Algorithmic Differentiation of Functional Programs. Siskind, J M & Pearlmutter, B A autodiff.org. abstract bibtex Abstract We present a synthesis of the differential calculus and the lambda calculus. Two novel constructs allow AD operators to be formulated as user-level higher-order functions. Formulating AD within the framework of a functionalprogramming language makes for.
@Article{Siskind,
author = {Siskind, J M and Pearlmutter, B A},
title = {Algorithmic Differentiation of Functional Programs},
journal = {autodiff.org},
volume = {},
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pages = {},
year = {},
abstract = {Abstract We present a synthesis of the differential calculus and the lambda calculus. Two novel constructs allow AD operators to be formulated as user-level higher-order functions. Formulating AD within the framework of a functionalprogramming language makes for.},
location = {},
keywords = {}}
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