Backpropagation in the Simply Typed Lambda-calculus with Linear Negation
Backpropagation is a classic automatic differentiation algorithm computing the gradient of functions specified by a certain class of simple, first-order programs, called computational graphs. It is a fundamental tool in several fields, most notably machine learning, where it is the key for efficiently training (deep) neural networks. Recent years have witnessed the quick growth of a research field called differentiable programming, the aim of which is to express computational graphs more synthetically and modularly by resorting to actual programming languages endowed with control flow operators and higher-order combinators, such as map and fold. In this paper, we extend the backpropagation algorithm to a paradigmatic example of such a programming language: we define a compositional program transformation from the simply-typed lambda-calculus to itself augmented with a notion of linear negation, and prove that this computes the gradient of the source program with the same efficiency as first-order backpropagation. The transformation is completely effect-free and thus provides a purely logical understanding of the dynamics of backpropagation.
(This is a more detailed presentation of the POPL 2020 paper of the same title.)
Tue 21 JanDisplayed time zone: Saskatchewan, Central America change
10:30 - 12:30 | |||
10:30 30mTalk | A Differential-form Pullback Programming Language for Higher-order Reverse-mode Automatic Differentiation LAFI | ||
11:00 30mTalk | A Monad for Point Processes LAFI File Attached | ||
11:30 30mTalk | Denotational Semantics for Differentiable Programming with Manifolds LAFI Jesse Sigal University of Edinburgh | ||
12:00 30mTalk | Backpropagation in the Simply Typed Lambda-calculus with Linear Negation LAFI |