In this study, a technique called semantic self-organization is used to scale up the subsymbolic approach by allowing a network to optimally allocate frame representations from a semantic dependency graph. The resulting architecture, INSOMNet, was trained on semantic representations of the newly-released LinGO Redwoods HPSG Treebank of anno-tated sentences from the VerbMobil project. The results show that INSOMNet is able to accurately represent the semantic dependencies while demonstrating expectations and defaults, coactivation of multiple interpretations, and robust process-ing of noisy input. The cognitive plausibility of the model is underscored by the collective modelling of four experiments from the visual worlds paradigm to show the...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...
Self-attention model has shown its flexibility in parallel computation and the effectiveness on mode...
This thesis puts forward the view that a purely signal-based approach to natural language processing...
In this study, a technique called semantic self-organization is used to scale up the subsymbolic app...
Hypernetworks are a generalized graph structure representing higher-order interactions between varia...
In this paper we present a self-organizing connectionist model of the acquisition of word meaning. O...
AM dependency parsing is a method for neural semantic graph parsing that exploits the principle of c...
Kohonen's Self-Organizing Map (SOM) is one of the most popular artificial neural network algori...
Empirical thesis."PhD thesis developed at the Philosophische Fakultät, Saarland university and the D...
We propose two general and robust methods for enriching resources annotated in the Frame Semantic pa...
AbstractNatural language understanding is characterized as a bottom-up, constraint-based process whi...
We present a self-organizing neural network model that can acquire an incremental lexicon. The model...
Humans are able to recognize a grammatically correct but semantically anomalous sentence. On the ta...
A fundamental question in natural language processing is - what kind of language structure and seman...
With growing interest in the creation and search of linguistic annotations that form general graphs ...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...
Self-attention model has shown its flexibility in parallel computation and the effectiveness on mode...
This thesis puts forward the view that a purely signal-based approach to natural language processing...
In this study, a technique called semantic self-organization is used to scale up the subsymbolic app...
Hypernetworks are a generalized graph structure representing higher-order interactions between varia...
In this paper we present a self-organizing connectionist model of the acquisition of word meaning. O...
AM dependency parsing is a method for neural semantic graph parsing that exploits the principle of c...
Kohonen's Self-Organizing Map (SOM) is one of the most popular artificial neural network algori...
Empirical thesis."PhD thesis developed at the Philosophische Fakultät, Saarland university and the D...
We propose two general and robust methods for enriching resources annotated in the Frame Semantic pa...
AbstractNatural language understanding is characterized as a bottom-up, constraint-based process whi...
We present a self-organizing neural network model that can acquire an incremental lexicon. The model...
Humans are able to recognize a grammatically correct but semantically anomalous sentence. On the ta...
A fundamental question in natural language processing is - what kind of language structure and seman...
With growing interest in the creation and search of linguistic annotations that form general graphs ...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...
Self-attention model has shown its flexibility in parallel computation and the effectiveness on mode...
This thesis puts forward the view that a purely signal-based approach to natural language processing...