Title :
On semi-supervised learning and sparsity
Author :
Balinsky, Alexander ; Balinsky, Helen
Author_Institution :
Cardiff Sch. of Math., Cardiff Univ., Cardiff, UK
Abstract :
In this article we establish a connection between semi-supervised learning and compressive sampling. We show that sparsity and compressibility of the learning function can be obtained from heavy-tailed distributions of filter responses or coefficients in spectral decompositions. In many cases the NP-hard problems of finding sparsest solutions can be replaced by l1-problems from convex optimisation theory, which provide effective tools for semi-supervised learning. We present several conjectures and examples.
Keywords :
filtering theory; learning (artificial intelligence); signal sampling; spectral analysis; NP-hard problem; compressive sampling; convex optimisation; filter coefficient; filter response; learning function; semisupervised learning; sparsity; spectral decomposition; Cybernetics; Filters; Geometry; Kernel; Mathematics; Matrix decomposition; NP-hard problem; Sampling methods; Semisupervised learning; USA Councils; Semi-supervised learning; compressive sampling; heavy-tailed distributions; sparsity;
Conference_Titel :
Systems, Man and Cybernetics, 2009. SMC 2009. IEEE International Conference on
Conference_Location :
San Antonio, TX
Print_ISBN :
978-1-4244-2793-2
Electronic_ISBN :
1062-922X
DOI :
10.1109/ICSMC.2009.5345946