Recent developments in distributional semantics (Mikolov, Chen, Corrado, & Dean, 2013; Mikolov, Sutskever, Chen, Corrado, & Dean, 2013) include a new class of prediction based models that are trained on a text corpus and that measure semantic similarity between words. We discuss the relevance of these models for psycholinguistic theories and compare them to more traditional distributional semantic models. We compare the models' performances on a large dataset of semantic priming (Hutchison et al., 2013) and on a number of other tasks involving semantic processing and conclude that the prediction-based models usually offer a better fit to behavioral data. Theoretically, we argue that these models bridge the gap between traditional approaches...
Semantic vectors associated with the paper "Don't count, predict! A systematic comparison of context...
Most traditional distributional similarity models fail to capture syntagmatic patterns that group to...
This article explores the distinction between paradigmatic semantic relations, both from a cognitive...
Recent developments in distributional semantics (Mikolov, Chen, Corrado, & Dean, 2013; Mikolov, Suts...
Although models of word meanings based on distributional semantics have proved effective in predicti...
Summarization: In this thesis, motivated by evidences in psycholinguistics and cognition, we propose...
We investigate the effects of two types of relationship between the words of a sentence or text – pr...
A fundamental principle in distributional semantic models is to use similarity in linguistic environ...
Motivated by the widespread use of distributional models of semantics within the cognitive science c...
Most distributional lexico-semantic models derive their representations based on external language r...
The contents and structure of semantic memory have been the focus of much recent research, with majo...
The research presented in this PhD dissertation provides a computational perspective on Semantic Imp...
Most traditional distributional similarity models fail to capture syntagmatic patterns that group to...
Motivated by cognitive lexical models, network-based distributional semantic models (DSMs) were prop...
Context-predicting models (more com-monly known as embeddings or neural language models) are the new...
Semantic vectors associated with the paper "Don't count, predict! A systematic comparison of context...
Most traditional distributional similarity models fail to capture syntagmatic patterns that group to...
This article explores the distinction between paradigmatic semantic relations, both from a cognitive...
Recent developments in distributional semantics (Mikolov, Chen, Corrado, & Dean, 2013; Mikolov, Suts...
Although models of word meanings based on distributional semantics have proved effective in predicti...
Summarization: In this thesis, motivated by evidences in psycholinguistics and cognition, we propose...
We investigate the effects of two types of relationship between the words of a sentence or text – pr...
A fundamental principle in distributional semantic models is to use similarity in linguistic environ...
Motivated by the widespread use of distributional models of semantics within the cognitive science c...
Most distributional lexico-semantic models derive their representations based on external language r...
The contents and structure of semantic memory have been the focus of much recent research, with majo...
The research presented in this PhD dissertation provides a computational perspective on Semantic Imp...
Most traditional distributional similarity models fail to capture syntagmatic patterns that group to...
Motivated by cognitive lexical models, network-based distributional semantic models (DSMs) were prop...
Context-predicting models (more com-monly known as embeddings or neural language models) are the new...
Semantic vectors associated with the paper "Don't count, predict! A systematic comparison of context...
Most traditional distributional similarity models fail to capture syntagmatic patterns that group to...
This article explores the distinction between paradigmatic semantic relations, both from a cognitive...