Word embeddings are useful for various applications, such as sentiment classification (Tang et al., 2014), word translation (Xing, Wang, Liu, & Lin, 2015) and résumé parsing (Nasser, Sreejith, & Irshad, 2018). Previous research has determined that word embeddings contain gender bias, which can be problematic in certain applications such as résumé parsing. This research has addressed the question whether gender bias is present in word embeddings of different languages. Gender bias has been measured on word embedding of 26 different lan- guages with the help of the Word Embedding Association Test by Caliskan, Bryson, and Narayanan (2017). The results show that most of the tested languages seem to have bias towards male, while a few la...
Research on language and gender has a long tradition, and large electronic text corpora and novel co...
The ever-increasing number of systems based on semantic text analysis is making natural language und...
Word embedding has become essential for natural language processing as it boosts empirical performan...
The statistical regularities in language corpora encode well-known social biases into word embedding...
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...
Gender bias, a sociological issue, has attracted the attention of scholars working on natural langua...
Smart applications often rely on training data in form of text. If there is a bias in tha...
With the constant advancement of the way that we use technology, there is often a blind application ...
The blind application of machine learning runs the risk of amplifying biases present in data. Such a...
The ever-increasing number of applications based on semantic text analysis is making natural languag...
It has been shown that word embeddings can exhibit gender bias, and various methods have been propos...
Large text corpora used for creating word embeddings (vectors which represent word meanings) often c...
Publicly available off-the-shelf word embeddings that are often used in productive applications for ...
The creation of word embeddings is one of the key breakthroughs in natural language processing. Word...
Research on language and gender has a long tradition, and large electronic text corpora and novel co...
The ever-increasing number of systems based on semantic text analysis is making natural language und...
Word embedding has become essential for natural language processing as it boosts empirical performan...
The statistical regularities in language corpora encode well-known social biases into word embedding...
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...
Gender bias, a sociological issue, has attracted the attention of scholars working on natural langua...
Smart applications often rely on training data in form of text. If there is a bias in tha...
With the constant advancement of the way that we use technology, there is often a blind application ...
The blind application of machine learning runs the risk of amplifying biases present in data. Such a...
The ever-increasing number of applications based on semantic text analysis is making natural languag...
It has been shown that word embeddings can exhibit gender bias, and various methods have been propos...
Large text corpora used for creating word embeddings (vectors which represent word meanings) often c...
Publicly available off-the-shelf word embeddings that are often used in productive applications for ...
The creation of word embeddings is one of the key breakthroughs in natural language processing. Word...
Research on language and gender has a long tradition, and large electronic text corpora and novel co...
The ever-increasing number of systems based on semantic text analysis is making natural language und...
Word embedding has become essential for natural language processing as it boosts empirical performan...