CLNov 14, 2022

Speaking Multiple Languages Affects the Moral Bias of Language Models

arXiv:2211.07733v2240 citationsh-index: 31
Originality Synthesis-oriented
AI Analysis

This work addresses the risk of misaligned moral biases in AI systems for users across different languages, though it is incremental as it extends existing frameworks to multilingual contexts.

The study investigated whether pre-trained multilingual language models encode moral biases that vary by language and found that these biases do not align with human cultural differences, potentially leading to harmful outcomes in cross-lingual applications.

Pre-trained multilingual language models (PMLMs) are commonly used when dealing with data from multiple languages and cross-lingual transfer. However, PMLMs are trained on varying amounts of data for each language. In practice this means their performance is often much better on English than many other languages. We explore to what extent this also applies to moral norms. Do the models capture moral norms from English and impose them on other languages? Do the models exhibit random and thus potentially harmful beliefs in certain languages? Both these issues could negatively impact cross-lingual transfer and potentially lead to harmful outcomes. In this paper, we (1) apply the MoralDirection framework to multilingual models, comparing results in German, Czech, Arabic, Chinese, and English, (2) analyse model behaviour on filtered parallel subtitles corpora, and (3) apply the models to a Moral Foundations Questionnaire, comparing with human responses from different countries. Our experiments demonstrate that, indeed, PMLMs encode differing moral biases, but these do not necessarily correspond to cultural differences or commonalities in human opinions. We release our code and models.

Code Implementations1 repo
Foundations

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