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Dive into the research topics where Ja Han La Poutré is active.

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Featured researches published by Ja Han La Poutré.


Neurocomputing | 2002

Error-backpropagation in temporally encoded networks of spiking neurons

Sander M. Bohte; Joost N. Kok; Ja Han La Poutré

For a network of spiking neurons that encodes information in the timing of individual spike-times, we derive a supervised learning rule, \emph{SpikeProp}, akin to traditional error-backpropagation and show how to overcome the discontinuities introduced by thresholding. With this algorithm, we demonstrate how networks of spiking neurons with biologically reasonable action potentials can perform complex non-linear classification in fast temporal coding just as well as rate-coded networks. We perform experiments for the classical XOR-problem, when posed in a temporal setting, as well as for a number of other benchmark datasets. Comparing the (implicit) number of spiking neurons required for the encoding of the interpolated XOR problem, it is demonstrated that temporal coding requires significantly less neurons than instantaneous rate-coding.


Computing in Economics and Finance | 2001

The Influence of Evolutionary Selection Schemes on the Iterated Prisoner's Dilemma

Ddb van Bragt; Chm van Kemenade; Ja Han La Poutré

Many economic and social systems are essentially large multi-agent systems.By means of computational modeling, the complicated behavior of such systemscan be investigated. Modeling a multi-agent system as an evolutionary agentsystem, several important choices have to be made for evolutionary operators.Especially, it is to be expected that evolutionary dynamics substantiallydepend on the selection scheme. We therefore investigate the influence ofevolutionary selection mechanisms on a fundamental problem: the iteratedprisoners dilemma (IPD), an elegant model for the emergence of cooperationin a multi-agent system. We observe various types of behavior, cooperationlevel, and stability, depending on the selection mechanism and the selectionintensity. Hence, our results are important for (1) the proper choice andapplication of selection schemes when modeling real economic situations and(2) assessing the validity of the conclusions drawn from computer experimentswith these models. We also conclude that the role of selection in theevolution of multi-agent systems should be investigated further, for instanceusing more detailed and complex agent interaction models.textabstractMany economic and social systems are essentially large multi-agent systems. By means of computational modeling, the complicated behavior of such systems can be investigated. Modeling a multi-agent system as an evolutionary agent system, several important choices have to be made for evolutionary operators. Especially, it is to be expected that evolutionary dynamics substantially depend on the selection scheme. We therefore investigate the influence of evolutionary selection mechanisms on a fundamental problem: the iterated prisoners dilemma (IPD), an elegant model for the emergence of cooperation in a multi-agent system. We observe various types of behavior, cooperation level, and stability, depending on the selection mechanism and the selection intensity. Hence, our results are important for (1) The proper choice and application of election schemes when modeling real economic situations and (2) assessing the validity of the conclusions drawn from computer experiments with these models. We also conclude that the role of selection in the evolution of multi-agent systems should be investigated further, for instance using more detailed and complex agent interaction models.


computational intelligence | 2007

On social learning and robust evolutionary algorithm design in the cournot oligopoly game

Floortje Alkemade; Ja Han La Poutré; Hans M. Amman

Agent‐based computational economics (ACE) combines elements from economics and computer science. In this article, the focus is on the relation between the evolutionary technique that is used and the economic problem that is modeled. In the field of ACE, economic simulations often derive parameter settings for the genetic algorithm directly from the values of the economic model parameters.


Lecture Notes in Computer Science | 2006

An overview of cooperative and competitive multiagent learning

Pieter Jan't Hoen; Karl Tuyls; Liviu Panait; Sean Luke; Ja Han La Poutré


Computing in Economics and Finance | 2006

Robust Evolutionary Algorithm Design for Socio-economic Simulation

Floortje Alkemade; Ja Han La Poutré; Hans M. Amman


international conference on trust management | 2006

A versatile approach to combining trust values for making binary decisions

Tomas Klos; Ja Han La Poutré


Computational Economics | 2009

Erratum:Robust evolutionary algorithm design for socio-economic simulation (Computational Economics))

Floortje Floor Alkemade; Ja Han La Poutré; Hans M. Amman


Innovations in Financial and Economic Networks | 2003

An agent-based evolutionary trade network simulation

Floortje Alkemade; Ja Han La Poutré; Hans M. Amman


Lecture Notes in Computer Science | 2005

Multi-attribute bilateral bargaining in a one-to-many setting

Enrico H. Gerding; D. J. A. Somefun; Ja Han La Poutré


Ercim News | 2007

Adaptive patient scheduling with dynamic resource usage

Ivan B. Vermeulen; Sander M. Bohte; Ja Han La Poutré

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Karl Tuyls

University of Liverpool

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Arie Hasman

Eindhoven University of Technology

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Hhm Erik Korsten

Eindhoven University of Technology

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