A key goal in designing an artificial intelligence capable of performing complex tasks is a mechanism that allows it to efficiently choose appropriate and relevant actions in a variety of situations and contexts. Nowhere is this more obvious than in the case of building a general intelligence, where the contextual choice and application of actions must be done in the presence of large numbers of alternatives, both subtly and obviously distinct from each other. We present a framework for action selection based on the concurrent activity of multiple forward and inverse models. A key characteristic of the proposed system is the use of simulation to choose an action: the system continuously simulates the external states of the world (proximal and distal) by internally emulating the activity of its sensors, adopting the same decision process as if it were actually operating in the world, and basing subsequent choice of action on the outcome of such simulations. The work is part of our larger effort to create new observation-based machine learning techniques. We describe our approach, an early implementation, and an evaluation in a classical AI problem-solving domain: the Sokoban puzzle.

Simulation and anticipation as tools for coordinating with the future

La Tona Giuseppe;Pezzulo Giovanni;
2012

Abstract

A key goal in designing an artificial intelligence capable of performing complex tasks is a mechanism that allows it to efficiently choose appropriate and relevant actions in a variety of situations and contexts. Nowhere is this more obvious than in the case of building a general intelligence, where the contextual choice and application of actions must be done in the presence of large numbers of alternatives, both subtly and obviously distinct from each other. We present a framework for action selection based on the concurrent activity of multiple forward and inverse models. A key characteristic of the proposed system is the use of simulation to choose an action: the system continuously simulates the external states of the world (proximal and distal) by internally emulating the activity of its sensors, adopting the same decision process as if it were actually operating in the world, and basing subsequent choice of action on the outcome of such simulations. The work is part of our larger effort to create new observation-based machine learning techniques. We describe our approach, an early implementation, and an evaluation in a classical AI problem-solving domain: the Sokoban puzzle.
Campo DC Valore Lingua
dc.authority.anceserie ADVANCES IN INTELLIGENT SYSTEMS AND COMPUTING -
dc.authority.orgunit Istituto di linguistica computazionale "Antonio Zampolli" - ILC -
dc.authority.orgunit Istituto di Scienze e Tecnologie della Cognizione - ISTC -
dc.authority.people Dindo Haris it
dc.authority.people La Tona Giuseppe it
dc.authority.people Nivel Heric it
dc.authority.people Pezzulo Giovanni it
dc.authority.people Chella Antonio it
dc.authority.people Thorisson Kristinn R it
dc.collection.id.s 8c50ea44-be95-498f-946e-7bb5bd666b7c *
dc.collection.name 02.01 Contributo in volume (Capitolo o Saggio) *
dc.contributor.appartenenza Istituto di Scienze e Tecnologie della Cognizione - ISTC *
dc.contributor.appartenenza.mi 986 *
dc.date.accessioned 2024/02/16 01:51:00 -
dc.date.available 2024/02/16 01:51:00 -
dc.date.issued 2012 -
dc.description.abstracteng A key goal in designing an artificial intelligence capable of performing complex tasks is a mechanism that allows it to efficiently choose appropriate and relevant actions in a variety of situations and contexts. Nowhere is this more obvious than in the case of building a general intelligence, where the contextual choice and application of actions must be done in the presence of large numbers of alternatives, both subtly and obviously distinct from each other. We present a framework for action selection based on the concurrent activity of multiple forward and inverse models. A key characteristic of the proposed system is the use of simulation to choose an action: the system continuously simulates the external states of the world (proximal and distal) by internally emulating the activity of its sensors, adopting the same decision process as if it were actually operating in the world, and basing subsequent choice of action on the outcome of such simulations. The work is part of our larger effort to create new observation-based machine learning techniques. We describe our approach, an early implementation, and an evaluation in a classical AI problem-solving domain: the Sokoban puzzle. -
dc.description.affiliations [1] University of Palermo Computer Science Engineering Viale delle Scienze, Ed. 6, Palermo, Italy; [2] Center for Analysis & Design of Intelligent Agents and School of Computer Science (CADIA), Reykjavik University, Menntavegur 1, IS-101 Reykjavik, Iceland; [3] CNR-ISTC, Roma; [4] Icelandic Institute for Intelligent Machines, Uranus 2. h., Menntavegur 1, IS-101 Reykjavik, Iceland -
dc.description.allpeople Dindo, Haris ; La Tona, Giuseppe ; Nivel, Heric ; Pezzulo, Giovanni ; Chella, Antonio ; Thorisson, Kristinn R. -
dc.description.allpeopleoriginal Dindo, Haris [1]; La Tona, Giuseppe [1]; Nivel, Heric [2]; Pezzulo, Giovanni [3]; Chella, Antonio [1]; Thorisson, Kristinn R. [4] -
dc.description.fulltext none en
dc.description.note ID_PUMA: /cnr.ilc/2012-A1-002 -
dc.description.numberofauthors 1 -
dc.identifier.uri https://hdl.handle.net/20.500.14243/4557 -
dc.identifier.url http://link.springer.com/content/pdf/10.1007%2F978-3-642-34274-5_24 -
dc.language.iso eng -
dc.publisher.country DEU -
dc.publisher.name Springer-Verlag -
dc.publisher.place Berlin Heidelberg -
dc.relation.alleditors A. Chella et al. (Eds.) -
dc.relation.firstpage 117 -
dc.relation.ispartofbook Biologically Inspired Cognitive Architectures -
dc.relation.lastpage 125 -
dc.subject.keywords Machine learning techniques -
dc.subject.singlekeyword Machine learning techniques *
dc.title Simulation and anticipation as tools for coordinating with the future en
dc.type.driver info:eu-repo/semantics/bookPart -
dc.type.full 02 Contributo in Volume::02.01 Contributo in volume (Capitolo o Saggio) it
dc.type.miur 268 -
dc.type.referee Sì, ma tipo non specificato -
dc.ugov.descaux1 218892 -
iris.orcid.lastModifiedDate 2024/03/02 04:09:23 *
iris.orcid.lastModifiedMillisecond 1709348963088 *
iris.sitodocente.maxattempts 1 -
Appare nelle tipologie: 02.01 Contributo in volume (Capitolo o Saggio)
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/4557
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