Publicly available off-the-shelf word embeddings that are often used in productive applications for natural language processing have been proven to be biased. We have previously shown that this bias can come in a different form, depending on the language and the cultural context. In this work we extend our previous work and further investigate how bias varies in different languages. We examine Italian and Swedish word embeddings for gender and origin bias, and demonstrate how an origin bias concerning local migration groups in Switzerland is included in German word embeddings. We propose BiasWords, a method to automatically detect new forms of bias. Finally, we discuss how cultural and language aspects are relevant to the impact of bias on ...
The ever-increasing number of systems based on semantic text analysis is making natural language und...
The creation of word embeddings is one of the key breakthroughs in natural language processing. Word...
Gender stereotypes have endured despite substantial change in gender roles. Previous work has assess...
Smart applications often rely on training data in form of text. If there is a bias in tha...
In this work we study gender bias in Italian word embeddings (WEs), evaluating whether they encode g...
Contextualized word embeddings have been replacing standard embeddings as the representational knowl...
Word embeddings are useful for various applications, such as sentiment classification (Tang et al., ...
Machine learning algorithms are optimized to model statistical properties of the training data. If...
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...
It has been shown that word embeddings can exhibit gender bias, and various methods have been propos...
As machine learning becomes more influential in everyday life, we must begin addressing potential sh...
The statistical regularities in language corpora encode well-known social biases into word embedding...
Neural machine translation systems have substantially improved the quality of translation output, ye...
Large text corpora used for creating word embeddings (vectors which represent word meanings) often c...
The ever-increasing number of systems based on semantic text analysis is making natural language und...
The creation of word embeddings is one of the key breakthroughs in natural language processing. Word...
Gender stereotypes have endured despite substantial change in gender roles. Previous work has assess...
Smart applications often rely on training data in form of text. If there is a bias in tha...
In this work we study gender bias in Italian word embeddings (WEs), evaluating whether they encode g...
Contextualized word embeddings have been replacing standard embeddings as the representational knowl...
Word embeddings are useful for various applications, such as sentiment classification (Tang et al., ...
Machine learning algorithms are optimized to model statistical properties of the training data. If...
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...
It has been shown that word embeddings can exhibit gender bias, and various methods have been propos...
As machine learning becomes more influential in everyday life, we must begin addressing potential sh...
The statistical regularities in language corpora encode well-known social biases into word embedding...
Neural machine translation systems have substantially improved the quality of translation output, ye...
Large text corpora used for creating word embeddings (vectors which represent word meanings) often c...
The ever-increasing number of systems based on semantic text analysis is making natural language und...
The creation of word embeddings is one of the key breakthroughs in natural language processing. Word...
Gender stereotypes have endured despite substantial change in gender roles. Previous work has assess...