/imodels

Interpretable ML package πŸ” for concise, transparent, and accurate predictive modeling (sklearn-compatible).

Primary LanguageJupyter NotebookMIT LicenseMIT


Python package for concise, transparent, and accurate predictive modeling.
All sklearn-compatible and easy to use.
For interpretability in NLP, check out our new package: imodelsX

πŸ“š docs β€’ πŸ“– demo notebooks

Modern machine-learning models are increasingly complex, often making them difficult to interpret. This package provides a simple interface for fitting and using state-of-the-art interpretable models, all compatible with scikit-learn. These models can often replace black-box models (e.g. random forests) with simpler models (e.g. rule lists) while improving interpretability and computational efficiency, all without sacrificing predictive accuracy! Simply import a classifier or regressor and use the fit and predict methods, same as standard scikit-learn models.

from sklearn.model_selection import train_test_split
from imodels import get_clean_dataset, HSTreeClassifierCV # import any imodels model here

# prepare data (a sample clinical dataset)
X, y, feature_names = get_clean_dataset('csi_pecarn_pred')
X_train, X_test, y_train, y_test = train_test_split(
    X, y, random_state=42)

# fit the model
model = HSTreeClassifierCV(max_leaf_nodes=4)  # initialize a tree model and specify only 4 leaf nodes
model.fit(X_train, y_train, feature_names=feature_names)   # fit model
preds = model.predict(X_test) # discrete predictions: shape is (n_test, 1)
preds_proba = model.predict_proba(X_test) # predicted probabilities: shape is (n_test, n_classes)
print(model) # print the model
------------------------------
Decision Tree with Hierarchical Shrinkage
Prediction is made by looking at the value in the appropriate leaf of the tree
------------------------------
|--- FocalNeuroFindings2 <= 0.50
|   |--- HighriskDiving <= 0.50
|   |   |--- Torticollis2 <= 0.50
|   |   |   |--- value: [0.10]
|   |   |--- Torticollis2 >  0.50
|   |   |   |--- value: [0.30]
|   |--- HighriskDiving >  0.50
|   |   |--- value: [0.68]
|--- FocalNeuroFindings2 >  0.50
|   |--- value: [0.42]

Installation

Install with pip install imodels (see here for help).

Supported models

Model Reference Description
Rulefit rule set πŸ—‚οΈ, πŸ”—, πŸ“„ Fits a sparse linear model on rules extracted from decision trees
Skope rule set πŸ—‚οΈ, πŸ”— Extracts rules from gradient-boosted trees, deduplicates them,
then linearly combines them based on their OOB precision
Boosted rule set πŸ—‚οΈ, πŸ”—, πŸ“„ Sequentially fits a set of rules with Adaboost
Slipper rule set πŸ—‚οΈ,      , γ…€γ…€πŸ“„ Sequentially learns a set of rules with SLIPPER
Bayesian rule set πŸ—‚οΈ, πŸ”—, πŸ“„ Finds concise rule set with Bayesian sampling (slow)
Optimal rule list πŸ—‚οΈ, πŸ”—, πŸ“„ Fits rule list using global optimization for sparsity (CORELS)
Bayesian rule list πŸ—‚οΈ, πŸ”—, πŸ“„ Fits compact rule list distribution with Bayesian sampling (slow)
Greedy rule list πŸ—‚οΈ, πŸ”— Uses CART to fit a list (only a single path), rather than a tree
OneR rule list πŸ—‚οΈ,      , πŸ“„ Fits rule list restricted to only one feature
Optimal rule tree πŸ—‚οΈ, πŸ”—, πŸ“„ Fits succinct tree using global optimization for sparsity (GOSDT)
Greedy rule tree πŸ—‚οΈ, πŸ”—, πŸ“„ Greedily fits tree using CART
C4.5 rule tree πŸ—‚οΈ, πŸ”—, πŸ“„ Greedily fits tree using C4.5
TAO rule tree πŸ—‚οΈ,      , γ…€γ…€πŸ“„ Fits tree using alternating optimization
Iterative random
forest
πŸ—‚οΈ, πŸ”—, πŸ“„ Repeatedly fit random forest, giving features with
high importance a higher chance of being selected
Sparse integer
linear model
πŸ—‚οΈ,      , γ…€γ…€πŸ“„ Sparse linear model with integer coefficients
Tree GAM πŸ—‚οΈ, πŸ”—, πŸ“„ Generalized additive model fit with short boosted trees
Greedy tree sums πŸ—‚οΈ,      , γ…€γ…€πŸ“„ Sum of small trees with very few total rules (FIGS)
Hierarchical
shrinkage wrapper
πŸ—‚οΈ,      , γ…€γ…€πŸ“„ Improve a decision tree, random forest, or
gradient-boosting ensemble with ultra-fast, post-hoc regularization
Distillation
wrapper
πŸ—‚οΈ Train a black-box model,
then distill it into an interpretable model
AutoML wrapper πŸ—‚οΈ Automatically fit and select an interpretable model
More models βŒ› (Coming soon!) Lightweight Rule Induction, MLRules, ...

Docs πŸ—‚οΈ, Reference code implementation πŸ”—, Research paper πŸ“„

Demo notebooks

Demos are contained in the notebooks folder.

Quickstart demo Shows how to fit, predict, and visualize with different interpretable models
Autogluon demo Fit/select an interpretable model automatically using Autogluon AutoML
Quickstart colab demo Shows how to fit, predict, and visualize with different interpretable models
Clinical decision rule notebook Shows an example of using imodels for deriving a clinical decision rule
Posthoc analysis We also include some demos of posthoc analysis, which occurs after fitting models: posthoc.ipynb shows different simple analyses to interpret a trained model and uncertainty.ipynb contains basic code to get uncertainty estimates for a model

What's the difference between the models?

The final form of the above models takes one of the following forms, which aim to be simultaneously simple to understand and highly predictive:

Rule set Rule list Rule tree Algebraic models

Different models and algorithms vary not only in their final form but also in different choices made during modeling, such as how they generate, select, and postprocess rules:

Rule candidate generation Rule selection Rule postprocessing
Ex. RuleFit vs. SkopeRules RuleFit and SkopeRules differ only in the way they prune rules: RuleFit uses a linear model whereas SkopeRules heuristically deduplicates rules sharing overlap.
Ex. Bayesian rule lists vs. greedy rule lists Bayesian rule lists and greedy rule lists differ in how they select rules; bayesian rule lists perform a global optimization over possible rule lists while Greedy rule lists pick splits sequentially to maximize a given criterion.
Ex. FPSkope vs. SkopeRules FPSkope and SkopeRules differ only in the way they generate candidate rules: FPSkope uses FPgrowth whereas SkopeRules extracts rules from decision trees.

Support for different tasks

Different models support different machine-learning tasks. Current support for different models is given below (each of these models can be imported directly from imodels (e.g. from imodels import RuleFitClassifier):

Model Binary classification Regression Notes
Rulefit rule set RuleFitClassifier RuleFitRegressor
Skope rule set SkopeRulesClassifier
Boosted rule set BoostedRulesClassifier BoostedRulesRegressor
SLIPPER rule set SlipperClassifier
Bayesian rule set BayesianRuleSetClassifier Fails for large problems
Optimal rule list (CORELS) OptimalRuleListClassifier Requires corels, fails for large problems
Bayesian rule list BayesianRuleListClassifier
Greedy rule list GreedyRuleListClassifier
OneR rule list OneRClassifier
Optimal rule tree (GOSDT) OptimalTreeClassifier Requires gosdt, fails for large problems
Greedy rule tree (CART) GreedyTreeClassifier GreedyTreeRegressor
C4.5 rule tree C45TreeClassifier
TAO rule tree TaoTreeClassifier TaoTreeRegressor
Iterative random forest IRFClassifier Requires irf
Sparse integer linear model SLIMClassifier SLIMRegressor Requires extra dependencies for speed
Tree GAM TreeGAMClassifier TreeGAMRegressor
Greedy tree sums (FIGS) FIGSClassifier FIGSRegressor
Hierarchical shrinkage HSTreeClassifierCV HSTreeRegressorCV Wraps any sklearn tree-based model
Distillation DistilledRegressor Wraps any sklearn-compatible models
AutoML model AutoInterpretableClassifier️ AutoInterpretableRegressor️

Extras

Data-wrangling functions for working with popular tabular datasets (e.g. compas). These functions, in conjunction with imodels-data and imodels-experiments, make it simple to download data and run experiments on new models.
Explain classification errors with a simple posthoc function. Fit an interpretable model to explain a previous model's errors (ex. in this notebookπŸ““).
Fast and effective discretizers for data preprocessing.
Discretizer Reference Description
MDLP πŸ—‚οΈ, πŸ”—, πŸ“„ Discretize using entropy minimization heuristic
Simple πŸ—‚οΈ, πŸ”— Simple KBins discretization
Random Forest πŸ—‚οΈ Discretize into bins based on random forest split popularity
Rule-based utils for customizing models The code here contains many useful and customizable functions for rule-based learning in the util folder. This includes functions / classes for rule deduplication, rule screening, and converting between trees, rulesets, and neural networks.

Our favorite models

After developing and playing with imodels, we developed a few new models to overcome limitations of existing interpretable models.

FIGS: Fast interpretable greedy-tree sums

πŸ“„ Paper, πŸ”— Post, πŸ“Œ Citation

Fast Interpretable Greedy-Tree Sums (FIGS) is an algorithm for fitting concise rule-based models. Specifically, FIGS generalizes CART to simultaneously grow a flexible number of trees in a summation. The total number of splits across all the trees can be restricted by a pre-specified threshold, keeping the model interpretable. Experiments across a wide array of real-world datasets show that FIGS achieves state-of-the-art prediction performance when restricted to just a few splits (e.g. less than 20).

Example FIGS model. FIGS learns a sum of trees with a flexible number of trees; to make its prediction, it sums the result from each tree.

Hierarchical shrinkage: post-hoc regularization for tree-based methods

πŸ“„ Paper (ICML 2022), πŸ”— Post, πŸ“Œ Citation

Hierarchical shrinkage is an extremely fast post-hoc regularization method which works on any decision tree (or tree-based ensemble, such as Random Forest). It does not modify the tree structure, and instead regularizes the tree by shrinking the prediction over each node towards the sample means of its ancestors (using a single regularization parameter). Experiments over a wide variety of datasets show that hierarchical shrinkage substantially increases the predictive performance of individual decision trees and decision-tree ensembles.

HS Example. HS applies post-hoc regularization to any decision tree by shrinking each node towards its parent.

MDI+: Flexible Tree-Based Feature Importance

πŸ“„ Paper, πŸ“Œ Citation

MDI+ is a novel feature importance framework, which generalizes the popular mean decrease in impurity (MDI) importance score for random forests. At its core, MDI+ expands upon a recently discovered connection between linear regression and decision trees. In doing so, MDI+ enables practitioners to (1) tailor the feature importance computation to the data/problem structure and (2) incorporate additional features or knowledge to mitigate known biases of decision trees. In both real data case studies and extensive real-data-inspired simulations, MDI+ outperforms commonly used feature importance measures (e.g., MDI, permutation-based scores, and TreeSHAP) by substantional margins.

References

Readings
  • Interpretable ML good quick overview: murdoch et al. 2019, pdf
  • Interpretable ML book: molnar 2019, pdf
  • Case for interpretable models rather than post-hoc explanation: rudin 2019, pdf
  • Review on evaluating interpretability: doshi-velez & kim 2017, pdf
Reference implementations (also linked above) The code here heavily derives from the wonderful work of previous projects. We seek to to extract out, unify, and maintain key parts of these projects.
Related packages
  • gplearn: symbolic regression/classification
  • pysr: fast symbolic regression
  • pygam: generative additive models
  • interpretml: boosting-based gam
  • h20 ai: gams + glms (and more)
  • optbinning: data discretization / scoring models
Updates
  • For updates, star the repo, see this related repo, or follow @csinva_
  • Please make sure to give authors of original methods / base implementations appropriate credit!
  • Contributing: pull requests very welcome!

Please cite the package if you use it in an academic work :)

@software{
imodels2021,
title        = {imodels: a python package for fitting interpretable models},
journal      = {Journal of Open Source Software},
publisher    = {The Open Journal},
year         = {2021},
author       = {Singh, Chandan and Nasseri, Keyan and Tan, Yan Shuo and Tang, Tiffany and Yu, Bin},
volume       = {6},
number       = {61},
pages        = {3192},
doi          = {10.21105/joss.03192},
url          = {https://doi.org/10.21105/joss.03192},
}