<div>All data (N=54) and R codes used in: Ahn, W.-Y.∗, Ramesh∗, D., Moeller, F. G., & Vassileva, J. (2016) Utility of machine learning approaches to identify behavioral markers for substance use disorders: Impulsivity dimensions as predictors of current cocaine dependence. Frontiers in Psychiatry. The codes and some tutorials are also available at the first author's (Woo-Young Ahn's) website (http://u.osu.edu/ccsl/codedata/machine-learning/).</div><div><br></div><div><br></div>Unzip the file and read instructions in<div><br></div><div>LASSO_cocaine_frontiers.R</div><div>LASSO_cocaine_frontiers_multipleTestSets.R</div><div><br></div><div><br></div
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Over the last few decades, there has been a progressive transition from a categorical to a dimension...
Datasets and analysis script for the manuscript "Status, rivalry and admiration-seeking in narcissis...
This repository contains the R-Code necessary for the analyses reported in the article "Training mac...
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Codes and related files for generating the scores reported in: http://hdl.handle.net/1773/43477. ...
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Machine learning methods for prediction and pattern detection are increasingly prevalent in psycholo...
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Dataset for the manuscript Marmet, Studer, Lemoine, Grazioli, Bertholet & Gmel (2019). Reconsiderin...
Background: In 2009, the National Institute of Mental Health launched the Research Domain Criteria (...
Data and code related to the article "Neural correlates of hierarchical predictive processes in auti...
This folder contains all codes and data necessary to reproduce the behavioral analyses and results r...
This repository contains the companion data and R code for Huh, Mun, Walters, Zhou, and Atkins (2019...
Background: Identifying objective and accurate markers of cocaine dependence (CD) can innovate its p...
Long abstract: Substance use disorders (SUDs) are complex, highly dimensional conditions that are in...
Over the last few decades, there has been a progressive transition from a categorical to a dimension...
Datasets and analysis script for the manuscript "Status, rivalry and admiration-seeking in narcissis...
This repository contains the R-Code necessary for the analyses reported in the article "Training mac...
This archive contains the raw data from Allen and Nettle, 'Hunger and socioeconomic background addit...
Codes and related files for generating the scores reported in: http://hdl.handle.net/1773/43477. ...
These diagnosis codes are part of two studies: 1. Scott E. Hadland, MD, MPH, MS, Sarah M. Bagley, ...
Machine learning methods for prediction and pattern detection are increasingly prevalent in psycholo...
This article provides data for five different neuropsychiatric disorders—Attention Deficit Hyperacti...
Dataset for the manuscript Marmet, Studer, Lemoine, Grazioli, Bertholet & Gmel (2019). Reconsiderin...
Background: In 2009, the National Institute of Mental Health launched the Research Domain Criteria (...
Data and code related to the article "Neural correlates of hierarchical predictive processes in auti...