DocumentCode
3513365
Title
Information theoretic limits on learning stochastic differential equations
Author
Bento, José ; Ibrahimi, Morteza ; Montanari, Andrea
Author_Institution
Dept. of Electr. Eng., Stanford Univ., Stanford, CA, USA
fYear
2011
fDate
July 31 2011-Aug. 5 2011
Firstpage
855
Lastpage
859
Abstract
Consider the problem of learning the drift coefficient of a stochastic differential equation from a sample path. In this paper, we assume that the drift is parametrized by a high-dimensional vector. We address the question of how long the system needs to be observed in order to learn this vector of parameters. We prove a general lower bound on this time complexity by using a characterization of mutual information as time integral of conditional variance, due to Kadota, Zakai, and Ziv. This general lower bound is applied to specific classes of linear and non-linear stochastic differential equations. In the linear case, the problem under consideration is the one of learning a matrix of interaction coefficients. We evaluate our lower bound for ensembles of sparse and dense random matrices. The resulting estimates match the qualitative behavior of upper bounds achieved by computationally efficient procedures.
Keywords
computational complexity; information theory; linear differential equations; nonlinear differential equations; sparse matrices; vectors; dense random matrix; drift coefficient learning; high-dimensional vector; information theoretic limits; linear stochastic differential equation; nonlinear stochastic differential equation; sparse random matrix; time complexity; Complexity theory; Differential equations; Graphical models; Sparse matrices; Springs; Stochastic processes; Upper bound;
fLanguage
English
Publisher
ieee
Conference_Titel
Information Theory Proceedings (ISIT), 2011 IEEE International Symposium on
Conference_Location
St. Petersburg
ISSN
2157-8095
Print_ISBN
978-1-4577-0596-0
Electronic_ISBN
2157-8095
Type
conf
DOI
10.1109/ISIT.2011.6034258
Filename
6034258
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