Ontology of Belief Diversity: A Community-Based Epistemological Approach

Authors

  • Richard Zhang Google Google Deepmind
  • Erin Van Liemt Google Google Research
  • Tyler Fischella Google

DOI:

https://doi.org/10.1609/aies.v7i1.31761

Abstract

AI applications across classification, fairness, and human interaction often implicitly require ontologies of social concepts. Constructing these well – especially when there are many relevant categories – is a controversial task but is crucial for achieving meaningful inclusivity. Here, we focus on developing a pragmatic ontology of belief systems, which isa complex and often controversial space. By iterating on our community-based design until mutual agreement is reached, we found that epistemological methods were best for categorizing the fundamental ways beliefs differ, maximally respecting our principles of inclusivity and brevity. We demonstrate our methodology’s utility and interpretability via user studies in term annotation and sentiment analysis experiments for belief fairness in language models

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Published

2024-10-16

How to Cite

Zhang, R., Van Liemt, E., & Fischella, T. (2024). Ontology of Belief Diversity: A Community-Based Epistemological Approach. Proceedings of the AAAI/ACM Conference on AI, Ethics, and Society, 7(1), 1735-1743. https://doi.org/10.1609/aies.v7i1.31761