International audienceRecent advances in Representation Learning have discovered a strong inclination for pre-trained word embeddings to demonstrate unfair and discriminatory gender stereotypes. These usually come in the shape of unjustified associations between representations of group words (e.g., male or female) and attribute words (e.g. driving, cooking, doctor, nurse, etc.) In this paper, we propose an iterative and adversarial procedure to reduce gender bias in word vectors. We aim to remove gender influence from word representations that should otherwise be free of it, while retaining meaningful gender information in words that are inherently charged with gender polarity (male or female). We confine these gender signals in a sub-vect...
Natural language models and systems have been shown to reflect gender bias existing in training data....
The ever-increasing number of applications based on semantic text analysis is making natural languag...
Word embeddings carry stereotypical connotations from the text they are trained on, which can lead t...
With the constant advancement of the way that we use technology, there is often a blind application ...
Word embedding has become essential for natural language processing as it boosts empirical performan...
The blind application of machine learning runs the risk of amplifying biases present in data. Such a...
Words embeddings are the fundamental input to a wide and varied range of NLP applications. It has be...
Language models are used for a variety of downstream applications, such as improving web search resu...
The ever-increasing number of systems based on semantic text analysis is making natural language und...
With widening deployments of natural language processing (NLP) in daily life, inherited social biase...
From Curriculum Vitae parsing to web search and recommendation systems, Word2Vec and other word embe...
From Curriculum Vitae parsing to web search and recommendation systems, Word2Vec and other word embe...
Machine learning algorithms are optimized to model statistical properties of the training data. If...
Wagner J, Zarrieß S. Do gender neutral affixes naturally reduce gender bias in static word embedding...
Word embedding captures the semantic and syntactic meaning of words into dense vectors. It contains ...
Natural language models and systems have been shown to reflect gender bias existing in training data....
The ever-increasing number of applications based on semantic text analysis is making natural languag...
Word embeddings carry stereotypical connotations from the text they are trained on, which can lead t...
With the constant advancement of the way that we use technology, there is often a blind application ...
Word embedding has become essential for natural language processing as it boosts empirical performan...
The blind application of machine learning runs the risk of amplifying biases present in data. Such a...
Words embeddings are the fundamental input to a wide and varied range of NLP applications. It has be...
Language models are used for a variety of downstream applications, such as improving web search resu...
The ever-increasing number of systems based on semantic text analysis is making natural language und...
With widening deployments of natural language processing (NLP) in daily life, inherited social biase...
From Curriculum Vitae parsing to web search and recommendation systems, Word2Vec and other word embe...
From Curriculum Vitae parsing to web search and recommendation systems, Word2Vec and other word embe...
Machine learning algorithms are optimized to model statistical properties of the training data. If...
Wagner J, Zarrieß S. Do gender neutral affixes naturally reduce gender bias in static word embedding...
Word embedding captures the semantic and syntactic meaning of words into dense vectors. It contains ...
Natural language models and systems have been shown to reflect gender bias existing in training data....
The ever-increasing number of applications based on semantic text analysis is making natural languag...
Word embeddings carry stereotypical connotations from the text they are trained on, which can lead t...