Hypernetworks are a generalized graph structure representing higher-order interactions between variables. We present a method for self-organizing hypernetworks to learn an associative memory of sentences and to recall the sentences from this memory. This learning method is inspired by the "mental chemistry" model of cognition and the "molecular self-assembly" technology in biochemistry. Simulation experiments are performed on a corpus of natural-language dialogues of approximately 300K sentences collected from TV drama captions. We report on the sentence completion performance as a function of the order of word-interaction and the size of the learning corpus, and discuss the plausibility of this architecture as a cognitive model of language...
We propose a model of memory reconsolidation that can output new sentences with additional meaning a...
As potential candidates for explaining human cognition, connectionist models of sentence processing ...
In this study, a technique called semantic self-organization is used to scale up the subsymbolic app...
Recent interest in human-level intelligence suggests a rethink of the role of machine learning in co...
The paper investigates how a group of distributed agents may develop congruent cognitive memories in...
Several psycholinguistic models represent words as vectors in a high-dimensional state space, such t...
Several psycholinguistic models represent words as vectors in a high-dimensional state space, such t...
In this paper we present a self-organizing connectionist model of the acquisition of word meaning. O...
To understand the brain mechanisms underlying language phenomena, and sentence construction in parti...
This paper demonstrates how associative neural networks as standard models for Hebbian cell assembli...
Much of animal and human cognition is compositional in nature: higher order, complex representations...
Recent experimental evidence on morphological learning and processing has prompted a less determinis...
Human lexical knowledge does not appear to be organised to minimise storage, but rather to maximise ...
In Linguistics and Psycholinguistics, phonotactics refers to the constraints on individual sounds in...
Recent studies of brain connectivity and language with methods of complex networks have revealed com...
We propose a model of memory reconsolidation that can output new sentences with additional meaning a...
As potential candidates for explaining human cognition, connectionist models of sentence processing ...
In this study, a technique called semantic self-organization is used to scale up the subsymbolic app...
Recent interest in human-level intelligence suggests a rethink of the role of machine learning in co...
The paper investigates how a group of distributed agents may develop congruent cognitive memories in...
Several psycholinguistic models represent words as vectors in a high-dimensional state space, such t...
Several psycholinguistic models represent words as vectors in a high-dimensional state space, such t...
In this paper we present a self-organizing connectionist model of the acquisition of word meaning. O...
To understand the brain mechanisms underlying language phenomena, and sentence construction in parti...
This paper demonstrates how associative neural networks as standard models for Hebbian cell assembli...
Much of animal and human cognition is compositional in nature: higher order, complex representations...
Recent experimental evidence on morphological learning and processing has prompted a less determinis...
Human lexical knowledge does not appear to be organised to minimise storage, but rather to maximise ...
In Linguistics and Psycholinguistics, phonotactics refers to the constraints on individual sounds in...
Recent studies of brain connectivity and language with methods of complex networks have revealed com...
We propose a model of memory reconsolidation that can output new sentences with additional meaning a...
As potential candidates for explaining human cognition, connectionist models of sentence processing ...
In this study, a technique called semantic self-organization is used to scale up the subsymbolic app...