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The Ethereal
Decomposing Probabilistic Lambda-calculi
February 19, 2020 ยท The Ethereal ยท ๐ Foundations of Software Science and Computation Structure
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Authors
Ugo Dal Lago, Giulio Guerrieri, Willem Heijltjes
arXiv ID
2002.08392
Category
cs.LO: Logic in CS
Cross-listed
cs.PL
Citations
14
Venue
Foundations of Software Science and Computation Structure
Last Checked
2 months ago
Abstract
A notion of probabilistic lambda-calculus usually comes with a prescribed reduction strategy, typically call-by-name or call-by-value, as the calculus is non-confluent and these strategies yield different results. This is a break with one of the main advantages of lambda-calculus: confluence, which means results are independent from the choice of strategy. We present a probabilistic lambda-calculus where the probabilistic operator is decomposed into two syntactic constructs: a generator, which represents a probabilistic event; and a consumer, which acts on the term depending on a given event. The resulting calculus, the Probabilistic Event Lambda-Calculus, is confluent, and interprets the call-by-name and call-by-value strategies through different interpretations of the probabilistic operator into our generator and consumer constructs. We present two notions of reduction, one via fine-grained local rewrite steps, and one by generation and consumption of probabilistic events. Simple types for the calculus are essentially standard, and they convey strong normalization. We demonstrate how we can encode call-by-name and call-by-value probabilistic evaluation.
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