Causality-based feature selection: Methods and evaluations
Feature selection is a crucial preprocessing step in data analytics and machine learning.
Classical feature selection algorithms select features based on the correlations between …
Classical feature selection algorithms select features based on the correlations between …
Discrete Bayesian network classifiers: A survey
We have had to wait over 30 years since the naive Bayes model was first introduced in 1960
for the so-called Bayesian network classifiers to resurge. Based on Bayesian networks …
for the so-called Bayesian network classifiers to resurge. Based on Bayesian networks …
[PDF][PDF] A scoring function for learning Bayesian networks based on mutual information and conditional independence tests.
LM De Campos, N Friedman - Journal of Machine Learning Research, 2006 - jmlr.org
We propose a new scoring function for learning Bayesian networks from data using score+
search algorithms. This is based on the concept of mutual information and exploits some …
search algorithms. This is based on the concept of mutual information and exploits some …
Machine Learning for Data Science Handbook
Machine Learning for Data Science Handbook Lior Rokach Oded Maimon Erez Shmueli Editors
Machine Learning for Data Science Handbook Data Mining and Knowledge Discovery …
Machine Learning for Data Science Handbook Data Mining and Knowledge Discovery …
DAGs with No Fears: A closer look at continuous optimization for learning Bayesian networks
This paper re-examines a continuous optimization framework dubbed NOTEARS for
learning Bayesian networks. We first generalize existing algebraic characterizations of …
learning Bayesian networks. We first generalize existing algebraic characterizations of …
Discretization for naive-Bayes learning: managing discretization bias and variance
Quantitative attributes are usually discretized in Naive-Bayes learning. We establish simple
conditions under which discretization is equivalent to use of the true probability density …
conditions under which discretization is equivalent to use of the true probability density …
An approach based on bayesian network for improving project management maturity: An application to reduce cost overrun risks in engineering projects
The project management field has the imperative to increase the success probability of
projects. Experts have developed several Project Management Maturity (PMM) models to …
projects. Experts have developed several Project Management Maturity (PMM) models to …
Brain galanin system genes interact with life stresses in depression-related phenotypes
Galanin is a stress-inducible neuropeptide and cotransmitter in serotonin and
norepinephrine neurons with a possible role in stress-related disorders. Here we report that …
norepinephrine neurons with a possible role in stress-related disorders. Here we report that …
Relationship between built environment characteristics of TOD and subway ridership: A causal inference and regression analysis of the Bei**g subway
J Huang, S Chen, Q Xu, Y Chen, J Hu - Journal of Rail Transport Planning …, 2022 - Elsevier
Numerous studies suggest that built environments have impacts on transit ridership, but few
consider the causal connection between them. The goal of this study is to examine the …
consider the causal connection between them. The goal of this study is to examine the …
Analysing complex behaviour of hydrological systems through a system dynamics approach
The interaction among various water cycle components consists of complex, non-linear, and
bidirectional (interdependent) biophysical processes which can be interpreted using …
bidirectional (interdependent) biophysical processes which can be interpreted using …