**************************CALL FOR PAPERS***************************

The 3rd Workshop on Tractable Probabilistic Modeling (TPM) @ ICML 2019, Long 
Beach, California, USA.

https://sites.google.com/view/icmltpm2019/home

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Important Dates
**Paper submission deadline: April 30, 2019 AOE (UTC-12:00h)
**Notification to authors: May 15, 2019
**Camera ready version: May 31, 2019 AOE (UTC-12:00h)
**Workshop Date: June 14/15, 2019 (TBA)

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Tractable probabilistic modeling (TPM) is concerned with the inherent trade-off 
between the expressivity of the probabilistic models and the complexity of 
performing various types of inference on them, as well as learning them from 
data. Traditional topics in this area include efficient learning of 
probabilistic models, exact inference, and approximate routines with 
guarantees. Relevant model classes include low- and bounded-treewidth PGMs, 
determinantal point processes, exchangeable probabilistic models, arithmetic 
circuits, sum-product networks, cutset networks, probabilistic sentential 
decision diagrams, and more. Successful real-world applications of such models 
comprise: image classification, completion and generation, scene understanding, 
activity recognition, language and speech modeling, bioinformatics, 
collaborative filtering, verification and diagnosis of physical systems.
This year's workshop will focus especially on bringing together researchers 
working on the different fronts and communities of TPM. We especially encourage 
submissions highlighting the challenges and opportunities for tractable 
inference and modeling within the rising field of probabilistic programming and 
the neural probabilistic modeling community, recently achieving impressive 
successes in many application fields.
Here is a non-exhaustive list of possible venues. Any other work relevant to 
the TPM community will be highly appreciated.
**Tractable inference with neural probabilistic models
**Challenges in tractable probabilistic programming
**New tractable representations in discrete, continuous and hybrid domains
**Tractable models and explainable AI
**Learning algorithms for tractable probabilistic models
**Theoretical and empirical analysis of tractable modeling
**Approximate inference algorithms with guarantees on approximation quality
**Applications of tractable probabilistic modeling
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Submission Instructions:

**Recently published research papers can be submitted as they were accepted
**Original papers (up to 8 pages, not including references) and abstracts (up 
to 2 pages, not including references) are required to follow the same style 
guidelines of ICML 2019
All submissions must be electronic, in the above format and submitted through 
EasyChair (link below).
Reviewing for TPM 2019 is single-blind and we also encourage authors to share 
code and data for reproducibility.

Submission Link: https://easychair.org/conferences/?conf=tpm2019
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Organizers:
Daniel Lowd  (University of Oregon)
Tahrima Rahman (University of Texas, Dallas)
Antonio Vergari (Max-Planck-Insitute for Intelligent Systems, University of 
California, Los Angeles)
Alejandro Molina (TU Darmstadt)
Pedro Domingos (University of Washington)

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