Out of One, Many: Using Language Models to Simulate Human Samples
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Abstract
Abstract We propose and explore the possibility that language models can be studied as effective proxies for specific human subpopulations in social science research. Practical and research applications of artificial intelligence tools have sometimes been limited by problematic biases (such as racism or sexism), which are often treated as uniform properties of the models. We show that the “algorithmic bias” within one such tool—the GPT-3 language model—is instead both fine-grained and demographically correlated, meaning that proper conditioning will cause it to accurately emulate response distributions from a wide variety of human subgroups. We term this property algorithmic fidelity and explore its extent in…
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6Topics & keywords
Topics
Keywords
- Variety (cybernetics)
- Fidelity
- Computer science
- Context (archaeology)
- Sociocultural evolution
- Meaning (existential)
- Data science
- Similarity (geometry)
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