It is commonly assumed that calculating third order information is too expensive for most applications. But we show that the directional derivative of the Hessian ( D3f(x)⋅d ) can be calculated at a cost proportional to that of a state-of-the-art method for calculating the Hessian matrix. We do this by first presenting a simple procedure for designing high order reverse methods and applying it to deduce several methods including a reverse method that calculates D3f(x)⋅d . We have implemented this method taking into account symmetry and sparsity, and successfully calculated this derivative for functions with a million variables. These results indicate that the use of third order information in a general nonlinear solver, such as Halley–Ch...
A new implicit and compact optimization-based method is presented for high order derivative calculat...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
The background of this thesis is algorithmic differentiation (AD) of in practice very computationall...
It is commonly assumed that calculating third order information is too expensive for most applicatio...
Modern methods for numerical optimization calculate (or approximate) the matrix of second derivative...
We study the high order reverse mode of Automatic Differentiation (AD) in the dissertation. Automati...
Second- and higher-order derivatives are required by applications in scientic computation, espe-cial...
This work presents a new automatic differentiation method, Nilpotent Matrix Differentiation (NMD), c...
Automatic differentiation of third order derivatives is implemented in C++. The implementation uses ...
In engineering applications, we often need the derivatives of functions defined by a program. The ap...
Abstract. Forward and reverse modes of algorithmic differentiation (AD) trans-form implementations o...
International audienceIn this paper we introduce a new variant of shape differentiation which is ada...
This article provides an overview of some of the mathematical prin- ciples of Automatic Differentia...
This paper shows how to use automatic differentiation in reverse mode as a powerful tool in optimiza...
Automatic Differentiation (AD) is a tool that systematically implements the chain rule of differenti...
A new implicit and compact optimization-based method is presented for high order derivative calculat...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
The background of this thesis is algorithmic differentiation (AD) of in practice very computationall...
It is commonly assumed that calculating third order information is too expensive for most applicatio...
Modern methods for numerical optimization calculate (or approximate) the matrix of second derivative...
We study the high order reverse mode of Automatic Differentiation (AD) in the dissertation. Automati...
Second- and higher-order derivatives are required by applications in scientic computation, espe-cial...
This work presents a new automatic differentiation method, Nilpotent Matrix Differentiation (NMD), c...
Automatic differentiation of third order derivatives is implemented in C++. The implementation uses ...
In engineering applications, we often need the derivatives of functions defined by a program. The ap...
Abstract. Forward and reverse modes of algorithmic differentiation (AD) trans-form implementations o...
International audienceIn this paper we introduce a new variant of shape differentiation which is ada...
This article provides an overview of some of the mathematical prin- ciples of Automatic Differentia...
This paper shows how to use automatic differentiation in reverse mode as a powerful tool in optimiza...
Automatic Differentiation (AD) is a tool that systematically implements the chain rule of differenti...
A new implicit and compact optimization-based method is presented for high order derivative calculat...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
The background of this thesis is algorithmic differentiation (AD) of in practice very computationall...