Models of intelligence operations

It is vital to modern intelligence operations that the cycle of gathering, analysing and acting upon intelligence is as efficient as possible in the face of an ever increasing volume of available information. The collection, processing and subsequent analysis aspect of the intelligence cycle is mode...

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Main Author: Marshall, Jak
Other Authors: Glazebrook, Kevin ; Kirkbride, Christopher ; Szechtman, Roberto
Published: Lancaster University 2016
Subjects:
Online Access:https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.694104
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spelling ndltd-bl.uk-oai-ethos.bl.uk-6941042018-10-03T03:23:33ZModels of intelligence operationsMarshall, JakGlazebrook, Kevin ; Kirkbride, Christopher ; Szechtman, Roberto2016It is vital to modern intelligence operations that the cycle of gathering, analysing and acting upon intelligence is as efficient as possible in the face of an ever increasing volume of available information. The collection, processing and subsequent analysis aspect of the intelligence cycle is modelled as a novel finite horizon Bayesian stochastic dynamic programming problem, namely the multi-armed bandit allocation (MABA) problem. The MABA framework models the efforts of a processor to search for intelligence items of the highest importance by making sequential samples from a collection of intelligence sources. Through Bayesian learning the processor learns about the importance distributions of the available sources over time, select a source from which to sample at each decision epoch, and decides whether or not to allocate sampled items for analysis. For source selection, a novel Lagrangian based index heuristic is developed and its performance is compared to existing index heuristics including knowledge gradient and Thompson sampling methods. The allocation policy is handled by thresholds which act as Lagrangian multipliers of the original MABA problem. Both a discrete Dirichlet-Multinomial and a continuous Exponential-Gamma-Gamma implementation of the MABA problem are developed, where the latter also models uncertainty in the processor's own ability to accurately assess the importance of sampled items.519.5Lancaster Universityhttps://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.694104http://eprints.lancs.ac.uk/81659/Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 519.5
spellingShingle 519.5
Marshall, Jak
Models of intelligence operations
description It is vital to modern intelligence operations that the cycle of gathering, analysing and acting upon intelligence is as efficient as possible in the face of an ever increasing volume of available information. The collection, processing and subsequent analysis aspect of the intelligence cycle is modelled as a novel finite horizon Bayesian stochastic dynamic programming problem, namely the multi-armed bandit allocation (MABA) problem. The MABA framework models the efforts of a processor to search for intelligence items of the highest importance by making sequential samples from a collection of intelligence sources. Through Bayesian learning the processor learns about the importance distributions of the available sources over time, select a source from which to sample at each decision epoch, and decides whether or not to allocate sampled items for analysis. For source selection, a novel Lagrangian based index heuristic is developed and its performance is compared to existing index heuristics including knowledge gradient and Thompson sampling methods. The allocation policy is handled by thresholds which act as Lagrangian multipliers of the original MABA problem. Both a discrete Dirichlet-Multinomial and a continuous Exponential-Gamma-Gamma implementation of the MABA problem are developed, where the latter also models uncertainty in the processor's own ability to accurately assess the importance of sampled items.
author2 Glazebrook, Kevin ; Kirkbride, Christopher ; Szechtman, Roberto
author_facet Glazebrook, Kevin ; Kirkbride, Christopher ; Szechtman, Roberto
Marshall, Jak
author Marshall, Jak
author_sort Marshall, Jak
title Models of intelligence operations
title_short Models of intelligence operations
title_full Models of intelligence operations
title_fullStr Models of intelligence operations
title_full_unstemmed Models of intelligence operations
title_sort models of intelligence operations
publisher Lancaster University
publishDate 2016
url https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.694104
work_keys_str_mv AT marshalljak modelsofintelligenceoperations
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