Connectionist modal logic: Representing modalities in neural networks

Artur S. d'Avila Garcez, Luís C. Lamb, Dov M. Gabbay

Research output: Contribution to journalArticlepeer-review

30 Scopus citations

Abstract

Modal logics are amongst the most successful applied logical systems. Neural networks were proved to be effective learning systems. In this paper, we propose to combine the strengths of modal logics and neural networks by introducing Connectionist Modal Logics (CML). CML belongs to the domain of neural-symbolic integration, which concerns the application of problem-specific symbolic knowledge within the neurocomputing paradigm. In CML, one may represent, reason or learn modal logics using a neural network. This is achieved by a Modalities Algorithm that translates modal logic programs into neural network ensembles. We show that the translation is sound, i.e. the network ensemble computes a fixed-point meaning of the original modal program, acting as a distributed computational model for modal logic. We also show that the fixed-point computation terminates whenever the modal program is well-behaved. Finally, we validate CML as a computational model for integrated knowledge representation and learning by applying it to a well-known testbed for distributed knowledge representation. This paves the way for a range of applications on integrated knowledge representation and learning, from practical reasoning to evolving multi-agent systems.

Original languageEnglish
Pages (from-to)34-53
Number of pages20
JournalTheoretical Computer Science
Volume371
Issue number1-2
DOIs
StatePublished - 22 Feb 2007
Externally publishedYes

Bibliographical note

Funding Information:
We are grateful to S. Holldobler and the anonymous referees for their useful comments. Artur Garcez is partly funded by The Royal Society, UK. Luis Lamb is partly funded by the Brazilian Research Council CNPq and by the CAPES foundation.

Funding

We are grateful to S. Holldobler and the anonymous referees for their useful comments. Artur Garcez is partly funded by The Royal Society, UK. Luis Lamb is partly funded by the Brazilian Research Council CNPq and by the CAPES foundation.

FundersFunder number
Brazilian Research Council CNPq
CAPES foundation
Royal Society

    Keywords

    • Artificial neural networks
    • Knowledge representation
    • Modal logics
    • Models of computation
    • Neural-symbolic learning systems

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