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Profit scoring and dynamic models

Lyn C. Thomas

in Consumer Credit Models: Pricing, Profit and Portfolios

Published in print:
2009
Published Online:
May 2009
ISBN:
9780199232130
eISBN:
9780191715914
Item type:
chapter
Publisher:
Oxford University Press
DOI:
10.1093/acprof:oso/9780199232130.003.0004
Subject:
Mathematics, Applied Mathematics, Mathematical Finance

This chapter begins by reviewing the role of behavioural scoring and risk/reward matrices in the way a lender manages borrowers. It points out that current methods do not allow for the future changes ... More


Computational Decision Support Regret-Based Models for Optimization and Preference Elicitation

Craig Boutilier

in Comparative Decision Making

Published in print:
2013
Published Online:
May 2013
ISBN:
9780199856800
eISBN:
9780199301508
Item type:
chapter
Publisher:
Oxford University Press
DOI:
10.1093/acprof:oso/9780199856800.003.0041
Subject:
Psychology, Cognitive Neuroscience

The goal of decision support is to develop methods that assist decision makers. In this chapter computational methods are brought to bear on a multi-dimensional choice problem with the two-part ... More


Coordinating Agents’ Metalevel Control

Anita Raja, George Alexander, Victor R. Lesser, and Michael Krainin

in Metareasoning: Thinking about Thinking

Published in print:
2011
Published Online:
August 2013
ISBN:
9780262014809
eISBN:
9780262295284
Item type:
chapter
Publisher:
The MIT Press
DOI:
10.7551/mitpress/9780262014809.003.0013
Subject:
Computer Science, Artificial Intelligence

This chapter presents a generalized metalevel control framework for multiagent systems and discusses the issues involved in extending single-agent metalevel control to a team of cooperative agents ... More


Controlling Deliberation in Coordinators

George Alexander, Anita Raja, and David Musliner

in Metareasoning: Thinking about Thinking

Published in print:
2011
Published Online:
August 2013
ISBN:
9780262014809
eISBN:
9780262295284
Item type:
chapter
Publisher:
The MIT Press
DOI:
10.7551/mitpress/9780262014809.003.0005
Subject:
Computer Science, Artificial Intelligence

This chapter describes efforts to add metalevel control capabilities to the Informed Unroller agent (IU-agent), a scheduling agent based on the Markov decision process (MDP) formalism designed to ... More


Reinforcement learning

Thomas P. Trappenberg

in Fundamentals of Machine Learning

Published in print:
2019
Published Online:
January 2020
ISBN:
9780198828044
eISBN:
9780191883873
Item type:
chapter
Publisher:
Oxford University Press
DOI:
10.1093/oso/9780198828044.003.0010
Subject:
Neuroscience, Behavioral Neuroscience

The discussion here considers a much more common learning condition where an agent, such as a human or a robot, has to learn to make decisions in the environment from simple feedback. Such feedback ... More


Behavior is Reward-oriented

Martin V. Butz and Esther F. Kutter

in How the Mind Comes into Being: Introducing Cognitive Science from a Functional and Computational Perspective

Published in print:
2017
Published Online:
July 2017
ISBN:
9780198739692
eISBN:
9780191834462
Item type:
chapter
Publisher:
Oxford University Press
DOI:
10.1093/acprof:oso/9780198739692.003.0005
Subject:
Psychology, Cognitive Models and Architectures, Cognitive Psychology

Delving further into development, adaptation, and learning, this chapter considers the potential of reward-oriented optimization of behavior. Reinforcement learning (RL) is motivated from the ... More


Computational Model of Human Routine Behaviours

Nikola Banovic, Jennifer Mankoff, and Anind K. Dey

in Computational Interaction

Published in print:
2018
Published Online:
March 2018
ISBN:
9780198799603
eISBN:
9780191839832
Item type:
chapter
Publisher:
Oxford University Press
DOI:
10.1093/oso/9780198799603.003.0015
Subject:
Mathematics, Logic / Computer Science / Mathematical Philosophy

Computational Interaction enables a future in which user interfaces (UI) learn about people’s behaviours by observing them and interacting with them to help people to be productive, comfortable, ... More


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