Typesafety for Explicitly-Coded Probabilistic Inference Procedures Atkinson, Eric; Carbin, Michael Researchers have recently proposed several systems that ease the process of developing Bayesian probabilistic inference algorithms. These include systems for automatic inference algorithm synthesis as well as stronger abstractions for manual algorithm development. However, existing systems whose performance relies on the developer manually constructing a part of the inference algorithm have limited support for reasoning about the correctness of the resulting algorithm. In this paper, we present Shuffle, a programming language for developing manual inference algorithms that enforces 1) the basic rules of probability theory and 2) statistical dependencies of the algorithm's corresponding probabilistic model. We have used Shuffle to develop inference algorithms for several standard probabilistic models. Our results demonstrate that Shuffle enables a developer to deliver performant implementations of these algorithms with the added benefit of Shuffle's correctness guarantees.
from Computer Science and Artificial Intelligence Lab (CSAIL) http://ift.tt/2zU8x1Y
Home » Computer Science and Artificial Intelligence Lab (CSAIL) » Typesafety for Explicitly-Coded Probabilistic Inference Procedures
lundi 13 novembre 2017
Typesafety for Explicitly-Coded Probabilistic Inference Procedures
lainnya dari Computer Science and Artificial Intelligence CSAIL, Computer Science and Artificial Intelligence Lab (CSAIL)
Ditulis Oleh : Unknown // 12:30
Kategori:
Computer Science and Artificial Intelligence Lab (CSAIL)
Inscription à :
Publier les commentaires (Atom)
0 commentaires:
Enregistrer un commentaire