Transcription of Practical Techniques for Interpreting Machine Learning ...
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Practical Techniques for Interpreting Machine Learning Models: introductory Open Source Examples Using Python, H2O, and XGBoostPatrick Hall, Navdeep Gill, Mark , Mountain View, CAFebruary 3, 20181 DescriptionThis series of Jupyter notebooks uses open source tools such as Python, H2O, XGBoost, GraphViz, Pandas, andNumPy to outline Practical explanatory Techniques for Machine Learning models and results. The notebooks coverthe following modeling and explanatory Techniques , along with Practical variants and concise visualizations thereof. Monotonically constrained GBMs, partial dependence, and ICE: Monotonic Gradient Boosting using XGBoost Partial Dependence and ICE PlotsThese notebooks use monotonicity constraints to train an explainable, and potentially regulator-approvableGBM model , by ensuring predictions only increase or only decrease for any change in a given input vari-able. Partial dependence plots and ICE plots are then used to analyze and investigate the global and localmechanisms of the monotonic GBM and verify its monotonic behavior.
Practical Techniques for Interpreting Machine Learning Models: Introductory Open Source Examples Using Python, H2O, and XGBoost ... real-time scoring of new data in production applications. Once local samples have been generated, LIME will ... Max G’Sell, Alessandro Rinaldo, Ryan J. Tibshirani, and Larry Wasserman. Distribution-free pre ...
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Ryan, Tibshirani, Data, Data Mining, ROBERTJOHNTIBSHIRANI, Ryan Tibshirani, Lecture 1: Course Introduction and Logistics, Regression shrinkage and selection via, Data Mining Columbia University Spring, 2014, Introduction to Statistical Learning, Predicting Offensive Play Types in, STAT697F - TOPICS IN REGRESSION. REFERENCES