Modeling Sequential Searches with Ancillary Target Dependencies

We develop a mathematical modeling approach to evaluate the effectiveness of a Bayesian search for objects in cases where the target exhibits ancillary dependencies. These dependencies occur in situations where there are multiple search passes of the same region, and they represent a change in searc...

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Main Authors: Thomas A. Wettergren, John G. Baylog
Format: Article
Language:English
Published: Asia University 2010-01-01
Series:Advances in Decision Sciences
Online Access:http://dx.doi.org/10.1155/2010/472809
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spelling doaj-b325fe8cf70f441c90eac60251d0f89e2020-11-25T01:29:28ZengAsia UniversityAdvances in Decision Sciences2090-33592090-33672010-01-01201010.1155/2010/472809472809Modeling Sequential Searches with Ancillary Target DependenciesThomas A. Wettergren0John G. Baylog1Naval Undersea Warfare Center, 1176 Howell Street, Newport, RI 02841, USANaval Undersea Warfare Center, 1176 Howell Street, Newport, RI 02841, USAWe develop a mathematical modeling approach to evaluate the effectiveness of a Bayesian search for objects in cases where the target exhibits ancillary dependencies. These dependencies occur in situations where there are multiple search passes of the same region, and they represent a change in search probability from that predicted using an assumption of independent scans. This variation from independent scans is typically found in situations of advanced detection processing due to fusion and/or collaboration between searchers. The framework developed is based upon the evaluation of a recursion process over spatial search cells, and the dependencies appear as additive utility components within the recursion. We derive expressions for evaluating this utility and illustrate in detail some specific instantiations of the dependency. Computational examples are provided to demonstrate the capabilities of the method.http://dx.doi.org/10.1155/2010/472809
collection DOAJ
language English
format Article
sources DOAJ
author Thomas A. Wettergren
John G. Baylog
spellingShingle Thomas A. Wettergren
John G. Baylog
Modeling Sequential Searches with Ancillary Target Dependencies
Advances in Decision Sciences
author_facet Thomas A. Wettergren
John G. Baylog
author_sort Thomas A. Wettergren
title Modeling Sequential Searches with Ancillary Target Dependencies
title_short Modeling Sequential Searches with Ancillary Target Dependencies
title_full Modeling Sequential Searches with Ancillary Target Dependencies
title_fullStr Modeling Sequential Searches with Ancillary Target Dependencies
title_full_unstemmed Modeling Sequential Searches with Ancillary Target Dependencies
title_sort modeling sequential searches with ancillary target dependencies
publisher Asia University
series Advances in Decision Sciences
issn 2090-3359
2090-3367
publishDate 2010-01-01
description We develop a mathematical modeling approach to evaluate the effectiveness of a Bayesian search for objects in cases where the target exhibits ancillary dependencies. These dependencies occur in situations where there are multiple search passes of the same region, and they represent a change in search probability from that predicted using an assumption of independent scans. This variation from independent scans is typically found in situations of advanced detection processing due to fusion and/or collaboration between searchers. The framework developed is based upon the evaluation of a recursion process over spatial search cells, and the dependencies appear as additive utility components within the recursion. We derive expressions for evaluating this utility and illustrate in detail some specific instantiations of the dependency. Computational examples are provided to demonstrate the capabilities of the method.
url http://dx.doi.org/10.1155/2010/472809
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