This paper shows how a neural network can model the way people who have acquired knowledge of an artificial grammar in one perceptual domain (e.g., sequences of tones differing in pitch) can apply the knowledge to a quite different perceptual domain (e.g., sequences of letters). It is shown that a version of the Simple Recurrent Network (SRN) can transfer its knowledge of artificial grammars across domains without feedback. The performance of the model is sensitive to at least some of the same variables that affect subjects' performance—for example, the model is responsive to both the grammaticality of test sequences and their similarity to training sequences, to the cover task used during training, and to whether training is on bigrams or ...
Infants can discriminate between familiar and unfamiliar grammatical patterns expressed in a vocabul...
Previous work in knowledge transfer in machine learn-ing has been restricted to tasks in a single do...
This work describes an approach for inferring Deterministic Context-free (DCF) Grammars in a Connect...
It has been known that people, after being exposed to sentences generated by an artificial grammar, ...
Although many studies have provided evidence that abstract knowledge can be acquired in artificial g...
The current generation of neural network-based natural language processing models excels at learning...
The current generation of neural network-based natural language processing models excels at learning...
The Artificial Grammar Learning (AGL) paradigm provides a means to study the nature of syntactic pro...
This paper examines the inductive inference of a complex grammar with neural networks -- specificall...
This paper examines the inductive inference of a complex grammar with neural networks -- specificall...
The Artificial Grammar Learning (AGL) paradigm provides a means to study the nature of syntactic pro...
This article covers methodological nd theoretical issues in artificial grammar learning. Arguments t...
This paper examines the inductive inference of a complex grammar with neural networks¿specifically, ...
This paper argues that if phonological and phonetic phenomena found in language data and in experime...
Most neural network learning algorithms cannot use knowledge other than what is provided in the trai...
Infants can discriminate between familiar and unfamiliar grammatical patterns expressed in a vocabul...
Previous work in knowledge transfer in machine learn-ing has been restricted to tasks in a single do...
This work describes an approach for inferring Deterministic Context-free (DCF) Grammars in a Connect...
It has been known that people, after being exposed to sentences generated by an artificial grammar, ...
Although many studies have provided evidence that abstract knowledge can be acquired in artificial g...
The current generation of neural network-based natural language processing models excels at learning...
The current generation of neural network-based natural language processing models excels at learning...
The Artificial Grammar Learning (AGL) paradigm provides a means to study the nature of syntactic pro...
This paper examines the inductive inference of a complex grammar with neural networks -- specificall...
This paper examines the inductive inference of a complex grammar with neural networks -- specificall...
The Artificial Grammar Learning (AGL) paradigm provides a means to study the nature of syntactic pro...
This article covers methodological nd theoretical issues in artificial grammar learning. Arguments t...
This paper examines the inductive inference of a complex grammar with neural networks¿specifically, ...
This paper argues that if phonological and phonetic phenomena found in language data and in experime...
Most neural network learning algorithms cannot use knowledge other than what is provided in the trai...
Infants can discriminate between familiar and unfamiliar grammatical patterns expressed in a vocabul...
Previous work in knowledge transfer in machine learn-ing has been restricted to tasks in a single do...
This work describes an approach for inferring Deterministic Context-free (DCF) Grammars in a Connect...