Inference and Learning for Active Sensing‚ Experimental Design and Control

In this paper we argue that maximum expected utility is a suitable framework for modeling a broad range of decision problems arising in pattern recognition and related fields. Examples include, among others, gaze planning and other active vision problems, active learning, sensor and actuator placeme...

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Sonraí bibleagrafaíochta
Príomhchruthaitheoirí: Kueck, H, Hoffman, M, Doucet, A, Freitas, N
Rannpháirtithe: Araujo, H
Formáid: LEABHAR
Foilsithe / Cruthaithe: 2009
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author Kueck, H
Hoffman, M
Doucet, A
Freitas, N
author2 Araujo, H
author_facet Araujo, H
Kueck, H
Hoffman, M
Doucet, A
Freitas, N
author_sort Kueck, H
collection OXFORD
description In this paper we argue that maximum expected utility is a suitable framework for modeling a broad range of decision problems arising in pattern recognition and related fields. Examples include, among others, gaze planning and other active vision problems, active learning, sensor and actuator placement and coordination, intelligent human-computer interfaces, and optimal control. Following this remark, we present a common inference and learning framework for attacking these problems. We demonstrate this approach on three examples: (i) active sensing with nonlinear, non-Gaussian, continuous models, (ii) optimal experimental design to discriminate among competing scientific models, and (iii) nonlinear optimal control.
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spelling oxford-uuid:ceec1682-7b99-4ab9-a96c-fc60e2d820ca2022-03-27T07:38:52ZInference and Learning for Active Sensing‚ Experimental Design and ControlBookhttp://purl.org/coar/resource_type/c_2f33uuid:ceec1682-7b99-4ab9-a96c-fc60e2d820caDepartment of Computer Science2009Kueck, HHoffman, MDoucet, AFreitas, NAraujo, HMendonca, APinho, ATorres, MIn this paper we argue that maximum expected utility is a suitable framework for modeling a broad range of decision problems arising in pattern recognition and related fields. Examples include, among others, gaze planning and other active vision problems, active learning, sensor and actuator placement and coordination, intelligent human-computer interfaces, and optimal control. Following this remark, we present a common inference and learning framework for attacking these problems. We demonstrate this approach on three examples: (i) active sensing with nonlinear, non-Gaussian, continuous models, (ii) optimal experimental design to discriminate among competing scientific models, and (iii) nonlinear optimal control.
spellingShingle Kueck, H
Hoffman, M
Doucet, A
Freitas, N
Inference and Learning for Active Sensing‚ Experimental Design and Control
title Inference and Learning for Active Sensing‚ Experimental Design and Control
title_full Inference and Learning for Active Sensing‚ Experimental Design and Control
title_fullStr Inference and Learning for Active Sensing‚ Experimental Design and Control
title_full_unstemmed Inference and Learning for Active Sensing‚ Experimental Design and Control
title_short Inference and Learning for Active Sensing‚ Experimental Design and Control
title_sort inference and learning for active sensing experimental design and control
work_keys_str_mv AT kueckh inferenceandlearningforactivesensingexperimentaldesignandcontrol
AT hoffmanm inferenceandlearningforactivesensingexperimentaldesignandcontrol
AT douceta inferenceandlearningforactivesensingexperimentaldesignandcontrol
AT freitasn inferenceandlearningforactivesensingexperimentaldesignandcontrol