Open Access
Cognitive Biases, Linguistic Universals, and Constraint-Based Grammar Learning : Computational Models of Natural Language
Jennifer Culbertson,Paul Smolensky,Colin Wilson +2 more
- 01 Jan 2013
Vol. 5, Iss: 3, pp 392-424
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TL;DR: We propose a Bayesian model of language learning in which biases range in strength from hard (absolute) to soft (statistical), and in which language-specific and domain-general biases combine to account for data from the macro-level scale of typological distribution.
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Abstract: According to classical arguments, language learning is both facilitated and constrained by cognitive biases. These biases are reflected in linguistic typology-the distribution of linguistic patterns across the world's languages-and can be probed with artificial grammar experiments on child and adult learners. Beginning with a widely successful approach to typology (Optimality Theory), and adapting techniques from computational approaches to statistical learning, we develop a Bayesian model of cognitive biases and show that it accounts for the detailed pattern of results of artificial grammar experiments on noun-phrase word order (Culbertson, Smolensky, & Legendre, 2012). Our proposal has several novel properties that distinguish it from prior work in the domains of linguistic theory, computational cognitive science, and machine learning. This study illustrates how ideas from these domains can be synthesized into a model of language learning in which biases range in strength from hard (absolute) to soft (statistical), and in which language-specific and domain-general biases combine to account for data from the macro-level scale of typological distribution to the micro-level scale of learning by individuals.
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Citations
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TL;DR: A Bayesian probabilistic account of semantically bootstrapped first-language acquisition in the child is developed, based on techniques from computational parsing and interpretation of unrestricted text and simulates several well-documented phenomena from the developmental literature.
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Harmonic biases in child learners: in support of language universals.
TL;DR: This work provides the first evidence that child learners exhibit a preference for typologically common harmonic word order patterns-those which preserve the order of the head with respect to its complements,validating the psychological reality of a principle formalized in many different linguistic theories.
103
Simplicity and specificity in language: Domain general biases have domain specific effects
Jennifer Culbertson,Simon Kirby +1 more
TL;DR: It is argued that interactions between learning, culture, and biological evolution mean any domain-specific adaptations that evolve will take the form of weak biases rather than hard constraints.
How We Know What Not To Think
TL;DR: It is proposed that across diverse cognitive tasks, the possible actions the authors consider are biased towards those of general practical utility, and a plausible primary function for this mechanism resides in decision making.
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Languages adapt to their contextual niche
TL;DR: This study experimentally investigates the role of the communicative situation in which an utterance is produced and how it influences the emergence of three types of linguistic systems: underspecified languages, holistic systems, and systematic languages.
References
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Florencia Reali,Thomas L. Griffiths +1 more
- 01 Jan 2008
TL;DR: Reali et al. as mentioned in this paper explored how regular linguistic structures can emerge from language evolution by iterated learning, in which one person's linguistic output is used to generate the linguistic input pro- vided to the next person.
Relationships Between Language Structure and Language Learning: The Suffixing Preference and Grammatical Categorization
TL;DR: This paper investigates the suffixing preference across the world's languages, whereby inflections tend to be added to the end of words, and finds that suffixes were more accurate at cuing the grammatical category of the root word than were prefixes.
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Structure and linearization in disharmonic word orders
Theresa Biberauer,Anders Holmberg,Ian Roberts +2 more
- 01 Jan 2008
TL;DR: This article found that the tendency for V(erb)-O(bject), Aux(iliary)-V(erb), C(omplementizer)-Sentence and prepositions to co-occur in OV languages can be attributed to different settings of the Head Parameter.
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Biases in Harmonic Grammar: the road to restrictive learning *
TL;DR: This paper demonstrates that altering the mode of constraint interaction from strict ranking as in Optimality Theory to additive weighting as in Harmonic Grammar reduces the number of classes of constraints that must be distinguished by such biases.
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