DocumentCode
1766215
Title
Diffusion Maps for Signal Processing: A Deeper Look at Manifold-Learning Techniques Based on Kernels and Graphs
Author
Talmon, Ronen ; Cohen, Israel ; Gannot, Sharon ; Coifman, Ronald
Author_Institution
Math. Dept., Yale Univ., New Haven, CT, USA
Volume
30
Issue
4
fYear
2013
fDate
41456
Firstpage
75
Lastpage
86
Abstract
Signal processing methods have significantly changed over the last several decades. Traditional methods were usually based on parametric statistical inference and linear filters. These frameworks have helped to develop efficient algorithms that have often been suitable for implementation on digital signal processing (DSP) systems. Over the years, DSP systems have advanced rapidly, and their computational capabilities have been substantially increased. This development has enabled contemporary signal processing algorithms to incorporate more computations. Consequently, we have recently experienced a growing interaction between signal processing and machine-learning approaches, e.g., Bayesian networks, graphical models, and kernel-based methods, whose computational burden is usually high.
Keywords
belief networks; filtering theory; graph theory; inference mechanisms; learning (artificial intelligence); signal processing; Bayesian networks; diffusion maps; digital signal processing; graphical models; kernel based methods; linear filters; machine learning; manifold learning; parametric statistical inference; Kernel; Learning systems; Machine learning; Parametric statistics; Signal processing algorithms;
fLanguage
English
Journal_Title
Signal Processing Magazine, IEEE
Publisher
ieee
ISSN
1053-5888
Type
jour
DOI
10.1109/MSP.2013.2250353
Filename
6530788
Link To Document