Title :
The knowledge gradient algorithm using locally parametric approximations
Author :
Bolong Cheng ; Jamshidi, Arta A. ; Powell, Warren B.
Author_Institution :
Electr. Eng., Princeton Univ., Princeton, NJ, USA
Abstract :
We are interested in maximizing a general (but continuous) function where observations are noisy and may be expensive. We derive a knowledge gradient policy, which chooses measurements which maximize the expected value of information, while using a locally parametric belief model which uses linear approximations around regions of the function, known as clouds. The method, called DC-RBF (Dirichlet Clouds with Radial Basis Functions) is well suited to recursive estimation, and uses a compact representation of the function which avoids storing the entire history. Our technique allows for correlated beliefs within adjacent subsets of the alternatives and does not pose any a priori assumption on the global shape of the underlying function. Experimental work suggests that the method adapts to a range of arbitrary, continuous functions, and appears to reliably find the optimal solution.
Keywords :
approximation theory; gradient methods; optimisation; radial basis function networks; recursive estimation; DC-RBF; Dirichlet clouds with radial basis functions; arbitrary continuous functions; function representation; knowledge gradient algorithm; knowledge gradient policy; locally parametric approximation; recursive estimation; Approximation algorithms; Computational modeling; Function approximation; Stochastic processes; Tin; Vectors;
Conference_Titel :
Simulation Conference (WSC), 2013 Winter
Conference_Location :
Washington, DC
Print_ISBN :
978-1-4799-2077-8
DOI :
10.1109/WSC.2013.6721477