Predictive Model Fusion: A Modular Approach to Big, Unstructured Data
Data sets of increasing size and complexity require new approaches for prediction as the sheer volume of data from disparate sources inhibits joint processing and modeling. Rather modular segmentation is required, in which a set of models process (potentially overlapping) partitions of the data to i...
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ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-709212021-04-24T05:40:08Z Predictive Model Fusion: A Modular Approach to Big, Unstructured Data Hoegh, Andrew B. Statistics Leman, Scotland C. Ferreira, Marco Antonio Rosa Ramakrishnan, Naren Higdon, David Model Fusion Spatiotemporal Modeling Areal Data Sequential Monte Carlo Data sets of increasing size and complexity require new approaches for prediction as the sheer volume of data from disparate sources inhibits joint processing and modeling. Rather modular segmentation is required, in which a set of models process (potentially overlapping) partitions of the data to independently construct predictions. This framework enables individuals models to be tailored for specific selective superiorities without concern for existing models, which provides utility in cases of segmented expertise. However, a method for fusing predictions from the collection of models is required as models may be correlated. This work details optimal principles for fusing binary predictions from a collection of models to issue a joint prediction. An efficient algorithm is introduced and compared with off the shelf methods for binary prediction. This framework is then implemented in an applied setting to predict instances of civil unrest in Central and South America. Finally, model fusion principles of a spatiotemporal nature are developed to predict civil unrest. A novel multiscale modeling is used for efficient, scalable computation for combining a set of spatiotemporal predictions. Ph. D. 2016-05-06T08:01:02Z 2016-05-06T08:01:02Z 2016-05-05 Dissertation vt_gsexam:7356 http://hdl.handle.net/10919/70921 In Copyright http://rightsstatements.org/vocab/InC/1.0/ ETD application/pdf Virginia Tech |
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Model Fusion Spatiotemporal Modeling Areal Data Sequential Monte Carlo |
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Model Fusion Spatiotemporal Modeling Areal Data Sequential Monte Carlo Hoegh, Andrew B. Predictive Model Fusion: A Modular Approach to Big, Unstructured Data |
description |
Data sets of increasing size and complexity require new approaches for prediction as the sheer volume of data from disparate sources inhibits joint processing and modeling. Rather modular segmentation is required, in which a set of models process (potentially overlapping) partitions of the data to independently construct predictions. This framework enables individuals models to be tailored for specific selective superiorities without concern for existing models, which provides utility in cases of segmented expertise. However, a method for fusing predictions from the collection of models is required as models may be correlated. This work details optimal principles for fusing binary predictions from a collection of models to issue a joint prediction. An efficient algorithm is introduced and compared with off the shelf methods for binary prediction. This framework is then implemented in an applied setting to predict instances of civil unrest in Central and South America. Finally, model fusion principles of a spatiotemporal nature are developed to predict civil unrest. A novel multiscale modeling is used for efficient, scalable computation for combining a set of spatiotemporal predictions. === Ph. D. |
author2 |
Statistics |
author_facet |
Statistics Hoegh, Andrew B. |
author |
Hoegh, Andrew B. |
author_sort |
Hoegh, Andrew B. |
title |
Predictive Model Fusion: A Modular Approach to Big, Unstructured Data |
title_short |
Predictive Model Fusion: A Modular Approach to Big, Unstructured Data |
title_full |
Predictive Model Fusion: A Modular Approach to Big, Unstructured Data |
title_fullStr |
Predictive Model Fusion: A Modular Approach to Big, Unstructured Data |
title_full_unstemmed |
Predictive Model Fusion: A Modular Approach to Big, Unstructured Data |
title_sort |
predictive model fusion: a modular approach to big, unstructured data |
publisher |
Virginia Tech |
publishDate |
2016 |
url |
http://hdl.handle.net/10919/70921 |
work_keys_str_mv |
AT hoeghandrewb predictivemodelfusionamodularapproachtobigunstructureddata |
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1719399155768492032 |