Parallel algorithms for generalized N-body problem in high dimensions and their applications for bayesian inference and image analysis

In this dissertation, we explore parallel algorithms for general N-Body problems in high dimensions, and their applications in machine learning and image analysis on distributed infrastructures. In the first part of this work, we proposed and developed a set of basic tools built on top of Message...

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Main Author: Xiao, Bo
Other Authors: Chow, Edmond
Format: Others
Language:en_US
Published: Georgia Institute of Technology 2015
Subjects:
Online Access:http://hdl.handle.net/1853/53052
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spelling ndltd-GATECH-oai-smartech.gatech.edu-1853-530522015-02-05T15:35:21ZParallel algorithms for generalized N-body problem in high dimensions and their applications for bayesian inference and image analysisXiao, BoParallel algorithmsBayesian inferenceGeneralized N-body problemIn this dissertation, we explore parallel algorithms for general N-Body problems in high dimensions, and their applications in machine learning and image analysis on distributed infrastructures. In the first part of this work, we proposed and developed a set of basic tools built on top of Message Passing Interface and OpenMP for massively parallel nearest neighbors search. In particular, we present a distributed tree structure to index data in arbitrary number of dimensions, and a novel algorithm that eliminate the need for collective coordinate exchanges during tree construction. To the best of our knowledge, our nearest neighbors package is the first attempt that scales to millions of cores in up to a thousand dimensions. Based on our nearest neighbors search algorithms, we present "ASKIT", a parallel fast kernel summation tree code with a new near-far field decomposition and a new compact representation for the far field. Specially our algorithm is kernel independent. The efficiency of new near far decomposition depends only on the intrinsic dimensionality of data, and the new far field representation only relies on the rand of sub-blocks of the kernel matrix. In the second part, we developed a Bayesian inference framework and a variational formulation for a MAP estimation of the label field for medical image segmentation. In particular, we propose new representations for both likelihood probability and prior probability functions, as well as their fast calculation. Then a parallel matrix free optimization algorithm is given to solve the MAP estimation. Our new prior function is suitable for lots of spatial inverse problems. Experimental results show our framework is robust to noise, variations of shapes and artifacts.Georgia Institute of TechnologyChow, Edmond2015-01-12T20:51:03Z2015-01-12T20:51:03Z2014-122014-11-11December 20142015-01-12T20:51:03ZDissertationapplication/pdfhttp://hdl.handle.net/1853/53052en_US
collection NDLTD
language en_US
format Others
sources NDLTD
topic Parallel algorithms
Bayesian inference
Generalized N-body problem
spellingShingle Parallel algorithms
Bayesian inference
Generalized N-body problem
Xiao, Bo
Parallel algorithms for generalized N-body problem in high dimensions and their applications for bayesian inference and image analysis
description In this dissertation, we explore parallel algorithms for general N-Body problems in high dimensions, and their applications in machine learning and image analysis on distributed infrastructures. In the first part of this work, we proposed and developed a set of basic tools built on top of Message Passing Interface and OpenMP for massively parallel nearest neighbors search. In particular, we present a distributed tree structure to index data in arbitrary number of dimensions, and a novel algorithm that eliminate the need for collective coordinate exchanges during tree construction. To the best of our knowledge, our nearest neighbors package is the first attempt that scales to millions of cores in up to a thousand dimensions. Based on our nearest neighbors search algorithms, we present "ASKIT", a parallel fast kernel summation tree code with a new near-far field decomposition and a new compact representation for the far field. Specially our algorithm is kernel independent. The efficiency of new near far decomposition depends only on the intrinsic dimensionality of data, and the new far field representation only relies on the rand of sub-blocks of the kernel matrix. In the second part, we developed a Bayesian inference framework and a variational formulation for a MAP estimation of the label field for medical image segmentation. In particular, we propose new representations for both likelihood probability and prior probability functions, as well as their fast calculation. Then a parallel matrix free optimization algorithm is given to solve the MAP estimation. Our new prior function is suitable for lots of spatial inverse problems. Experimental results show our framework is robust to noise, variations of shapes and artifacts.
author2 Chow, Edmond
author_facet Chow, Edmond
Xiao, Bo
author Xiao, Bo
author_sort Xiao, Bo
title Parallel algorithms for generalized N-body problem in high dimensions and their applications for bayesian inference and image analysis
title_short Parallel algorithms for generalized N-body problem in high dimensions and their applications for bayesian inference and image analysis
title_full Parallel algorithms for generalized N-body problem in high dimensions and their applications for bayesian inference and image analysis
title_fullStr Parallel algorithms for generalized N-body problem in high dimensions and their applications for bayesian inference and image analysis
title_full_unstemmed Parallel algorithms for generalized N-body problem in high dimensions and their applications for bayesian inference and image analysis
title_sort parallel algorithms for generalized n-body problem in high dimensions and their applications for bayesian inference and image analysis
publisher Georgia Institute of Technology
publishDate 2015
url http://hdl.handle.net/1853/53052
work_keys_str_mv AT xiaobo parallelalgorithmsforgeneralizednbodyprobleminhighdimensionsandtheirapplicationsforbayesianinferenceandimageanalysis
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