Title of article
Iterative Learning Algorithms for Linear Gaussian Observation Models.
Author/Authors
G. Deng، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2004
Pages
12
From page
2286
To page
2297
Abstract
In this paper, we consider a signal/parameter estimation
problem that is based on a linear model structure and a
given setting of statistical models with unknown hyperparameters.
We consider several combinations of Gaussian and Laplacian
models. We develop iterative algorithms based on two typical
machine learning methods—the evidence-based method and the
integration-based method—to deal with the hyperparameters.
We have applied the proposed algorithms to adaptive prediction
and wavelet denoising. In linear prediction, we show that the
proposed algorithms are efficient tools for tackling a difficult
problem of adapting simultaneously the order and the coefficients
of the predictor. In wavelet denoising, we show that by using the
proposed algorithms, the noisy wavelet coefficients are subject to
shrinkage and thresholding.
Keywords
Adaptive prediction , Denoising , Hyperparameters , iterative algorithm , supervised learning.
Journal title
IEEE TRANSACTIONS ON SIGNAL PROCESSING
Serial Year
2004
Journal title
IEEE TRANSACTIONS ON SIGNAL PROCESSING
Record number
403616
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