International audienceWord Embeddings (WE) have recently imposed themselves as a standard for representing word meaning in NLP. Semantic similarity between word pairs has become the most common evaluation benchmark for these representations, with vector cosine being typically used as the only similarity metric. In this paper, we report experiments with a rank-based metric for WE, which performs comparably to vector cosine in similarity estimation and out-performs it in the recently-introduced and challenging task of outlier detection, thus suggesting that rank-based measures can improve clustering quality
Recent works on word representations mostly rely on predictive models. Distributed word representati...
Evaluating semantic similarity of texts is a task that assumes paramount importance in real-world ap...
The dependency of word similarity in vector space models on the frequency of words has been noted in...
International audienceWord Embeddings (WE) have recently imposed themselves as a standard for repres...
International audienceWord embeddings intervene in a wide range of natural language processing tasks...
We assess the suitability of word embeddings for practical information retrieval scenarios. Thus, we...
Semantic similarity is fundamental operation in the field of computational lexical semantics, artifi...
We present a new framework for an intrinsic evaluation of word vector representations based on the o...
International audienceComputing pairwise word semantic similarity is widely used and serves as a bui...
Recent trends suggest that neural-network-inspired word embedding models outperform traditional coun...
Distributed language representation has become the most widely used technique for language represent...
Distributed language representation has become the most widely used technique for language represent...
Measuring the semantic similarity of texts has a vital role in various tasks from the field of natur...
Measuring the semantic similarity of texts has a vital role in various tasks from the field of natur...
Traditional machine translation evaluation metrics such as BLEU and WER have been widely used, but t...
Recent works on word representations mostly rely on predictive models. Distributed word representati...
Evaluating semantic similarity of texts is a task that assumes paramount importance in real-world ap...
The dependency of word similarity in vector space models on the frequency of words has been noted in...
International audienceWord Embeddings (WE) have recently imposed themselves as a standard for repres...
International audienceWord embeddings intervene in a wide range of natural language processing tasks...
We assess the suitability of word embeddings for practical information retrieval scenarios. Thus, we...
Semantic similarity is fundamental operation in the field of computational lexical semantics, artifi...
We present a new framework for an intrinsic evaluation of word vector representations based on the o...
International audienceComputing pairwise word semantic similarity is widely used and serves as a bui...
Recent trends suggest that neural-network-inspired word embedding models outperform traditional coun...
Distributed language representation has become the most widely used technique for language represent...
Distributed language representation has become the most widely used technique for language represent...
Measuring the semantic similarity of texts has a vital role in various tasks from the field of natur...
Measuring the semantic similarity of texts has a vital role in various tasks from the field of natur...
Traditional machine translation evaluation metrics such as BLEU and WER have been widely used, but t...
Recent works on word representations mostly rely on predictive models. Distributed word representati...
Evaluating semantic similarity of texts is a task that assumes paramount importance in real-world ap...
The dependency of word similarity in vector space models on the frequency of words has been noted in...