updating$93479$ - definizione. Che cos'è updating$93479$
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Cosa (chi) è updating$93479$ - definizione

OPTIMIZATION METHOD
DFP updating formula; Davidon-Fletcher-Powell formula; Davidon-Fletcher-Powell; Davidon–Fletcher–Powell algorithm; Davidon–Fletcher–Powell; Davidon-Fletcher-Powell algorithm; Davidson-Fletcher-Powell

Dynamic software updating         
FIELD OF RESEARCH IN COMPUTER SCIENCE
User:Teddks/Dynamic Software Updating; Dynamic Software Updating; Stacktool
In computer science, dynamic software updating (DSU) is a field of research pertaining to upgrading programs while they are running. DSU is not currently widely used in industry.
Davidon–Fletcher–Powell formula         
The Davidon–Fletcher–Powell formula (or DFP; named after William C. Davidon, Roger Fletcher, and Michael J.
Efficiently updatable neural network         
A NEURAL NETWORK BASED EVALUATION FUNCTION
NNUE; Efficiently-Updating Neural Network; Efficiently Updatable Neural Networks; Efficiently Updatable Neural Network; Efficiently updateable neural network; Neural Network Updated Efficiently
An efficiently updatable neural network (NNUE, a Japanese wordplay on Nue, sometimes stylised as ƎUИИ) is a neural network-based evaluation function whose inputs are piece-square tables, or variants thereof like the king-piece-square table. NNUE is used primarily for the leaf nodes of the alpha–beta tree.

Wikipedia

Davidon–Fletcher–Powell formula

The Davidon–Fletcher–Powell formula (or DFP; named after William C. Davidon, Roger Fletcher, and Michael J. D. Powell) finds the solution to the secant equation that is closest to the current estimate and satisfies the curvature condition. It was the first quasi-Newton method to generalize the secant method to a multidimensional problem. This update maintains the symmetry and positive definiteness of the Hessian matrix.

Given a function f ( x ) {\displaystyle f(x)} , its gradient ( f {\displaystyle \nabla f} ), and positive-definite Hessian matrix B {\displaystyle B} , the Taylor series is

f ( x k + s k ) = f ( x k ) + f ( x k ) T s k + 1 2 s k T B s k + , {\displaystyle f(x_{k}+s_{k})=f(x_{k})+\nabla f(x_{k})^{T}s_{k}+{\frac {1}{2}}s_{k}^{T}{B}s_{k}+\dots ,}

and the Taylor series of the gradient itself (secant equation)

f ( x k + s k ) = f ( x k ) + B s k + {\displaystyle \nabla f(x_{k}+s_{k})=\nabla f(x_{k})+Bs_{k}+\dots }

is used to update B {\displaystyle B} .

The DFP formula finds a solution that is symmetric, positive-definite and closest to the current approximate value of B k {\displaystyle B_{k}} :

B k + 1 = ( I γ k y k s k T ) B k ( I γ k s k y k T ) + γ k y k y k T , {\displaystyle B_{k+1}=(I-\gamma _{k}y_{k}s_{k}^{T})B_{k}(I-\gamma _{k}s_{k}y_{k}^{T})+\gamma _{k}y_{k}y_{k}^{T},}

where

y k = f ( x k + s k ) f ( x k ) , {\displaystyle y_{k}=\nabla f(x_{k}+s_{k})-\nabla f(x_{k}),}
γ k = 1 y k T s k , {\displaystyle \gamma _{k}={\frac {1}{y_{k}^{T}s_{k}}},}

and B k {\displaystyle B_{k}} is a symmetric and positive-definite matrix.

The corresponding update to the inverse Hessian approximation H k = B k 1 {\displaystyle H_{k}=B_{k}^{-1}} is given by

H k + 1 = H k H k y k y k T H k y k T H k y k + s k s k T y k T s k . {\displaystyle H_{k+1}=H_{k}-{\frac {H_{k}y_{k}y_{k}^{T}H_{k}}{y_{k}^{T}H_{k}y_{k}}}+{\frac {s_{k}s_{k}^{T}}{y_{k}^{T}s_{k}}}.}

B {\displaystyle B} is assumed to be positive-definite, and the vectors s k T {\displaystyle s_{k}^{T}} and y {\displaystyle y} must satisfy the curvature condition

s k T y k = s k T B s k > 0. {\displaystyle s_{k}^{T}y_{k}=s_{k}^{T}Bs_{k}>0.}

The DFP formula is quite effective, but it was soon superseded by the Broyden–Fletcher–Goldfarb–Shanno formula, which is its dual (interchanging the roles of y and s).