نتایج جستجو برای: probabilistic programming

تعداد نتایج: 391583  

2007
Taisuke Sato Neng-Fa Zhou Yoshitaka Kameya Yusuke Izumi

Preface The past few years have witnessed a tremendous interest in logic-based probabilistic learning as testified by the number of formalisms and systems and their applications. Logic-based probabilistic learning is a multidisciplinary research area that integrates relational or logic formalisms, probabilistic reasoning mechanisms, and machine learning and data mining principles. Logic-based p...

2008
Taisuke Sato Neng-Fa Zhou Yoshitaka Kameya Yusuke Izumi

Preface The past few years have witnessed a tremendous interest in logic-based probabilistic learning as testified by the number of formalisms and systems and their applications. Logic-based probabilistic learning is a multidisciplinary research area that integrates relational or logic formalisms, probabilistic reasoning mechanisms, and machine learning and data mining principles. Logic-based p...

2012
Wannes Meert Guy Van den Broeck Nima Taghipour Daan Fierens Hendrik Blockeel Jesse Davis Luc De Raedt

A probabilistic program often gives rise to a complicated underlying probabilistic model. Performing inference in such a model is challenging. One solution to this problem is lifted inference which improves tractability by exploiting symmetries in the underlying model. Our group is pursuing a lifted approach to inference for probabilistic logic programs.

2012
Daan Fierens Guy Van den Broeck Maurice Bruynooghe Luc De Raedt

In knowledge representation, one commonly distinguishes definitions of predicates from constraints. This distinction is also useful for probabilistic programming and statistical relational learning as it explains the key differences between probabilistic programming languages such as ICL, ProbLog and Prism (which are based on definitions) and statistical relational learning languages such as Ma...

2015
Avi Pfeffer Brian Ruttenberg

Figaro is an object–oriented, functional probabilistic programming language (PPL). As an embedded library within Scala, Figaro is a flexible, modular, and powerful PPL that enables users to construct a wide variety of rich, complex, and relational models in a general purpose programming language. Coupled with diverse suite of built-in inference algorithms, Figaro provides the tools needed for u...

2014
Brian E. Ruttenberg Matthew P. Wilkins Avi Pfeffer

Hierarchical representations are common in many artificial intelligence tasks, such as classification of satellites in orbit. Representing and reasoning on hierarchies is difficult, however, as they can be large, deep and constantly evolving. Although probabilistic programming provides the flexibility to model many situations, current probabilistic programming languages (PPL) do not adequately ...

Journal: :CoRR 2015
Razvan Ranca Zoubin Ghahramani

We introduce the first, general purpose, slice sampling inference engine for probabilistic programs. This engine is released as part of StocPy, a new Turing-Complete probabilistic programming language, available as a Python library. We present a transdimensional generalisation of slice sampling which is necessary for the inference engine to work on traces with different numbers of random variab...

2008
Taisuke Sato Neng-Fa Zhou Yoshitaka Kameya Yusuke Izumi

Preface The past few years have witnessed a tremendous interest in logic-based probabilistic learning as testified by the number of formalisms and systems and their applications. Logic-based probabilistic learning is a multidisciplinary research area that integrates relational or logic formalisms, probabilistic reasoning mechanisms, and machine learning and data mining principles. Logic-based p...

2008
Taisuke Sato Neng-Fa Zhou Yoshitaka Kameya Yusuke Izumi

Preface The past few years have witnessed a tremendous interest in logic-based probabilistic learning as testified by the number of formalisms and systems and their applications. Logic-based probabilistic learning is a multidisciplinary research area that integrates relational or logic formalisms, probabilistic reasoning mechanisms, and machine learning and data mining principles. Logic-based p...

2017
Sam Staton

We show that a measure-based denotational semantics for probabilistic programming is commutative. The idea underlying probabilistic programming languages (Anglican, Church, Hakaru, ...) is that programs express statistical models as a combination of prior distributions and likelihood of observations. The product of prior and likelihood is an unnormalized posterior distribution, and the inferenc...

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