Markov Brains: A Technical Introduction

Markov Brains are a class of evolvable artificial neural networks (ANN). They differ from conventional ANNs in many aspects, but the key difference is that instead of a layered architecture, with each node performing the same function, Markov Brains are networks built from individual computational c...

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Hauptverfasser: Hintze, Arend, Edlund, Jeffrey A, Olson, Randal S, Knoester, David B, Schossau, Jory, Albantakis, Larissa, Tehrani-Saleh, Ali, Kvam, Peter, Sheneman, Leigh, Goldsby, Heather, Bohm, Clifford, Adami, Christoph
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creator Hintze, Arend
Edlund, Jeffrey A
Olson, Randal S
Knoester, David B
Schossau, Jory
Albantakis, Larissa
Tehrani-Saleh, Ali
Kvam, Peter
Sheneman, Leigh
Goldsby, Heather
Bohm, Clifford
Adami, Christoph
description Markov Brains are a class of evolvable artificial neural networks (ANN). They differ from conventional ANNs in many aspects, but the key difference is that instead of a layered architecture, with each node performing the same function, Markov Brains are networks built from individual computational components. These computational components interact with each other, receive inputs from sensors, and control motor outputs. The function of the computational components, their connections to each other, as well as connections to sensors and motors are all subject to evolutionary optimization. Here we describe in detail how a Markov Brain works, what techniques can be used to study them, and how they can be evolved.
doi_str_mv 10.48550/arxiv.1709.05601
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Quantitative Biology - Neurons and Cognition
title Markov Brains: A Technical Introduction
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