DocumentCode :
2218087
Title :
Stochastic Natural Gradient Descent by estimation of empirical covariances
Author :
Malago, Luigi ; Matteo, M. ; Pistone, G.
Author_Institution :
Politec. di Milano, Milan, Italy
fYear :
2011
fDate :
5-8 June 2011
Firstpage :
949
Lastpage :
956
Abstract :
Stochastic relaxation aims at finding the minimum of a fitness function by identifying a proper sequence of distributions, in a given model, that minimize the expected value of the fitness function. Different algorithms fit this framework, and they differ according to the policy they implement to identify the next distribution in the model. In this paper we present two algorithms, in the stochastic relaxation framework, for the optimization of real-valued functions defined over binary variables: Stochastic Gradient Descent (SGD) and Stochastic Natural Gradient Descent (SNDG). These algorithms use a stochastic model to sample from as it happens for Estimation of Distribution Algorithms (EDAs), but the estimation of the model from the population is substituted by the direct update of model parameter through stochastic gradient descent. The two algorithms, SGD and SNDG, both use statistical models in the exponential family, but they differ in the use of the natural gradient, first proposed in the literature by Amari, in the context of Information Geometry. Due to the properties of the exponential family, both gradient and natural gradient can be evaluated in terms of covariances between the fitness function and the sufficient statistics of the exponential family. As the computation of the exact gradient is unfeasible, we approximate the gradient by evaluating empirical covariances. We test the performance of our algorithm over different standard benchmarks, and we compare the results with other well-known meta-heuristics in the framework of EDAs.
Keywords :
covariance analysis; evolutionary computation; gradient methods; statistical distributions; stochastic processes; empirical covariances estimation; estimation of distribution algorithms; fitness function; information geometry; real-valued function optimization; stochastic natural gradient descent; stochastic relaxation framework; Computational modeling; Estimation; Mathematical model; Optimization; Probability distribution; Stochastic processes;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Evolutionary Computation (CEC), 2011 IEEE Congress on
Conference_Location :
New Orleans, LA
ISSN :
Pending
Print_ISBN :
978-1-4244-7834-7
Type :
conf
DOI :
10.1109/CEC.2011.5949720
Filename :
5949720
Link To Document :
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