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abstract: 'Current methodologies in the neurosciences have difficulty in accounting for complex phenomena such as language, which can however be quite well characterised in phenomenological terms. This paper addresses the issue of unifying the two approaches. We typically understand complicated systems in terms of a collection of models, each characterisable in principle within a formal system, it being possible to explain higher-level properties in terms of lower level ones by means of a series of inferences based on these models. We consider the nervous system to be a mechanism for implementing the demands of an appropriate collection of models, each concerned with some aspect of brain and behaviour, the observer mechanism of Baas playing an important role in matching model and behaviour in this context. The discussion expounds these ideas in detail, showing their potential utility in connection with real problems of brain and behaviour, important areas where the ideas can be applied including the development of higher levels of abstraction, and linguistic behaviour, as described in the works of Karmiloff-Smith and Jackendoff respectively.'
altloc: []
chapter: ~
commentary: ~
commref: ~
confdates: 'May 16-21, 2004'
conference: International Conference on Complex Systems (ICCS2004)
confloc: 'Boston, MA'
contact_email: ~
creators_id: []
creators_name:
- family: Josephson
given: Brian D.
honourific: ''
lineage: ''
date: 2004
date_type: published
datestamp: 2006-10-15
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dir: disk0/00/00/52/25
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full_text_status: public
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keywords: 'nervous system, brain modelling, language, hyperstructure, representational redescription, emergence'
lastmod: 2011-03-11 08:56:39
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metadata_visibility: show
note: 'Included is the PowerPoint presentation for the lecture, in PowerPoint and pdf formats, and a video interview recorded at the conference on behalf of Complexity Digest.'
number: 'paper '
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publisher: New England Complex Systems Institute (NECSI)
refereed: TRUE
referencetext: |
Arbib, Michael (2000), The Mirror System, in Imitation and the Evolution of Language, in Imitation in Animals and Artifacts, Nehaniv, C. and Dautenhahn, K. (a more recent version of Arbib’s ideas can be found in a commentary document for Brain and Behavioral Sciences, at http://www.bbsonline.org/Preprints/Arbib-05012002/Referees/ )
Baas, N.A. (1994); Emergence, Hierarchies and Hyperstructures; Artificial Life III (ed. C.G. Langton, Addison-Wesley (pp. 515–537).
Jackendoff, R. (2002) Foundations of Language, Oxford, Oxford.
Josephson, B.D. (2002) Abstractions and the Brain, SEED 2, 28–35
(e-print at http://www.library.utoronto.ca/see/SEED/Vol2-2/2-2%20resolved/Josephson_abstract.htm )
Karmiloff-Smith, A. (1992); Beyond Modularity: a Developmental Perspective on Cognitive Science, MIT.
Pinker, S. (1994); The Language Instinct: the New Science of Language; Penguin
Quartz, Steven R. and Sejnowski, Terrence J. (1997) The neural basis of cognitive development: a constructivist manifesto, Behavioural and Brain Sciences 20(4), 537–556.
relation_type: []
relation_uri: []
reportno: ~
rev_number: 14
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source: ~
status_changed: 2007-09-12 17:08:09
subjects:
- neuro-mod
- comp-sci-complex-theory
- ling-learn
succeeds: 4683
suggestions: Your renumbering of file directories broke the links I had included! I'm fixing this now.
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title: How we might be able to Understand the Brain
type: confpaper
userid: 196
volume: interj