CLAIOct 18, 2024

Speciesism in Natural Language Processing Research

arXiv:2410.14194v18 citationsh-index: 6AI and Ethics
Originality Synthesis-oriented
AI Analysis

This addresses a gap in AI ethics by highlighting bias against nonhuman animals, which is an incremental but important expansion of bias research beyond human-centric concerns.

The study investigated speciesism, or discrimination against nonhuman animals, in NLP research, finding that it exists among researchers, data, and models, with experiments showing that NLP models like OpenAI GPTs exhibit speciesist bias by default.

Natural Language Processing (NLP) research on AI Safety and social bias in AI has focused on safety for humans and social bias against human minorities. However, some AI ethicists have argued that the moral significance of nonhuman animals has been ignored in AI research. Therefore, the purpose of this study is to investigate whether there is speciesism, i.e., discrimination against nonhuman animals, in NLP research. First, we explain why nonhuman animals are relevant in NLP research. Next, we survey the findings of existing research on speciesism in NLP researchers, data, and models and further investigate this problem in this study. The findings of this study suggest that speciesism exists within researchers, data, and models, respectively. Specifically, our survey and experiments show that (a) among NLP researchers, even those who study social bias in AI, do not recognize speciesism or speciesist bias; (b) among NLP data, speciesist bias is inherent in the data annotated in the datasets used to evaluate NLP models; (c) OpenAI GPTs, recent NLP models, exhibit speciesist bias by default. Finally, we discuss how we can reduce speciesism in NLP research.

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