Dear all,

The Journal Computation has a Special Issue on "Causal Inference, Probability 
Theory and Graphical Concepts”

See the paper submission information: 
https://www.mdpi.com/journal/computation/special_issues/Causal_Inference_Probability_Theory




Information

Finding causal relationships and their effects, not just statistical 
associations, has become one of the major subject areas in the disciplines of 
statistics, data and computer sciences, econometrics, epidemiology, 
bioinformatics, etc. It was David Hume (1748) who said that the only immediate 
utility of all the sciences is to teach us how to control and regulate future 
events through their causes. However, in legal contexts, etc., it is of 
interest to find the causes of effects rather than the effects of causes.  As 
such, most of the sciences and some other disciplines can be considered as 
being grounded in some kind of causality theory. Additionally, many of the 
estimation and assessment tasks that are involved in these disciplines should 
be performed using observational data instead of using the data generated by 
randomized experiments, mainly due to ethical or impractical or other similar 
reasons. This can be a harder task since we often find confounders and other 
types of biases such as selection bias in observation data that make the 
estimation of causal effects, etc., harder. Additionally, the essential 
components of the formulation of such estimation tasks as well as to find 
causality itself are causal assumptions, probability theory, certain graphical 
theories of representation of the causal dependence structure of the context, 
and counterfactual arguments. These theories have resulted in different causal 
effect estimation frameworks, such as the so-called probabilistic graphical 
models and the potential outcome model.

This Special Issue focuses on causal models and their estimation and inference 
methods that are based on the probability theory, statistical regression 
theory, counterfactual arguments, and graphical and network concepts. 
Therefore, these models can also use information theory, optimization theory, 
machine learning methods, probabilistic and statistical predictive theory, 
Bayesian theory, etc.  Articles can be on the basic principles as well as on 
more advanced estimation and inference methods, algorithms, and applications in 
different disciples. Both original and review articles are welcome. Papers on 
the computational aspects, either tutorials or otherwise, are also welcome.

Topics of the papers include, but not limited to:

  *   Causal graphical models, do-calculus, and faithfulness;
  *   Potential outcome causal models;
  *   Confounding and balancing score estimation;
  *   Selection bias and collider bias;
  *   Causal parameter identification and estimation;
  *   Multivariate matching methods and sparse estimation;
  *   Robust causal inference and model misspecification;
  *   Causal discovery and constraint-based approaches;
  *   Machine learning for causal inference;
  *   Probability of causation;
  *   Granger causality and inferring causation in time series;
  *   Mediation analysis;
  *   Causal regression models;
  *   Causal inference in science, medicine, economics, and society;
  *   Big data and data-driven approaches;
  *   Predictive modeling and making causal claims;
  *   Outcome-dependent sampling and case-control studies;
  *   Categorical data analysis;
  *   Survival analysis;
  *   Sensitivity analysis for modeling assumptions.

Dr. Priyantha Wijayatunga
Dr. Linbo Wang
Dr. Wang Miao
Guest Editors

Manuscript Submission Information

Manuscripts should be submitted online at www.mdpi.com<https://www.mdpi.com/> 
by registering<https://www.mdpi.com/user/register/> and logging in to this 
website<https://www.mdpi.com/user/login/>. Once you are registered, click here 
to go to the submission 
form<https://susy.mdpi.com/user/manuscripts/upload/?journal=computation>. 
Manuscripts can be submitted until the deadline. All submissions that pass 
pre-check are peer-reviewed. Accepted papers will be published continuously in 
the journal (as soon as accepted) and will be listed together on the special 
issue website. Research articles, review articles as well as short 
communications are invited. For planned papers, a title and short abstract 
(about 100 words) can be sent to the Editorial Office for announcement on this 
website.

Submitted manuscripts should not have been published previously, nor be under 
consideration for publication elsewhere (except conference proceedings papers). 
All manuscripts are thoroughly refereed through a single-blind peer-review 
process. A guide for authors and other relevant information for submission of 
manuscripts is available on the Instructions for 
Authors<https://www.mdpi.com/journal/computation/instructions> page. 
Computation<https://www.mdpi.com/journal/computation/> is an international 
peer-reviewed open access monthly journal published by MDPI.

Please visit the Instructions for 
Authors<https://www.mdpi.com/journal/computation/instructions> page before 
submitting a manuscript. The Article Processing Charge 
(APC)<https://www.mdpi.com/about/apc/> for publication in this open 
access<https://www.mdpi.com/about/openaccess/> journal is 1400 CHF (Swiss 
Francs). Submitted papers should be well formatted and use good English. 
Authors may use MDPI's English editing 
service<https://www.mdpi.com/authors/english> prior to publication or during 
author revisions.

Keywords

  *   causal assumptions
  *   counterfactuals
  *   statistical dependence
  *   conditional (in)dependence structure
  *   graphical representation
  *   causal parameters
  *   (semi)-parametric and non-parametric models
  *   statistical estimation
  *   predictive inference
  *   latent variables
  *   instrumental variables
  *   confounding
  *   collider and selection bias
  *   covariate balance
  *   algorithms
  *   optimization
  *   subject domain knowledge
  *   information

Published Papers
This special issue is now open for submission.


Thank you.

Best regards

Priyantha Wijayatunga
Umeå University
Sweden
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