Timezone: »
Since the development of loopy belief propagation, there has been considerable work on advancing the state of the art for approximate inference over distributions defined on discrete random variables. Improvements include guarantees of convergence, approximations that are provably more accurate, and bounds on the results of exact inference. However, extending these methods to continuous-valued systems has lagged behind. While several methods have been developed to use belief propagation on systems with continuous values, they have not as yet incorporated the recent advances for discrete variables. In this context we extend a recently proposed particle-based belief propagation algorithm to provide a general framework for adapting discrete message-passing algorithms to perform inference in continuous systems. The resulting algorithms behave similarly to their purely discrete counterparts, extending the benefits of these more advanced inference techniques to the continuous domain.
Author Information
Alexander Ihler (UC Irvine)
Andrew Frank (UC Irvine)
Padhraic Smyth (University of California, Irvine)
More from the Same Authors
-
2021 : Temporal-Difference Value Estimation via Uncertainty-Guided Soft Updates »
Litian Liang · Yaosheng Xu · Stephen McAleer · Dailin Hu · Alexander Ihler · Pieter Abbeel · Roy Fox -
2022 : Probabilistic Querying of Continuous-Time Sequential Events »
Alex Boyd · Yuxin Chang · Stephan Mandt · Padhraic Smyth -
2022 Poster: Predictive Querying for Autoregressive Neural Sequence Models »
Alex Boyd · Samuel Showalter · Stephan Mandt · Padhraic Smyth -
2021 Poster: Detecting and Adapting to Irregular Distribution Shifts in Bayesian Online Learning »
Aodong Li · Alex Boyd · Padhraic Smyth · Stephan Mandt -
2021 Poster: Combining Human Predictions with Model Probabilities via Confusion Matrices and Calibration »
Gavin Kerrigan · Padhraic Smyth · Mark Steyvers -
2020 Poster: Can I Trust My Fairness Metric? Assessing Fairness with Unlabeled Data and Bayesian Inference »
Disi Ji · Padhraic Smyth · Mark Steyvers -
2020 Poster: User-Dependent Neural Sequence Models for Continuous-Time Event Data »
Alex Boyd · Robert Bamler · Stephan Mandt · Padhraic Smyth -
2018 Poster: Lifted Weighted Mini-Bucket »
Nicholas Gallo · Alexander Ihler -
2017 Workshop: NIPS Highlights (MLTrain), Learn How to code a paper with state of the art frameworks »
Alex Dimakis · Nikolaos Vasiloglou · Guy Van den Broeck · Alexander Ihler · Assaf Araki -
2017 : Coffee break and Poster Session II »
Mohamed Kane · Albert Haque · Vagelis Papalexakis · John Guibas · Peter Li · Carlos Arias · Eric Nalisnick · Padhraic Smyth · Frank Rudzicz · Xia Zhu · Theodore Willke · Noemie Elhadad · Hans Raffauf · Harini Suresh · Paroma Varma · Yisong Yue · Ognjen (Oggi) Rudovic · Luca Foschini · Syed Rameel Ahmad · Hasham ul Haq · Valerio Maggio · Giuseppe Jurman · Sonali Parbhoo · Pouya Bashivan · Jyoti Islam · Mirco Musolesi · Chris Wu · Alexander Ratner · Jared Dunnmon · Cristóbal Esteban · Aram Galstyan · Greg Ver Steeg · Hrant Khachatrian · Marc Górriz · Mihaela van der Schaar · Anton Nemchenko · Manasi Patwardhan · Tanay Tandon -
2017 Poster: Dynamic Importance Sampling for Anytime Bounds of the Partition Function »
Qi Lou · Rina Dechter · Alexander Ihler -
2016 Workshop: Towards an Artificial Intelligence for Data Science »
Charles Sutton · James Geddes · Zoubin Ghahramani · Padhraic Smyth · Chris Williams -
2016 Poster: Learning Infinite RBMs with Frank-Wolfe »
Wei Ping · Qiang Liu · Alexander Ihler -
2015 Poster: Probabilistic Variational Bounds for Graphical Models »
Qiang Liu · John Fisher III · Alexander Ihler -
2015 Poster: Decomposition Bounds for Marginal MAP »
Wei Ping · Qiang Liu · Alexander Ihler -
2014 Poster: Distributed Estimation, Information Loss and Exponential Families »
Qiang Liu · Alexander Ihler -
2013 Workshop: Crowdsourcing: Theory, Algorithms and Applications »
Jennifer Wortman Vaughan · Greg Stoddard · Chien-Ju Ho · Adish Singla · Michael Bernstein · Devavrat Shah · Arpita Ghosh · Evgeniy Gabrilovich · Denny Zhou · Nikhil Devanur · Xi Chen · Alexander Ihler · Qiang Liu · Genevieve Patterson · Ashwinkumar Badanidiyuru Varadaraja · Hossein Azari Soufiani · Jacob Whitehill -
2013 Poster: Scoring Workers in Crowdsourcing: How Many Control Questions are Enough? »
Qiang Liu · Alexander Ihler · Mark Steyvers -
2013 Spotlight: Scoring Workers in Crowdsourcing: How Many Control Questions are Enough? »
Qiang Liu · Alexander Ihler · Mark Steyvers -
2013 Poster: Variational Planning for Graph-based MDPs »
Qiang Cheng · Qiang Liu · Feng Chen · Alexander Ihler -
2012 Workshop: Algorithmic and Statistical Approaches for Large Social Network Data Sets »
Michael Goodrich · Pavel N Krivitsky · David M Mount · Christopher DuBois · Padhraic Smyth -
2012 Poster: Variational Inference for Crowdsourcing »
Qiang Liu · Jian Peng · Alexander Ihler -
2011 Oral: Continuous-Time Regression Models for Longitudinal Networks »
Duy Q Vu · Arthur Asuncion · David Hunter · Padhraic Smyth -
2011 Poster: Continuous-Time Regression Models for Longitudinal Networks »
Duy Q Vu · Arthur Asuncion · David Hunter · Padhraic Smyth -
2010 Spotlight: Learning concept graphs from text with stick-breaking priors »
America Chambers · Padhraic Smyth · Mark Steyvers -
2010 Poster: Learning concept graphs from text with stick-breaking priors »
America Chambers · Padhraic Smyth · Mark Steyvers -
2008 Poster: Asynchronous Distributed Learning of Topic Models »
Arthur Asuncion · Padhraic Smyth · Max Welling -
2007 Spotlight: Distributed Inference for Latent Dirichlet Allocation »
David Newman · Arthur Asuncion · Padhraic Smyth · Max Welling -
2007 Poster: Distributed Inference for Latent Dirichlet Allocation »
David Newman · Arthur Asuncion · Padhraic Smyth · Max Welling -
2006 Poster: Modeling General and Specific Aspects of Documents with a Probabilistic Topic Model »
Chaitanya Chemudugunta · Padhraic Smyth · Mark Steyvers -
2006 Poster: Learning Time-Intensity Profiles of Human Activity using Non-Parametric Bayesian Models »
Alexander Ihler · Padhraic Smyth -
2006 Poster: Hierarchical Dirichlet Processes with Random Effects »
Seyoung Kim · Padhraic Smyth