shap

SHAP (SHapley Additive exPlanations)

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Install skill "shap" with this command: npx skills add k-dense-ai/claude-scientific-skills/k-dense-ai-claude-scientific-skills-shap

SHAP (SHapley Additive exPlanations)

Overview

SHAP is a unified approach to explain machine learning model outputs using Shapley values from cooperative game theory. This skill provides comprehensive guidance for:

  • Computing SHAP values for any model type

  • Creating visualizations to understand feature importance

  • Debugging and validating model behavior

  • Analyzing fairness and bias

  • Implementing explainable AI in production

SHAP works with all model types: tree-based models (XGBoost, LightGBM, CatBoost, Random Forest), deep learning models (TensorFlow, PyTorch, Keras), linear models, and black-box models.

When to Use This Skill

Trigger this skill when users ask about:

  • "Explain which features are most important in my model"

  • "Generate SHAP plots" (waterfall, beeswarm, bar, scatter, force, heatmap, etc.)

  • "Why did my model make this prediction?"

  • "Calculate SHAP values for my model"

  • "Visualize feature importance using SHAP"

  • "Debug my model's behavior" or "validate my model"

  • "Check my model for bias" or "analyze fairness"

  • "Compare feature importance across models"

  • "Implement explainable AI" or "add explanations to my model"

  • "Understand feature interactions"

  • "Create model interpretation dashboard"

Quick Start Guide

Step 1: Select the Right Explainer

Decision Tree:

Tree-based model? (XGBoost, LightGBM, CatBoost, Random Forest, Gradient Boosting)

  • Use shap.TreeExplainer (fast, exact)

Deep neural network? (TensorFlow, PyTorch, Keras, CNNs, RNNs, Transformers)

  • Use shap.DeepExplainer or shap.GradientExplainer

Linear model? (Linear/Logistic Regression, GLMs)

  • Use shap.LinearExplainer (extremely fast)

Any other model? (SVMs, custom functions, black-box models)

  • Use shap.KernelExplainer (model-agnostic but slower)

Unsure?

  • Use shap.Explainer (automatically selects best algorithm)

See references/explainers.md for detailed information on all explainer types.

Step 2: Compute SHAP Values

import shap

Example with tree-based model (XGBoost)

import xgboost as xgb

Train model

model = xgb.XGBClassifier().fit(X_train, y_train)

Create explainer

explainer = shap.TreeExplainer(model)

Compute SHAP values

shap_values = explainer(X_test)

The shap_values object contains:

- values: SHAP values (feature attributions)

- base_values: Expected model output (baseline)

- data: Original feature values

Step 3: Visualize Results

For Global Understanding (entire dataset):

Beeswarm plot - shows feature importance with value distributions

shap.plots.beeswarm(shap_values, max_display=15)

Bar plot - clean summary of feature importance

shap.plots.bar(shap_values)

For Individual Predictions:

Waterfall plot - detailed breakdown of single prediction

shap.plots.waterfall(shap_values[0])

Force plot - additive force visualization

shap.plots.force(shap_values[0])

For Feature Relationships:

Scatter plot - feature-prediction relationship

shap.plots.scatter(shap_values[:, "Feature_Name"])

Colored by another feature to show interactions

shap.plots.scatter(shap_values[:, "Age"], color=shap_values[:, "Education"])

See references/plots.md for comprehensive guide on all plot types.

Core Workflows

This skill supports several common workflows. Choose the workflow that matches the current task.

Workflow 1: Basic Model Explanation

Goal: Understand what drives model predictions

Steps:

  • Train model and create appropriate explainer

  • Compute SHAP values for test set

  • Generate global importance plots (beeswarm or bar)

  • Examine top feature relationships (scatter plots)

  • Explain specific predictions (waterfall plots)

Example:

Step 1-2: Setup

explainer = shap.TreeExplainer(model) shap_values = explainer(X_test)

Step 3: Global importance

shap.plots.beeswarm(shap_values)

Step 4: Feature relationships

shap.plots.scatter(shap_values[:, "Most_Important_Feature"])

Step 5: Individual explanation

shap.plots.waterfall(shap_values[0])

Workflow 2: Model Debugging

Goal: Identify and fix model issues

Steps:

  • Compute SHAP values

  • Identify prediction errors

  • Explain misclassified samples

  • Check for unexpected feature importance (data leakage)

  • Validate feature relationships make sense

  • Check feature interactions

See references/workflows.md for detailed debugging workflow.

Workflow 3: Feature Engineering

Goal: Use SHAP insights to improve features

Steps:

  • Compute SHAP values for baseline model

  • Identify nonlinear relationships (candidates for transformation)

  • Identify feature interactions (candidates for interaction terms)

  • Engineer new features

  • Retrain and compare SHAP values

  • Validate improvements

See references/workflows.md for detailed feature engineering workflow.

Workflow 4: Model Comparison

Goal: Compare multiple models to select best interpretable option

Steps:

  • Train multiple models

  • Compute SHAP values for each

  • Compare global feature importance

  • Check consistency of feature rankings

  • Analyze specific predictions across models

  • Select based on accuracy, interpretability, and consistency

See references/workflows.md for detailed model comparison workflow.

Workflow 5: Fairness and Bias Analysis

Goal: Detect and analyze model bias across demographic groups

Steps:

  • Identify protected attributes (gender, race, age, etc.)

  • Compute SHAP values

  • Compare feature importance across groups

  • Check protected attribute SHAP importance

  • Identify proxy features

  • Implement mitigation strategies if bias found

See references/workflows.md for detailed fairness analysis workflow.

Workflow 6: Production Deployment

Goal: Integrate SHAP explanations into production systems

Steps:

  • Train and save model

  • Create and save explainer

  • Build explanation service

  • Create API endpoints for predictions with explanations

  • Implement caching and optimization

  • Monitor explanation quality

See references/workflows.md for detailed production deployment workflow.

Key Concepts

SHAP Values

Definition: SHAP values quantify each feature's contribution to a prediction, measured as the deviation from the expected model output (baseline).

Properties:

  • Additivity: SHAP values sum to difference between prediction and baseline

  • Fairness: Based on Shapley values from game theory

  • Consistency: If a feature becomes more important, its SHAP value increases

Interpretation:

  • Positive SHAP value → Feature pushes prediction higher

  • Negative SHAP value → Feature pushes prediction lower

  • Magnitude → Strength of feature's impact

  • Sum of SHAP values → Total prediction change from baseline

Example:

Baseline (expected value): 0.30 Feature contributions (SHAP values): Age: +0.15 Income: +0.10 Education: -0.05 Final prediction: 0.30 + 0.15 + 0.10 - 0.05 = 0.50

Background Data / Baseline

Purpose: Represents "typical" input to establish baseline expectations

Selection:

  • Random sample from training data (50-1000 samples)

  • Or use kmeans to select representative samples

  • For DeepExplainer/KernelExplainer: 100-1000 samples balances accuracy and speed

Impact: Baseline affects SHAP value magnitudes but not relative importance

Model Output Types

Critical Consideration: Understand what your model outputs

  • Raw output: For regression or tree margins

  • Probability: For classification probability

  • Log-odds: For logistic regression (before sigmoid)

Example: XGBoost classifiers explain margin output (log-odds) by default. To explain probabilities, use model_output="probability" in TreeExplainer.

Common Patterns

Pattern 1: Complete Model Analysis

1. Setup

explainer = shap.TreeExplainer(model) shap_values = explainer(X_test)

2. Global importance

shap.plots.beeswarm(shap_values) shap.plots.bar(shap_values)

3. Top feature relationships

top_features = X_test.columns[np.abs(shap_values.values).mean(0).argsort()[-5:]] for feature in top_features: shap.plots.scatter(shap_values[:, feature])

4. Example predictions

for i in range(5): shap.plots.waterfall(shap_values[i])

Pattern 2: Cohort Comparison

Define cohorts

cohort1_mask = X_test['Group'] == 'A' cohort2_mask = X_test['Group'] == 'B'

Compare feature importance

shap.plots.bar({ "Group A": shap_values[cohort1_mask], "Group B": shap_values[cohort2_mask] })

Pattern 3: Debugging Errors

Find errors

errors = model.predict(X_test) != y_test error_indices = np.where(errors)[0]

Explain errors

for idx in error_indices[:5]: print(f"Sample {idx}:") shap.plots.waterfall(shap_values[idx])

# Investigate key features
shap.plots.scatter(shap_values[:, "Suspicious_Feature"])

Performance Optimization

Speed Considerations

Explainer Speed (fastest to slowest):

  • LinearExplainer

  • Nearly instantaneous

  • TreeExplainer

  • Very fast

  • DeepExplainer

  • Fast for neural networks

  • GradientExplainer

  • Fast for neural networks

  • KernelExplainer

  • Slow (use only when necessary)

  • PermutationExplainer

  • Very slow but accurate

Optimization Strategies

For Large Datasets:

Compute SHAP for subset

shap_values = explainer(X_test[:1000])

Or use batching

batch_size = 100 all_shap_values = [] for i in range(0, len(X_test), batch_size): batch_shap = explainer(X_test[i:i+batch_size]) all_shap_values.append(batch_shap)

For Visualizations:

Sample subset for plots

shap.plots.beeswarm(shap_values[:1000])

Adjust transparency for dense plots

shap.plots.scatter(shap_values[:, "Feature"], alpha=0.3)

For Production:

Cache explainer

import joblib joblib.dump(explainer, 'explainer.pkl') explainer = joblib.load('explainer.pkl')

Pre-compute for batch predictions

Only compute top N features for API responses

Troubleshooting

Issue: Wrong explainer choice

Problem: Using KernelExplainer for tree models (slow and unnecessary) Solution: Always use TreeExplainer for tree-based models

Issue: Insufficient background data

Problem: DeepExplainer/KernelExplainer with too few background samples Solution: Use 100-1000 representative samples

Issue: Confusing units

Problem: Interpreting log-odds as probabilities Solution: Check model output type; understand whether values are probabilities, log-odds, or raw outputs

Issue: Plots don't display

Problem: Matplotlib backend issues Solution: Ensure backend is set correctly; use plt.show() if needed

Issue: Too many features cluttering plots

Problem: Default max_display=10 may be too many or too few Solution: Adjust max_display parameter or use feature clustering

Issue: Slow computation

Problem: Computing SHAP for very large datasets Solution: Sample subset, use batching, or ensure using specialized explainer (not KernelExplainer)

Integration with Other Tools

Jupyter Notebooks

  • Interactive force plots work seamlessly

  • Inline plot display with show=True (default)

  • Combine with markdown for narrative explanations

MLflow / Experiment Tracking

import mlflow

with mlflow.start_run(): # Train model model = train_model(X_train, y_train)

# Compute SHAP
explainer = shap.TreeExplainer(model)
shap_values = explainer(X_test)

# Log plots
shap.plots.beeswarm(shap_values, show=False)
mlflow.log_figure(plt.gcf(), "shap_beeswarm.png")
plt.close()

# Log feature importance metrics
mean_abs_shap = np.abs(shap_values.values).mean(axis=0)
for feature, importance in zip(X_test.columns, mean_abs_shap):
    mlflow.log_metric(f"shap_{feature}", importance)

Production APIs

class ExplanationService: def init(self, model_path, explainer_path): self.model = joblib.load(model_path) self.explainer = joblib.load(explainer_path)

def predict_with_explanation(self, X):
    prediction = self.model.predict(X)
    shap_values = self.explainer(X)

    return {
        'prediction': prediction[0],
        'base_value': shap_values.base_values[0],
        'feature_contributions': dict(zip(X.columns, shap_values.values[0]))
    }

Reference Documentation

This skill includes comprehensive reference documentation organized by topic:

references/explainers.md

Complete guide to all explainer classes:

  • TreeExplainer

  • Fast, exact explanations for tree-based models

  • DeepExplainer

  • Deep learning models (TensorFlow, PyTorch)

  • KernelExplainer

  • Model-agnostic (works with any model)

  • LinearExplainer

  • Fast explanations for linear models

  • GradientExplainer

  • Gradient-based for neural networks

  • PermutationExplainer

  • Exact but slow for any model

Includes: Constructor parameters, methods, supported models, when to use, examples, performance considerations.

references/plots.md

Comprehensive visualization guide:

  • Waterfall plots - Individual prediction breakdowns

  • Beeswarm plots - Global importance with value distributions

  • Bar plots - Clean feature importance summaries

  • Scatter plots - Feature-prediction relationships and interactions

  • Force plots - Interactive additive force visualizations

  • Heatmap plots - Multi-sample comparison grids

  • Violin plots - Distribution-focused alternatives

  • Decision plots - Multiclass prediction paths

Includes: Parameters, use cases, examples, best practices, plot selection guide.

references/workflows.md

Detailed workflows and best practices:

  • Basic model explanation workflow

  • Model debugging and validation

  • Feature engineering guidance

  • Model comparison and selection

  • Fairness and bias analysis

  • Deep learning model explanation

  • Production deployment

  • Time series model explanation

  • Common pitfalls and solutions

  • Advanced techniques

  • MLOps integration

Includes: Step-by-step instructions, code examples, decision criteria, troubleshooting.

references/theory.md

Theoretical foundations:

  • Shapley values from game theory

  • Mathematical formulas and properties

  • Connection to other explanation methods (LIME, DeepLIFT, etc.)

  • SHAP computation algorithms (Tree SHAP, Kernel SHAP, etc.)

  • Conditional expectations and baseline selection

  • Interpreting SHAP values

  • Interaction values

  • Theoretical limitations and considerations

Includes: Mathematical foundations, proofs, comparisons, advanced topics.

Usage Guidelines

When to load reference files:

  • Load explainers.md when user needs detailed information about specific explainer types or parameters

  • Load plots.md when user needs detailed visualization guidance or exploring plot options

  • Load workflows.md when user has complex multi-step tasks (debugging, fairness analysis, production deployment)

  • Load theory.md when user asks about theoretical foundations, Shapley values, or mathematical details

Default approach (without loading references):

  • Use this SKILL.md for basic explanations and quick start

  • Provide standard workflows and common patterns

  • Reference files are available if more detail is needed

Loading references:

To load reference files, use the Read tool with appropriate file path:

/path/to/shap/references/explainers.md

/path/to/shap/references/plots.md

/path/to/shap/references/workflows.md

/path/to/shap/references/theory.md

Best Practices Summary

Choose the right explainer: Use specialized explainers (TreeExplainer, DeepExplainer, LinearExplainer) when possible; avoid KernelExplainer unless necessary

Start global, then go local: Begin with beeswarm/bar plots for overall understanding, then dive into waterfall/scatter plots for details

Use multiple visualizations: Different plots reveal different insights; combine global (beeswarm) + local (waterfall) + relationship (scatter) views

Select appropriate background data: Use 50-1000 representative samples from training data

Understand model output units: Know whether explaining probabilities, log-odds, or raw outputs

Validate with domain knowledge: SHAP shows model behavior; use domain expertise to interpret and validate

Optimize for performance: Sample subsets for visualization, batch for large datasets, cache explainers in production

Check for data leakage: Unexpectedly high feature importance may indicate data quality issues

Consider feature correlations: Use TreeExplainer's correlation-aware options or feature clustering for redundant features

Remember SHAP shows association, not causation: Use domain knowledge for causal interpretation

Installation

Basic installation

uv pip install shap

With visualization dependencies

uv pip install shap matplotlib

Latest version

uv pip install -U shap

Dependencies: numpy, pandas, scikit-learn, matplotlib, scipy

Optional: xgboost, lightgbm, tensorflow, torch (depending on model types)

Additional Resources

  • Official Documentation: https://shap.readthedocs.io/

  • GitHub Repository: https://github.com/slundberg/shap

  • Original Paper: Lundberg & Lee (2017) - "A Unified Approach to Interpreting Model Predictions"

  • Nature MI Paper: Lundberg et al. (2020) - "From local explanations to global understanding with explainable AI for trees"

This skill provides comprehensive coverage of SHAP for model interpretability across all use cases and model types.

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