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Toward a Connectionist Model of Recursion in Human Linguistic Performance
Author(s) -
Christiansen Morten H,
Chater Nick
Publication year - 1999
Publication title -
cognitive science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.498
H-Index - 114
eISSN - 1551-6709
pISSN - 0364-0213
DOI - 10.1207/s15516709cog2302_2
Subject(s) - connectionism , recursion (computer science) , computer science , probabilistic logic , formal grammar , grammar , dependency (uml) , embedding , theoretical computer science , artificial intelligence , natural language processing , algorithm , linguistics , artificial neural network , rule based machine translation , philosophy
Naturally occurring speech contains only a limited amount of complex recursive structure, and this is reflected in the empirically documented difficulties that people experience when processing such structures. We present a connectionist model of human performance in processing recursive language structures. The model is trained on simple artificial languages. We find that the qualitative performance profile of the model matches human behavior, both on the relative difficulty of center‐embedding and cross‐dependency, and between the processing of these complex recursive structures and right‐branching recursive constructions. We analyze how these differences in performance are reflected in the internal representations of the model by performing discriminant analyses on these representations both before and after training. Furthermore, we show how a network trained to process recursive structures can also generate such structures in a probabilistic fashion. This work suggests a novel explanation of people's limited recursive performance, without assuming the existence of a mentally represented competence grammar allowing unbounded recursion.

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