Contributions to statistical learning and statistical quantification in nanomaterials

This research focuses to develop some new techniques on statistical learning including methodology, computation and application. We also developed statistical quantification in nanomaterials. For a large number of random variables with temporal or spatial structures, we proposed shrink estimates o...

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Main Author: Deng, Xinwei
Published: Georgia Institute of Technology 2009
Subjects:
Online Access:http://hdl.handle.net/1853/29777
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spelling ndltd-GATECH-oai-smartech.gatech.edu-1853-297772013-01-07T20:33:01ZContributions to statistical learning and statistical quantification in nanomaterialsDeng, XinweiPrincipal componentActive learningFactor modelNanomechanicsCovariance matrixNanostructured materialsComputational learning theory Statistical methodsThis research focuses to develop some new techniques on statistical learning including methodology, computation and application. We also developed statistical quantification in nanomaterials. For a large number of random variables with temporal or spatial structures, we proposed shrink estimates of covariance matrix to account their Markov structures. The proposed method exploits the sparsity in the inverse covariance matrix in a systematic fashion. To deal with high dimensional data, we proposed a robust kernel principal component analysis for dimension reduction, which can extract the nonlinear structure of high dimension data more robustly. To build a prediction model more efficiently, we developed an active learning via sequential design to actively select the data points into the training set. By combining the stochastic approximation and D-optimal designs, the proposed method can build model with minimal time and effort. We also proposed factor logit-models with a large number of categories for classification. We show that the convergence rate of the classifier functions estimated from the proposed factor model does not rely on the number of categories, but only on the number of factors. It therefore can achieve better classification accuracy. For the statistical nano-quantification, a statistical approach is presented to quantify the elastic deformation of nanomaterials. We proposed a new statistical modeling technique, called sequential profile adjustment by regression (SPAR), to account for and eliminate the various experimental errors and artifacts. SPAR can automatically detect and remove the systematic errors and therefore gives more precise estimation of the elastic modulus.Georgia Institute of Technology2009-08-26T18:18:29Z2009-08-26T18:18:29Z2009-06-22Dissertationhttp://hdl.handle.net/1853/29777
collection NDLTD
sources NDLTD
topic Principal component
Active learning
Factor model
Nanomechanics
Covariance matrix
Nanostructured materials
Computational learning theory Statistical methods
spellingShingle Principal component
Active learning
Factor model
Nanomechanics
Covariance matrix
Nanostructured materials
Computational learning theory Statistical methods
Deng, Xinwei
Contributions to statistical learning and statistical quantification in nanomaterials
description This research focuses to develop some new techniques on statistical learning including methodology, computation and application. We also developed statistical quantification in nanomaterials. For a large number of random variables with temporal or spatial structures, we proposed shrink estimates of covariance matrix to account their Markov structures. The proposed method exploits the sparsity in the inverse covariance matrix in a systematic fashion. To deal with high dimensional data, we proposed a robust kernel principal component analysis for dimension reduction, which can extract the nonlinear structure of high dimension data more robustly. To build a prediction model more efficiently, we developed an active learning via sequential design to actively select the data points into the training set. By combining the stochastic approximation and D-optimal designs, the proposed method can build model with minimal time and effort. We also proposed factor logit-models with a large number of categories for classification. We show that the convergence rate of the classifier functions estimated from the proposed factor model does not rely on the number of categories, but only on the number of factors. It therefore can achieve better classification accuracy. For the statistical nano-quantification, a statistical approach is presented to quantify the elastic deformation of nanomaterials. We proposed a new statistical modeling technique, called sequential profile adjustment by regression (SPAR), to account for and eliminate the various experimental errors and artifacts. SPAR can automatically detect and remove the systematic errors and therefore gives more precise estimation of the elastic modulus.
author Deng, Xinwei
author_facet Deng, Xinwei
author_sort Deng, Xinwei
title Contributions to statistical learning and statistical quantification in nanomaterials
title_short Contributions to statistical learning and statistical quantification in nanomaterials
title_full Contributions to statistical learning and statistical quantification in nanomaterials
title_fullStr Contributions to statistical learning and statistical quantification in nanomaterials
title_full_unstemmed Contributions to statistical learning and statistical quantification in nanomaterials
title_sort contributions to statistical learning and statistical quantification in nanomaterials
publisher Georgia Institute of Technology
publishDate 2009
url http://hdl.handle.net/1853/29777
work_keys_str_mv AT dengxinwei contributionstostatisticallearningandstatisticalquantificationinnanomaterials
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