Lossy Compression and the Granularity of Causal Representation

Published: 27 Oct 2023, Last Modified: 27 Nov 2023InfoCog@NeurIPS2023 OralEveryoneRevisionsBibTeX
Keywords: granularity; compression; causal representation
TL;DR: People prefer more compressed causal models when all other factors are held fixed, with some further tolerance for lossy compressions.
Abstract: A given causal system can be represented in a variety of ways. How do agents determine which variables to include in their causal representations, and at what level of granularity? Using techniques from information theory, we develop a formal theory according to which causal representations reflect a trade-off between compression and informativeness. We then show, across three studies (N=1,391), that participants’ choices over causal models demonstrate a preference for more compressed causal models when all other factors are held fixed, with some further tolerance for lossy compressions.
Submission Number: 6
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