💪 🤔 Modern Super Learning with Machine Learning Pipelines
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Updated
Jul 7, 2025 - R
💪 🤔 Modern Super Learning with Machine Learning Pipelines
Regression model building and forecasting in R
Predicting the Likelihood to Purchase a Financial Product Following a Direct Marketing Campaign
R Package With Shiny App to Perform and Visualize Clustering of Count Data via Mixtures of Multivariate Poisson-log Normal Model
Optimal topic identification from a pool of Latent Dirichlet Allocation models
A rolling version of the Latent Dirichlet Allocation.
StAtistical Models for the UnsupeRvised segmentAion of tIme-Series
Exercises From Book "Applied Predictive Modeling" by "Kuhn and Johnson (2013)"
R package for focused information criteria for model comparison
Determine a Prototype from a number of runs of Latent Dirichlet Allocation.
# kaefa kwangwoon automated exploratory factor analysis for improving research capability to identify unexplained factor structure with complexly cross-classified multilevel structured data in R environment
This project predicts tuition rates for U.S. public and private universities using linear regression with leave-one-out cross-validation. Helping to assess if a college market price, maximizing ROI and minimizing student loan debt.
Data and function bundle for model selection guide for ecologists
An R package for Augmented Backward Elimination
Determining the number of factors in Poisson factor model via thinning cross-validation. Stable release available on CRAN (https://cran.r-project.org/package=tcv); development version hosted on GitHub.
Monte Carlo Penalty Selection for graphical lasso
Comparison of model selection methods for Boston dataset
This project explores linear regression model selection in R using Best Subset Selection (BIC), stepwise methods with cross-validation, Ridge, and Lasso. Includes MSE evaluation on test data, multicollinearity analysis (VIF), and correlation insights for variable selection.
comparing many classification algorithms (Naive Bayes, Logistic Regression, Support Vector Machine) on Spiral Data with tuning SVM's parameters with mentioning Decision Trees and K-Nearest Neighbors implementation.
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