Computational models of phonotactics share much in common with language models, which assign probabilities to sequences of words. While state of the art language models are implemented using neural networks, phonotactic models have not followed suit. We present several neural models of phonotactics, and show that they perform favorably when compared to existing models. In addition, they provide useful insights into the role of representations on phonotactic learning and generalization. This work provides a promising starting point for future modeling of human phonotactic knowledge
Why do artificial neural networks model language so well? We claim that in order to answer this ques...
Does knowledge of language consist of symbolic rules? How do children learn and use their linguistic...
In Linguistics and Psycholinguistics, phonotactics refers to the constraints on individual sounds in...
This paper argues that if phonological and phonetic phenomena found in language data and in experime...
This dissertation tests sequence-to-sequence neural networks to see whether they can simulate human ...
We discuss experiments with neural networks being trained in a phonotactic processing task. A recurr...
Currently, N-gram models are the most common and widely used models for statistical language modelin...
The very promising reported results of Neural Networks grammar modelling has motivated a lot of rese...
We present a model of gradient phonotactics that is shown to reduce overall phoneme uncertainty in a...
Currently, N-gram models are the most common and widely used models for statistical language modelin...
Recurrent neural networks (RNNs) are exceptionally good models of distributions over natural languag...
We present a probabilistic model of phonotactics, the set of well-formed phoneme sequences in a lang...
A number of experiments have demonstrated what seems to be a bias in human phonological learning for...
We examine the inductive inference of a complex grammar - specifically, we consider the task of trai...
Language modeling has been widely used in the application of natural language processing, and there...
Why do artificial neural networks model language so well? We claim that in order to answer this ques...
Does knowledge of language consist of symbolic rules? How do children learn and use their linguistic...
In Linguistics and Psycholinguistics, phonotactics refers to the constraints on individual sounds in...
This paper argues that if phonological and phonetic phenomena found in language data and in experime...
This dissertation tests sequence-to-sequence neural networks to see whether they can simulate human ...
We discuss experiments with neural networks being trained in a phonotactic processing task. A recurr...
Currently, N-gram models are the most common and widely used models for statistical language modelin...
The very promising reported results of Neural Networks grammar modelling has motivated a lot of rese...
We present a model of gradient phonotactics that is shown to reduce overall phoneme uncertainty in a...
Currently, N-gram models are the most common and widely used models for statistical language modelin...
Recurrent neural networks (RNNs) are exceptionally good models of distributions over natural languag...
We present a probabilistic model of phonotactics, the set of well-formed phoneme sequences in a lang...
A number of experiments have demonstrated what seems to be a bias in human phonological learning for...
We examine the inductive inference of a complex grammar - specifically, we consider the task of trai...
Language modeling has been widely used in the application of natural language processing, and there...
Why do artificial neural networks model language so well? We claim that in order to answer this ques...
Does knowledge of language consist of symbolic rules? How do children learn and use their linguistic...
In Linguistics and Psycholinguistics, phonotactics refers to the constraints on individual sounds in...