International audienceEvaluating bias, fairness, and social impact in monolingual language models is a difficult task. This challenge is further compounded when language modeling occurs in a multilingual context. Considering the implication of evaluation biases for large multilingual language models, we situate the discussion of bias evaluation within a wider context of social scientific research with computational work. We highlight three dimensions of developing multilingual bias evaluation frameworks: (1) increasing transparency through documentation, (2) expanding targets of bias beyond gender, and (3) addressing cultural differences that exist between languages. We further discuss the power dynamics and consequences of training large l...
International audienceWarning: This paper contains explicit statements of offensive stereotypes whic...
International audienceWarning: This paper contains explicit statements of offensive stereotypes whic...
International audienceWarning: This paper contains explicit statements of offensive stereotypes whic...
International audienceEvaluating bias, fairness, and social impact in monolingual language models is...
International audienceEvaluating bias, fairness, and social impact in monolingual language models is...
International audienceEvaluating bias, fairness, and social impact in monolingual language models is...
International audienceIt is well known that AI-based language technology—large language models, mach...
Large neural network-based language models play an increasingly important role in contemporary AI. A...
While understanding and removing gender biases in language models has been a long-standing problem i...
Large language models (LLMs) have brought breakthroughs in tasks including translation, summarizatio...
Large language models have been shown to encode a variety of social biases, which carries the risk o...
Massively multilingual pre-trained language models, such as mBERT and XLM-RoBERTa, have received sig...
Natural Language Processing (NLP) systems are included everywhere on the internet from search engine...
Large Language Models (LLMs) have demonstrated impressive performance on Natural Language Processing...
International audienceWarning: This paper contains explicit statements of offensive stereotypes whic...
International audienceWarning: This paper contains explicit statements of offensive stereotypes whic...
International audienceWarning: This paper contains explicit statements of offensive stereotypes whic...
International audienceWarning: This paper contains explicit statements of offensive stereotypes whic...
International audienceEvaluating bias, fairness, and social impact in monolingual language models is...
International audienceEvaluating bias, fairness, and social impact in monolingual language models is...
International audienceEvaluating bias, fairness, and social impact in monolingual language models is...
International audienceIt is well known that AI-based language technology—large language models, mach...
Large neural network-based language models play an increasingly important role in contemporary AI. A...
While understanding and removing gender biases in language models has been a long-standing problem i...
Large language models (LLMs) have brought breakthroughs in tasks including translation, summarizatio...
Large language models have been shown to encode a variety of social biases, which carries the risk o...
Massively multilingual pre-trained language models, such as mBERT and XLM-RoBERTa, have received sig...
Natural Language Processing (NLP) systems are included everywhere on the internet from search engine...
Large Language Models (LLMs) have demonstrated impressive performance on Natural Language Processing...
International audienceWarning: This paper contains explicit statements of offensive stereotypes whic...
International audienceWarning: This paper contains explicit statements of offensive stereotypes whic...
International audienceWarning: This paper contains explicit statements of offensive stereotypes whic...
International audienceWarning: This paper contains explicit statements of offensive stereotypes whic...