Title :
On the sample complexity of sparse dictionary learning
Author :
Seibert, Matthias ; Kleinsteuber, Martin ; Gribonval, Remi ; Jenatton, R. ; Bach, F.
Author_Institution :
Dept. of Electr. Eng. & Inf. Technol., Tech. Univ. Munchen, Munich, Germany
fDate :
June 29 2014-July 2 2014
Abstract :
In the synthesis model signals are represented as a sparse combinations of atoms from a dictionary. Dictionary learning describes the acquisition process of the underlying dictionary for a given set of training samples. While ideally this would be achieved by optimizing the expectation of the factors over the underlying distribution of the training data, in practice the necessary information about the distribution is not available. Therefore, in real world applications it is achieved by minimizing an empirical average over the available samples. The main goal of this paper is to provide a sample complexity estimate that controls to what extent the empirical average deviates from the cost function. This estimate then provides a suitable estimate to the accuracy of the representation of the learned dictionary. The presented approach exemplifies the general results proposed by the authors in [1] and gives more concrete bounds of the sample complexity of dictionary learning. We cover a variety of sparsity measures employed in the learning procedure.
Keywords :
learning (artificial intelligence); signal sampling; acquisition process; cost function; sample complexity; sparse dictionary learning; synthesis model signals; training data; Complexity theory; Conferences; Dictionaries; Probability distribution; Signal processing; Training; Upper bound; Dictionary learning; sample complexity; sparse coding;
Conference_Titel :
Statistical Signal Processing (SSP), 2014 IEEE Workshop on
Conference_Location :
Gold Coast, VIC
DOI :
10.1109/SSP.2014.6884621