We present a self-organizing neural network model that can acquire an incremental lexicon. The model allows the acquisition of new words without disrupting learned structure. The model consists of three major components. First, the word co-occurrence detector computes word transition probabilities and represents word meanings in terms of context vectors. Second, word representations are projected to a lower, constant dimension. Third, the growing lexical map (GLM) self-organizes on the dimension-reduced word representations. The model is initialized with a subset of units in GLM and a subset of the lexicon, which enables it to capture the regularities of the input space and decrease chances of catastrophic interference. During growth, new n...
In recent years, a number of models of speech segmentation have been developed, including models bas...
We present a model of early lexical acquisition. Successful word learning builds on pre-existing, se...
This dissertation uses computational modeling to address three related questions regarding the acqui...
In this paper we present a self-organizing neural network model of early lexical development called ...
In this paper we present a self-organizing connectionist model of the acquisition of word meaning. O...
In this paper we present DevLex-II, a self-organizing neural network model of early word production....
Network models of language provide a systematic way of linking a child’s current vocabulary knowledg...
Kohonen's Self-Organizing Map (SOM) is one of the most popular artificial neural network algori...
We present a neurocomputational model with self-organizing maps that accounts for the emergence of t...
Recent experimental evidence on morphological learning and processing has prompted a less determinis...
Young language learners are able to map a word onto its ref-erent from an infinite number of possibl...
Language modeling is a crucial component in a wide range of applications including speech recognitio...
Over the last several years, both theoretical and empirical approaches to lexical knowledge and enco...
Human lexical knowledge does not appear to be organised to minimise storage, but rather to maximise ...
Several psycholinguistic models represent words as vectors in a high-dimensional state space, such t...
In recent years, a number of models of speech segmentation have been developed, including models bas...
We present a model of early lexical acquisition. Successful word learning builds on pre-existing, se...
This dissertation uses computational modeling to address three related questions regarding the acqui...
In this paper we present a self-organizing neural network model of early lexical development called ...
In this paper we present a self-organizing connectionist model of the acquisition of word meaning. O...
In this paper we present DevLex-II, a self-organizing neural network model of early word production....
Network models of language provide a systematic way of linking a child’s current vocabulary knowledg...
Kohonen's Self-Organizing Map (SOM) is one of the most popular artificial neural network algori...
We present a neurocomputational model with self-organizing maps that accounts for the emergence of t...
Recent experimental evidence on morphological learning and processing has prompted a less determinis...
Young language learners are able to map a word onto its ref-erent from an infinite number of possibl...
Language modeling is a crucial component in a wide range of applications including speech recognitio...
Over the last several years, both theoretical and empirical approaches to lexical knowledge and enco...
Human lexical knowledge does not appear to be organised to minimise storage, but rather to maximise ...
Several psycholinguistic models represent words as vectors in a high-dimensional state space, such t...
In recent years, a number of models of speech segmentation have been developed, including models bas...
We present a model of early lexical acquisition. Successful word learning builds on pre-existing, se...
This dissertation uses computational modeling to address three related questions regarding the acqui...