It has been reported in the literature that both adults and children can, to a different degree, modify and regularize the often-inconsistent linguistic input they receive. We present a new algorithm to model and investigate the learning process of a learner mastering a set of (grammatical or lexical) forms from an inconsistent source. The algorithm is related to reinforcement learning and drift-diffusion models of decision making, and possesses several psychologically relevant properties such as fidelity, robustness, discounting, and computational simplicity. It demonstrates how a learner can successfully learn from or even surpass its imperfect source. We use the data collected by Singleton and Newport (Cognit Psychol 49(4):370-407, 2004)...
This study investigates the effects of impoverished input upon a child's language development. Previ...
Adults, infants, and other species are able to learn and generalize abstract patterns from sequentia...
Statistical learning refers to the ability to identify structure in the input based on its statistic...
It has been reported in the literature that both adults and children can, to a different degree, mod...
When modeling language mathematically, we can look both at how an individual learns language, and at...
Learning in natural environments is often characterized by a degree of inconsistency from an input. ...
In current linguistic theory, natural languages are thought to depend on extensive interaction betw...
Acquiring language is notoriously complex, yet for the majority of children this feat is accomplishe...
Artificial Language Learning (ALL) is a key paradigm to study the nature of learning mechanisms in l...
When learners are exposed to inconsistent input, do they reproduce the probabilities in the input (p...
The nature and amount of information needed for learning a natural language, and the underlying mech...
How do children learn language in a way that allows generalization -- producing and comprehending ut...
This paper reports on a limited model of language evolution that incorporates transmission noise and...
Thesis (Ph. D.)--University of Rochester. Dept. of Brain & Cognitive Sciences, 2010.When linguistic ...
In a series of studies children show increasing mastery of irregular plural forms (such as mice) sim...
This study investigates the effects of impoverished input upon a child's language development. Previ...
Adults, infants, and other species are able to learn and generalize abstract patterns from sequentia...
Statistical learning refers to the ability to identify structure in the input based on its statistic...
It has been reported in the literature that both adults and children can, to a different degree, mod...
When modeling language mathematically, we can look both at how an individual learns language, and at...
Learning in natural environments is often characterized by a degree of inconsistency from an input. ...
In current linguistic theory, natural languages are thought to depend on extensive interaction betw...
Acquiring language is notoriously complex, yet for the majority of children this feat is accomplishe...
Artificial Language Learning (ALL) is a key paradigm to study the nature of learning mechanisms in l...
When learners are exposed to inconsistent input, do they reproduce the probabilities in the input (p...
The nature and amount of information needed for learning a natural language, and the underlying mech...
How do children learn language in a way that allows generalization -- producing and comprehending ut...
This paper reports on a limited model of language evolution that incorporates transmission noise and...
Thesis (Ph. D.)--University of Rochester. Dept. of Brain & Cognitive Sciences, 2010.When linguistic ...
In a series of studies children show increasing mastery of irregular plural forms (such as mice) sim...
This study investigates the effects of impoverished input upon a child's language development. Previ...
Adults, infants, and other species are able to learn and generalize abstract patterns from sequentia...
Statistical learning refers to the ability to identify structure in the input based on its statistic...