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Interpreting Black-Box Models
with Applications to Healthcare
Brian Lucena
In The Beginning…
Variables had Clear Interpretations
• Relationships were Linear
• Features were Interpretable
• Interactions were ignored (or manually added)
• Predictive Performance was OK
Then came Advanced ML
• Random Forests, Gradient Boosting, Deep NN
• Superior Predictive Power
• Capture High-Order Dependencies
• Lack the Simple Interpretations
Linear / Logistic Regression
• Unit increase always has same effect
• Current Value of Feature is Irrelevant
• Context of Other Features is Irrelevant
• Reality: These things matter!
Consider: How much does an additional 100SF
add to a home price?
Three Reasons to Interpret Models
1. To Understand how Features contribute to
Model Predictions - Build Confidence
2. To Explain Individual Predictions
3. To Evaluate the Consistency / Coherence of
the Model
Some Work on Model Interpretation
• Partial Dependence (Friedman, 2001)
• Average the effect of a single variable, marginally and
empirically.
Graphic: Krause, Perer, Ng. Interacting with Predictions: Visual Inspection of Black-
box Machine Learning Models. ACM CHI 2016
Some Work on Model Interpretation
• ICE-Plots (Goldstein et al, 2014)*
• Look at “trajectory” of each data point individually.
*Goldstein, Kapelner, Bleich, Pitkin. Peeking Inside the Black Box: Visualizing
Statistical Learning With Plots of Individual Conditional Expectation. Journal of
Computational and Graphical Statistics (March 2014)
Some Work in Model Interpretation
• “Model-Agnostic Interpretability of Machine Learning”
Ribeiro, Singh, Guestrin. https://arxiv.org/abs/
1606.05386
• Create a “locally-interpretable” model in region of
interest.
• Good reference document
ML-Insights Package (Lucena/Sampath)
• Idea: Pre-compute a “mutated” data point along
each feature across a range of values
• Enables quick Feature Dependence Plots
(ICE-plots) - model exploration / understanding
• Feature Effect Summary - more meaningful
representation than “feature importances”
• Explain Feature Prediction - given two points,
explain why model gave different predictions
ML-Insights Example 1
Example 1: Ames Housing Data*
• Predict housing prices from a subset of 9 variables.
• 2925 data points, split 70/30 train/test
• Fit two models: Gradient Boosting and Random Forest
*Dean De Cock, Journal of Statistics Education Volume 19, Number 3(2011),
www.amstat.org/publications/jse/v19n3/decock.pdf
ML-Insights Example: Housing
ML-Insights Example: Housing
ML-Insights Example: Housing
ML-Insights Example: Housing
ML-Insights Example: Housing
ML-Insights Example: Housing
ML-Insights Example: Housing
ML-Insights Example: Housing
Random Forest
Grad. Boosting
ML-Insights Example 2
Example 2: MIMIC Critical Care Database*
• Predict mortality in ICU Patients
• 59726 data points, split 70/30 train/test
• 51 labs / vitals aggregated over first 24 hours in ICU
• Fit three models: Gradient Boosting, Random Forest,
and XGBoost
*MIMIC-III, a freely accessible critical care database. Johnson AEW, Pollard TJ,
Shen L, Lehman L, Feng M, Ghassemi M, Moody B, Szolovits P, Celi LA, and
Mark RG. Scientific Data (2016).
https://mimic.physionet.org
ML-Insights Package: Medical
ML-Insights Package: Medical
ML-Insights Package: Medical
ML-Insights Package: Medical
Where to Find More
• To install: “pip install ml_insights”
• Github: https://github.com/numeristical/introspective
• Documentation: http://ml-insights.readthedocs.io
• Blog: www.numeristical.com
• Examples: https://github.com/numeristical/
introspective/tree/master/examples

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Brian Lucena, Senior Data Scientist, Metis at MLconf SF 2016

  • 1. Interpreting Black-Box Models with Applications to Healthcare Brian Lucena
  • 3. Variables had Clear Interpretations • Relationships were Linear • Features were Interpretable • Interactions were ignored (or manually added) • Predictive Performance was OK
  • 4. Then came Advanced ML • Random Forests, Gradient Boosting, Deep NN • Superior Predictive Power • Capture High-Order Dependencies • Lack the Simple Interpretations
  • 5. Linear / Logistic Regression • Unit increase always has same effect • Current Value of Feature is Irrelevant • Context of Other Features is Irrelevant • Reality: These things matter! Consider: How much does an additional 100SF add to a home price?
  • 6. Three Reasons to Interpret Models 1. To Understand how Features contribute to Model Predictions - Build Confidence 2. To Explain Individual Predictions 3. To Evaluate the Consistency / Coherence of the Model
  • 7. Some Work on Model Interpretation • Partial Dependence (Friedman, 2001) • Average the effect of a single variable, marginally and empirically. Graphic: Krause, Perer, Ng. Interacting with Predictions: Visual Inspection of Black- box Machine Learning Models. ACM CHI 2016
  • 8. Some Work on Model Interpretation • ICE-Plots (Goldstein et al, 2014)* • Look at “trajectory” of each data point individually. *Goldstein, Kapelner, Bleich, Pitkin. Peeking Inside the Black Box: Visualizing Statistical Learning With Plots of Individual Conditional Expectation. Journal of Computational and Graphical Statistics (March 2014)
  • 9. Some Work in Model Interpretation • “Model-Agnostic Interpretability of Machine Learning” Ribeiro, Singh, Guestrin. https://arxiv.org/abs/ 1606.05386 • Create a “locally-interpretable” model in region of interest. • Good reference document
  • 10. ML-Insights Package (Lucena/Sampath) • Idea: Pre-compute a “mutated” data point along each feature across a range of values • Enables quick Feature Dependence Plots (ICE-plots) - model exploration / understanding • Feature Effect Summary - more meaningful representation than “feature importances” • Explain Feature Prediction - given two points, explain why model gave different predictions
  • 11. ML-Insights Example 1 Example 1: Ames Housing Data* • Predict housing prices from a subset of 9 variables. • 2925 data points, split 70/30 train/test • Fit two models: Gradient Boosting and Random Forest *Dean De Cock, Journal of Statistics Education Volume 19, Number 3(2011), www.amstat.org/publications/jse/v19n3/decock.pdf
  • 19. ML-Insights Example: Housing Random Forest Grad. Boosting
  • 20. ML-Insights Example 2 Example 2: MIMIC Critical Care Database* • Predict mortality in ICU Patients • 59726 data points, split 70/30 train/test • 51 labs / vitals aggregated over first 24 hours in ICU • Fit three models: Gradient Boosting, Random Forest, and XGBoost *MIMIC-III, a freely accessible critical care database. Johnson AEW, Pollard TJ, Shen L, Lehman L, Feng M, Ghassemi M, Moody B, Szolovits P, Celi LA, and Mark RG. Scientific Data (2016). https://mimic.physionet.org
  • 25. Where to Find More • To install: “pip install ml_insights” • Github: https://github.com/numeristical/introspective • Documentation: http://ml-insights.readthedocs.io • Blog: www.numeristical.com • Examples: https://github.com/numeristical/ introspective/tree/master/examples