Improving Bayesian statistics understanding in the age of Big Data with the bayesvl R package
Author(s) -
QuanHoang Vuong,
VietPhuong La,
MinhHoang Nguyen,
ManhToan Ho,
Tung Manh Ho,
Peter Mantello
Publication year - 2020
Publication title -
software impacts
Language(s) - English
Resource type - Journals
ISSN - 2665-9638
DOI - 10.1016/j.simpa.2020.100016
Subject(s) - frequentist inference , markov chain monte carlo , computer science , bayesian probability , bayesian statistics , variable order bayesian network , bayesian network , statistical inference , bayesian inference , big data , analytics , data mining , inference , r package , data science , machine learning , artificial intelligence , statistics , mathematics , computational science
The exponential growth of social data both in volume and complexity has increasingly exposed many of the shortcomings of the conventional frequentist approach to statistics. The scientific community has called for careful usage of the approach and its inference. Meanwhile, the alternative method, Bayesian statistics, still faces considerable barriers toward a more widespread application. The bayesvl R package is an open program, designed for implementing Bayesian modeling and analysis using the Stan language’s no-U-turn (NUTS) sampler. The package combines the ability to construct Bayesian network models using directed acyclic graphs (DAGs), the Markov chain Monte Carlo (MCMC) simulation technique, and the graphic capability of the ggplot2 package. As a result, it can improve the user experience and intuitive understanding when constructing and analyzing Bayesian network models. A case example is offered to illustrate the usefulness of the package for Big Data analytics and cognitive computing.
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