Semantic Scholar Open Access 2018 29 sitasi

Discrete-Continuous Mixtures in Probabilistic Programming: Generalized Semantics and Inference Algorithms

Yi Wu Siddharth Srivastava N. Hay S. Du Stuart J. Russell

Abstrak

Despite the recent successes of probabilistic programming languages (PPLs) in AI applications, PPLs offer only limited support for random variables whose distributions combine discrete and continuous elements. We develop the notion of measure-theoretic Bayesian networks (MTBNs) and use it to provide more general semantics for PPLs with arbitrarily many random variables defined over arbitrary measure spaces. We develop two new general sampling algorithms that are provably correct under the MTBN framework: the lexicographic likelihood weighting (LLW) for general MTBNs and the lexicographic particle filter (LPF), a specialized algorithm for state-space models. We further integrate MTBNs into a widely used PPL system, BLOG, and verify the effectiveness of the new inference algorithms through representative examples.

Topik & Kata Kunci

Penulis (5)

Y

Yi Wu

S

Siddharth Srivastava

N

N. Hay

S

S. Du

S

Stuart J. Russell

Format Sitasi

Wu, Y., Srivastava, S., Hay, N., Du, S., Russell, S.J. (2018). Discrete-Continuous Mixtures in Probabilistic Programming: Generalized Semantics and Inference Algorithms. https://www.semanticscholar.org/paper/8a5004f4b0cc1437ba1b31f219054fb52a302740

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Tahun Terbit
2018
Bahasa
en
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Semantic Scholar
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Open Access ✓