Automatic differentiation is involved for long in applied mathematics as an alternative to finite difference to improve the accuracy of numerical computation of derivatives. Each time a numerical minimization is involved, automatic differentiation can be used. In between formal derivation and standard numerical schemes, this approach is based on software solutions applying mechanically the chain rule to obtain an exact value for the desired derivative. It has a cost in memory and cpu consumption. For participants of financial markets (banks, insurances, financial intermediaries, etc), computing derivatives is needed to obtain the sensitivity of its exposure to well-defined potential market moves. It is a way to understand variations of thei...
This dissertation explores a key challenge of the financial industry — the efficient computation of ...
International audienceWe present Automatic Differentiation (AD),a technique to obtain derivatives of...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
Automatic differentiation is involved for long in applied mathematics as an alternative to finite di...
summary:Automatic differentiation is an effective method for evaluating derivatives of function, whi...
We apply adjoint algorithmic differentiation (AAD) to the risk management of securities when their p...
Automatic differentiation --- the mechanical transformation of numeric computer programs to calculat...
Automatic differentiation (AD) is a practical field of computational mathematics that is of growing ...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
In mathematics and computer algebra, automatic differentiation (AD) is a set of techniques to evalua...
AbstractAdjoint Algorithmic Differentiation is an efficient way to obtain price derivatives with res...
This thesis is an exposition of the article Arithmetic of Differentiation by L.B Rall. It gives a ...
In this paper, we introduce automatic differentiation as a method for computing derivatives of large...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
In comparison to symbolic differentiation and numerical differencing, the chain rule based technique...
This dissertation explores a key challenge of the financial industry — the efficient computation of ...
International audienceWe present Automatic Differentiation (AD),a technique to obtain derivatives of...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
Automatic differentiation is involved for long in applied mathematics as an alternative to finite di...
summary:Automatic differentiation is an effective method for evaluating derivatives of function, whi...
We apply adjoint algorithmic differentiation (AAD) to the risk management of securities when their p...
Automatic differentiation --- the mechanical transformation of numeric computer programs to calculat...
Automatic differentiation (AD) is a practical field of computational mathematics that is of growing ...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
In mathematics and computer algebra, automatic differentiation (AD) is a set of techniques to evalua...
AbstractAdjoint Algorithmic Differentiation is an efficient way to obtain price derivatives with res...
This thesis is an exposition of the article Arithmetic of Differentiation by L.B Rall. It gives a ...
In this paper, we introduce automatic differentiation as a method for computing derivatives of large...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...
In comparison to symbolic differentiation and numerical differencing, the chain rule based technique...
This dissertation explores a key challenge of the financial industry — the efficient computation of ...
International audienceWe present Automatic Differentiation (AD),a technique to obtain derivatives of...
Derivatives, mostly in the form of gradients and Hessians, are ubiquitous in machine learning. Autom...