Also known as algorithmic differentiation, short AD. Techniques that take a procedure evaluating a numerical function and transform it into a procedure that additionally evaluates directional derivatives, gradients, higher order derivatives.

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Does Theano support variable split?

In my Theano program, I want to split the tensor matrix into two parts, with each of them making different contributions to the error function. Can anyone tell me whether automatic differentiation ...
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how is backpropagation the same (or not) as reverse automatic differentiation?

The Wikipedia page for backpropagation has this claim: The backpropagation algorithm for calculating a gradient has been rediscovered a number of times, and is a special case of a more general ...
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Optimization issue, Nonlinear: automatic analytical jacobian / Hessian from objecitve and constraints in R?

In R, is it possible to find the jacobian/Hessian/sparsity pattern analytically when you provide just the objective function and constraints for an optimization problem? AMPL does this, and from ...
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Java - Computation of Derivations with Apache Commons Mathematic Library

I have a problem in using the apache commons math library. I just want to create functions like f(x) = 4x^2 + 2x and I want to compute the derivative of this function --> f'(x) = 8x + 2 I read the ...
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Avoid sorting args in Python module Sympy

I am currently developing a differential operator for sympy that can be placed in matricial form. In this case the order of the args list when creating a Mul object is very important to guarantee that ...
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Differential Operator usable in Matrix form, in Python module Sympy

We need two matrices of differential operators [B] and [C] such as: B = sympy.Matrix([[ D(x), D(y) ], [ D(y), D(x) ]]) C = sympy.Matrix([[ D(x), D(y) ]]) ans = B * ...
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Haskell can't deduce type equality

I have the following code, which does not compile: import Numeric.AD data Trainable a b = forall n . Floating n => Trainable ([n] -> a -> b) (a -> b -> [n] -> n) ...
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Haskell ad package

I want to use the ad automatic differentiation package for learning neural network weights in Haskell. I have found some functions that might just have what I need, however I can't figure out what ...
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Automatic probability densities

I have found automatic differentiation to be extremely useful when writing mathematical software. I now have to work with random variables and functions of the random variables, and it seems to me ...
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Acceptable types in Numeric.AD functions

I'm having little success wrapping my head around the basic plumbing of the types involved in the ad package. For example, the following works perfectly: import Numeric.AD ex :: Num a => [a] ...
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Numeric.AD and typing problem

I'm trying to work with Numeric.AD and a custom Expr type. I wish to calculate the symbolic gradient of user inputted expression. The first trial with a constant expression works nicely: calcGrad0 ...
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Automatic differentiation library in Scheme / Common Lisp / Clojure

I've heard that one of McCarthy's original motivations for inventing Lisp was to write a system for automatic differentiation. Despite this, my Google searches haven't yielded any libraries/macros for ...
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Runge-Kutta (RK4) for system of differential equations in Java

This quation is mostly a result of this thread: Differential Equations in Java. Basically, I've tried to follow Jason S. advise and to implement numerical solutions to differential equations via ...
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Automatic Differentiation in C# and F#

I am having a problem getting Automatic Differentiation to work between C# and F#. In C# I have a function that takes a double and returns a double, say: private double Price(double yield) { ...
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Is there any working implementation of reverse mode automatic differentiation for Haskell?

The closest-related implementation in Haskell I have seen is the forward mode at http://hackage.haskell.org/packages/archive/fad/1.0/doc/html/Numeric-FAD.html. The closest related related research ...
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Derivative of a Higher-Order Function

This is in the context of Automatic Differentiation - what would such a system do with a function like map, or filter - or even one of the SKI Combinators? Example: I have the following function: ...