2022
DOI: 10.1007/s10516-022-09636-0
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Expanding Observability via Human-Machine Cooperation

Abstract: We ask how to use machine learning to expand observability, which presently depends on human learning that informs conceivability. The issue is engaged by considering the question of correspondence between conceived observability counterfactuals and observable, yet so far unobserved or unconceived, states of affairs. A possible answer lies in importing out of reference frame content which could provide means for conceiving further observability counterfactuals. They allow us to define high-fidelity observabili… Show more

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