Distinguishing antonyms from synonyms is a key challenge for many NLP applications focused on the lexical-semantic relation extraction. Existing solutions relying on large-scale corpora yield low performance because of huge contextual overlap of antonym and synonym pairs. We propose a novel approach entirely based on pre-trained embeddings. We hypothesize that the pre-trained embeddings comprehend a blend of lexical-semantic information and we may distill the task-specific information using Distiller, a model proposed in this paper. Later, a classifier is trained based on features constructed from the distilled sub-spaces along with some word level features to distinguish antonyms from synonyms. Experimental results show that the proposed m...
Word vector space specialisation models offer a portable, light-weight approach to fine-tuning arbit...
We extend a lexical knowledge-base of near-synonym differences with knowledge about their collocat...
We develop a new computational model for representing the �ne-grained meanings of nearsynonyms and t...
For many NLP applications such as In-formation Extraction and Sentiment De-tection, it is of vital i...
Since modern word embeddings are motivated by a distributional hypothesis and are, therefore, based ...
Automatic detection of antonymy is an important task in Natural Language Processing (NLP) for Inform...
Slovenian datasets for contextual synonym and antonym detection can be used for training machine lea...
Many research studies adopt manually selected patterns for semantic relation extraction. However, ma...
International audienceRecognizing and distinguishing antonyms from other types of semantic relations...
Distributional similarity has been widely used to capture the semantic relatedness of words in many ...
Proceedings of the NODALIDA 2009 workshop WordNets and other Lexical Semantic Resources — between L...
Many research studies adopt manually selected patterns for semantic relation extraction. However, ma...
Recognizing analogies, synonyms, antonyms, and associations appear to be four distinct tasks, requir...
We describe a novel approach to generate high-quality lexical word embeddings from an Enhanced Neura...
Choosing the wrong word in a machine translation or natural language generation system can convey un...
Word vector space specialisation models offer a portable, light-weight approach to fine-tuning arbit...
We extend a lexical knowledge-base of near-synonym differences with knowledge about their collocat...
We develop a new computational model for representing the �ne-grained meanings of nearsynonyms and t...
For many NLP applications such as In-formation Extraction and Sentiment De-tection, it is of vital i...
Since modern word embeddings are motivated by a distributional hypothesis and are, therefore, based ...
Automatic detection of antonymy is an important task in Natural Language Processing (NLP) for Inform...
Slovenian datasets for contextual synonym and antonym detection can be used for training machine lea...
Many research studies adopt manually selected patterns for semantic relation extraction. However, ma...
International audienceRecognizing and distinguishing antonyms from other types of semantic relations...
Distributional similarity has been widely used to capture the semantic relatedness of words in many ...
Proceedings of the NODALIDA 2009 workshop WordNets and other Lexical Semantic Resources — between L...
Many research studies adopt manually selected patterns for semantic relation extraction. However, ma...
Recognizing analogies, synonyms, antonyms, and associations appear to be four distinct tasks, requir...
We describe a novel approach to generate high-quality lexical word embeddings from an Enhanced Neura...
Choosing the wrong word in a machine translation or natural language generation system can convey un...
Word vector space specialisation models offer a portable, light-weight approach to fine-tuning arbit...
We extend a lexical knowledge-base of near-synonym differences with knowledge about their collocat...
We develop a new computational model for representing the �ne-grained meanings of nearsynonyms and t...