The EfProb Library for Probabilistic Calculations

The EfProb Library for Probabilistic Calculations

Authors Kenta Cho, Bart Jacobs



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Kenta Cho
Bart Jacobs

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Kenta Cho and Bart Jacobs. The EfProb Library for Probabilistic Calculations. In 7th Conference on Algebra and Coalgebra in Computer Science (CALCO 2017). Leibniz International Proceedings in Informatics (LIPIcs), Volume 72, pp. 25:1-25:8, Schloss Dagstuhl – Leibniz-Zentrum für Informatik (2017) https://doi.org/10.4230/LIPIcs.CALCO.2017.25

Abstract

EfProb is an abbreviation of Effectus Probability. It is the name of
a library for probability calculations in Python. EfProb offers a
uniform language for discrete, continuous and quantum probability.
For each of these three cases, the basic ingredients of the language
are states, predicates, and channels. Probabilities are typically
calculated as validities of predicates in states. States can be
updated (conditioned) with predicates. Channels can be used for state
transformation and for predicate transformation. This short paper
gives an overview of the use of EfProb.

Subject Classification

Keywords
  • probability
  • embedded language
  • effectus theory

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References

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  6. B. Jacobs and K. Cho. EfProb user manual. 2017. URL: https://efprob.cs.ru.nl.
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