如此。高维的情况也得到了解决,尽管更加复杂。本文在流形微积分的极其一般和优雅的设置下,给出了高维、高阶、前向模AD的一种实现,并从一个简单而精确的规范中推导出了该实现。为了激励和发现实施,本文提出了“独立于实施之外的AD是什么意思?”答案出现在对函数及其导数进行自然采样的形式中。自动微分和链式法则一起从这个自然条件中产生。从一阶AD过渡到高阶AD对应于对所有导数而不是一个导数进行采样。接下来,将设置扩展到任意向量空间,其中导数值是线性映射。AD规范适应这种优雅且非常通用的设置,这甚至简化了开发。
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Beautiful differentiation
Automatic differentiation (AD) is a precise, efficient, and convenient method for computing derivatives of functions. Its forward-mode implementation can be quite simple even when extended to compute all of the higher-order derivatives as well. The higher-dimensional case has also been tackled, though with extra complexity. This paper develops an implementation of higher-dimensional, higher-order, forward-mode AD in the extremely general and elegant setting of calculus on manifolds and derives that implementation from a simple and precise specification. In order to motivate and discover the implementation, the paper poses the question "What does AD mean, independently of implementation?" An answer arises in the form of naturality of sampling a function and its derivative. Automatic differentiation flows out of this naturality condition, together with the chain rule. Graduating from first-order to higher-order AD corresponds to sampling all derivatives instead of just one. Next, the setting is expanded to arbitrary vector spaces, in which derivative values are linear maps. The specification of AD adapts to this elegant and very general setting, which even simplifies the development.
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