The Hitchhiker's Guide to Responsible Machine Learning: Interpretable and eXplainable Artificial Intelligence with examples in R - Softcover

Biecek, Przemysław; Kozak, Anna

 
9788365291127: The Hitchhiker's Guide to Responsible Machine Learning: Interpretable and eXplainable Artificial Intelligence with examples in R

Synopsis

This book is a unique entanglement of theory, examples and processes relevant to Responsible Machine Learning. You will find intuitions and examples for Interpretable Machine Learning (IML) and eXplainable Artificial Intelligence (XAI). Descriptions are supplemented by code snippets with examples for R with the use of randomForest, mlr3 and DALEX packages. Finally, the process is shown through a comic book describing the adventures of two characters, Beta and Bit. The interaction of these two shows the decisions that analysts often face, whether to try a different model, try another technique for exploration or look for other data -- questions like how to compare models or validate them. All examples are fully reproducible so that one can replay all adventures on a local desktop. Model development is a responsible and challenging task but also an exciting adventure. Sometimes textbooks focus only on the technical side, losing all the fun. Here we are going to have it all.

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About the Author

Supplementary materials are available at https: //github.com/BetaAndBit/RML. You will find there free flipbook, data and reproducible code snippets.

"About this title" may belong to another edition of this title.