Shades of Zero: Distinguishing Impossibility from Inconceivability
Jennifer Hu, Felix Sosa, Tomer Ullman

TL;DR
This paper explores how people distinguish between impossible and inconceivable events, revealing that both humans and language models can differentiate these categories, with probabilities predicting human judgments, suggesting statistical learning of rare event concepts.
Contribution
It provides empirical evidence that humans and language models can distinguish impossible from inconceivable events, highlighting the role of statistical learning in understanding rare concepts.
Findings
People can distinguish impossible from inconceivable events.
Subjective likelihood ratings do not differentiate these categories.
Language model probabilities align with human judgments.
Abstract
Some things are impossible, but some things may be even more impossible than impossible. Levitating a feather using one's mind is impossible in our world, but fits into our intuitive theories of possible worlds, whereas levitating a feather using the number five cannot be conceived in any possible world ("inconceivable"). While prior work has examined the distinction between improbable and impossible events, there has been little empirical research on inconceivability. Here, we investigate whether people maintain a distinction between impossibility and inconceivability, and how such distinctions might be made. We find that people can readily distinguish the impossible from the inconceivable, using categorization studies similar to those used to investigate the differences between impossible and improbable (Experiment 1). However, this distinction is not explained by people's subjective…
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