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Workshop (2-6 hours): cleaning, missing value imputation, EDA, ensemble learning, calibration, variable importance ranking, accumulated local effect plots. WIP.

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ck37/Predictive-Modeling-in-R

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Short Course: Predictive Modeling in R

Data science and machine learning tutorial using heart disease as an application. Work in progress.

Author: Chris Kennedy (ck37.com)

Run interactively in RStudio Cloud

Repository structure

Ideally integrate renv, use slido, and add drake.

Recommended reading

Source article

Kennedy, Chris J., Mark, Dustin, Huang, Jie, Reed, Mary. (2020). "Development of a nested ensemble machine learning prognostic model for predicting 60-day risk of major adverse cardiac events in adults with chest pain." Google Slides

Source data

Janosi, A., Steinbrunn, W., Pfisterer, M., & Detrano, R. (1988). Heart disease data set. The UCI KDD Archive.

Books

Boehmke, B., & Greenwell, B. M. (2019). Hands-On Machine Learning with R. CRC Press. (Free online)

Molnar, C. (2020). Interpretable machine learning. Lulu.com. (Free online)

Riley, R. D., van der Windt, D., Croft, P., & Moons, K. G. (Eds.). (2019). Prognosis Research in Healthcare: concepts, methods, and impact. Oxford University Press. (Amazon)

Steyerberg, E. W. (2019). Clinical prediction models. Springer International Publishing. (Amazon)

Citation

If you find this tutorial useful please cite it as noted below:

Kennedy, Chris J. (2020). "Tutorial on predictive modeling in R." GitHub repository. https://github.com/ck37/Predictive-Modeling-in-R

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Workshop (2-6 hours): cleaning, missing value imputation, EDA, ensemble learning, calibration, variable importance ranking, accumulated local effect plots. WIP.

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