pbiecek / Ema
Explanatory Model Analysis. Explore, Explain and Examine Predictive Models
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Learn Machine Learning In Two Months
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Explanatory Model Analysis
Explore, Explain, and Examine Predictive Models
See the html website here: https://pbiecek.github.io/ema/
A note to readers: this text is a work in progress.
We've released this initial version to get more feedback. Feedback can be given at the GitHub repo https://github.com/pbiecek/ema/issues. We are primarily interested in the organization and consistency of the content, but any comments will be welcommed.
Bibtex entry
@Book{,
author = {Przemyslaw Biecek and Tomasz Burzykowski},
title = {{Explanatory Model Analysis}},
publisher = {Chapman and Hall/CRC, New York},
year = {2021},
isbn = {9780367135591},
url = {https://pbiecek.github.io/ema/},
}
Model Studio
In this book we have used several predictive models. One can explore them with the Model Studio under following links
-
titanic_rf_v4
model https://titanic-rf-v4.netlify.com -
titanic_rf_v6
model https://titanic-rf-v6.netlify.com -
titanic_gbm_v6
model https://titanic-gbm-v6.netlify.com -
titanic_lmr_v6
model https://titanic-lmr-v6.netlify.com
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