DocumentCode :
3851954
Title :
Dependence of Computational Models on Input Dimension: Tractability of Approximation and Optimization Tasks
Author :
Paul C. Kainen;Věra Kurkova;Marcello Sanguineti
Author_Institution :
Department of Mathematics and Statistics, Georgetown University, Washington, D.C., USA
Volume :
58
Issue :
2
fYear :
2012
Firstpage :
1203
Lastpage :
1214
Abstract :
The role of input dimension d is studied in approximating, in various norms, target sets of d-variable functions using linear combinations of adjustable computational units. Results from the literature, which emphasize the number n of terms in the linear combination, are reformulated, and in some cases improved, with particular attention to dependence on d . For worst-case error, upper bounds are given in the factorized form ξ(d)κ(n) , where κ is nonincreasing (typically κ(n) ~ n-1/2). Target sets of functions are described for which the function ξ is a polynomial. Some important cases are highlighted where ξ decreases to zero as d → ∞. For target functions, extent (e.g., the size of domains in Rd where they are defined), scale (e.g., maximum norms of target functions), and smoothness (e.g., the order of square-integrable partial derivatives) may depend on d , and the influence of such dimension-dependent parameters on model complexity is considered. Results are applied to approximation and solution of optimization problems by neural networks with perceptron and Gaussian radial computational units.
Keywords :
"Approximation methods","Computational modeling","Upper bound","Dictionaries","Polynomials","Complexity theory","Optimization"
Journal_Title :
IEEE Transactions on Information Theory
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.2011.2169531
Filename :
6145504
Link To Document :
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