A comprehensive toolkit for cluster analysis with full pipeline support
Project description
ClusterTK
A comprehensive toolkit for cluster analysis with full pipeline support
ClusterTK is a Python library designed to streamline the entire cluster analysis workflow. It provides a unified, easy-to-use interface for data preprocessing, feature selection, dimensionality reduction, clustering, evaluation, and interpretation.
Features
- 🔄 Complete Pipeline: One-line solution from raw data to cluster insights
- 🛠️ Modular Design: Use individual components or the full pipeline
- 📊 Multiple Algorithms: K-Means, GMM, Hierarchical, DBSCAN
- 🎯 Automatic Optimization: Auto-selection of optimal cluster numbers
- 📈 Rich Evaluation: Comprehensive metrics (Silhouette, Calinski-Harabasz, Davies-Bouldin)
- 🎨 Optional Visualization: Beautiful plots without mandatory heavy dependencies
- 🔍 Cluster Interpretation: Automatic profiling and naming suggestions
- 📝 Export Results: CSV, JSON, HTML reports
Installation
Basic Installation (Core functionality)
pip install clustertk
With Visualization Support
pip install clustertk[viz]
Full Installation (All features)
pip install clustertk[all]
Development Installation
git clone https://github.com/alexeiveselov92/clustertk.git
cd clustertk
pip install -e .[dev]
Quick Start
import pandas as pd
from clustertk import ClusterAnalysisPipeline
# Load your data
df = pd.read_csv('your_data.csv')
# Create and configure pipeline
pipeline = ClusterAnalysisPipeline(
handle_missing='median', # Handle missing values
correlation_threshold=0.85, # Remove highly correlated features
pca_variance=0.9, # Keep 90% of variance
clustering_algorithm='kmeans', # Use K-Means
n_clusters=None, # Auto-detect optimal number
verbose=True
)
# Run complete analysis
pipeline.fit(df, feature_columns=['col1', 'col2', 'col3'])
# Get results
labels = pipeline.labels_ # Cluster assignments
profiles = pipeline.cluster_profiles_ # Cluster profiles
metrics = pipeline.metrics_ # Quality metrics
# Visualize (if viz dependencies installed)
pipeline.plot_clusters_2d()
pipeline.plot_cluster_profiles()
Step-by-Step Usage
You can also run the pipeline step-by-step for more control:
pipeline = ClusterAnalysisPipeline()
# Step 1: Preprocess data
pipeline.preprocess(df, feature_columns=['col1', 'col2', 'col3'])
# Step 2: Select features
pipeline.select_features()
# Step 3: Reduce dimensions
pipeline.reduce_dimensions()
# Step 4: Find optimal number of clusters
pipeline.find_optimal_clusters()
# Step 5: Perform clustering
pipeline.cluster(n_clusters=5)
# Step 6: Create cluster profiles
pipeline.create_profiles(category_mapping={
'behavioral': ['sessions', 'duration'],
'engagement': ['clicks', 'likes']
})
# Access intermediate results
preprocessed_data = pipeline.data_preprocessed_
pca_components = pipeline.data_reduced_
Pipeline Components
1. Preprocessing
- Missing Values: Median, mean, drop, or custom imputation
- Outliers: IQR detection, robust scaling, clipping, or removal
- Scaling: StandardScaler, RobustScaler, MinMaxScaler, or auto-selection
- Transformations: Log transformation for skewed features
pipeline = ClusterAnalysisPipeline(
handle_missing='median',
handle_outliers='robust',
scaling='robust',
log_transform_skewed=True,
skewness_threshold=2.0
)
2. Feature Selection
- Correlation Filtering: Remove highly correlated features
- Variance Filtering: Remove low-variance features
pipeline = ClusterAnalysisPipeline(
correlation_threshold=0.85,
variance_threshold=0.01
)
3. Dimensionality Reduction
- PCA: Automatic component selection based on variance threshold
- t-SNE/UMAP: For 2D visualization (optional)
pipeline = ClusterAnalysisPipeline(
pca_variance=0.9,
pca_min_components=2
)
4. Clustering
Multiple algorithms supported:
# K-Means
pipeline = ClusterAnalysisPipeline(clustering_algorithm='kmeans', n_clusters=5)
# Gaussian Mixture Model
pipeline = ClusterAnalysisPipeline(clustering_algorithm='gmm', n_clusters=4)
# Hierarchical
pipeline = ClusterAnalysisPipeline(clustering_algorithm='hierarchical', n_clusters=3)
# DBSCAN (auto-detects clusters)
pipeline = ClusterAnalysisPipeline(clustering_algorithm='dbscan')
5. Evaluation
- Automatic optimal cluster number detection
- Multiple metrics: Silhouette, Calinski-Harabasz, Davies-Bouldin
- Elbow method support
pipeline = ClusterAnalysisPipeline(
n_clusters=None, # Auto-detect
n_clusters_range=(2, 10) # Search range
)
6. Interpretation
- Cluster profiling with feature importance
- Automatic cluster naming suggestions
- Category-based analysis
pipeline.create_profiles(category_mapping={
'behavioral': ['sessions', 'duration', 'frequency'],
'social': ['messages', 'friends', 'shares'],
'engagement': ['clicks', 'likes', 'comments']
})
Visualization
If you installed viz dependencies (pip install clustertk[viz]):
# Correlation matrix
pipeline.plot_correlation_matrix()
# PCA variance explained
pipeline.plot_pca_variance()
# Cluster visualization in 2D
pipeline.plot_clusters_2d(method='tsne')
# Cluster profiles heatmap
pipeline.plot_cluster_heatmap()
# Radar charts for clusters
pipeline.plot_cluster_radar()
Export Results
# Export cluster labels to CSV
pipeline.export_results('results.csv', format='csv')
# Export profiles to JSON
pipeline.export_results('profiles.json', format='json')
# Generate HTML report (requires viz dependencies)
pipeline.export_report('report.html')
Advanced Usage
Custom Functions
You can provide custom functions for preprocessing:
def my_custom_imputer(df):
"""Custom missing value imputation logic"""
return df.fillna(df.median())
pipeline = ClusterAnalysisPipeline(
handle_missing=my_custom_imputer
)
Custom Clusterer
Use your own clustering implementation:
from sklearn.cluster import SpectralClustering
custom_clusterer = SpectralClustering(n_clusters=4, random_state=42)
pipeline = ClusterAnalysisPipeline(
clustering_algorithm=custom_clusterer
)
Architecture
ClusterTK is built with a modular architecture:
clustertk/
├── preprocessing/ # Data cleaning and transformation
├── feature_selection/ # Feature filtering
├── dimensionality/ # PCA, t-SNE, UMAP
├── clustering/ # Clustering algorithms
├── evaluation/ # Metrics and optimization
├── interpretation/ # Profiling and naming
└── visualization/ # Plotting (optional)
Each module can be used independently:
from clustertk.preprocessing import MissingValueHandler
from clustertk.clustering import KMeansClustering
# Use individual components
handler = MissingValueHandler(strategy='median')
clean_data = handler.fit_transform(df)
clusterer = KMeansClustering(n_clusters=5)
labels = clusterer.fit_predict(clean_data)
Requirements
Core Dependencies
- numpy >= 1.20.0
- pandas >= 1.3.0
- scikit-learn >= 1.0.0
- scipy >= 1.7.0
Optional Dependencies
- matplotlib >= 3.4.0 (for visualization)
- seaborn >= 0.11.0 (for visualization)
- umap-learn >= 0.5.0 (for UMAP)
- hdbscan >= 0.8.0 (for HDBSCAN)
Examples
Check out the examples directory for complete notebooks:
basic_usage.ipynb- Basic clustering workflowadvanced_customization.ipynb- Custom preprocessing and clusteringvisualization_guide.ipynb- All visualization optionsinterpretation.ipynb- Cluster profiling and interpretation
Documentation
Full documentation is available at: https://clustertk.readthedocs.io
Contributing
Contributions are welcome! Please see CONTRIBUTING.md for guidelines.
License
This project is licensed under the MIT License - see the LICENSE file for details.
Citation
If you use ClusterTK in your research, please cite:
@software{clustertk,
author = {Aleksey Veselov},
title = {ClusterTK: A Comprehensive Toolkit for Cluster Analysis},
year = {2024},
url = {https://github.com/alexeiveselov92/clustertk}
}
Roadmap
- Core pipeline implementation
- Basic clustering algorithms
- Advanced clustering methods (HDBSCAN, Spectral)
- GPU support (cuML integration)
- Streaming/incremental clustering
- AutoML for hyperparameter tuning
- Web UI for interactive analysis
- Time series clustering support
Acknowledgments
ClusterTK builds upon the excellent work of:
- scikit-learn - Machine learning algorithms
- pandas - Data manipulation
- matplotlib & seaborn - Visualization
Support
- 📧 Email: alexei.veselov92@gmail.com
- 🐛 Issues: GitHub Issues
- 💬 Discussions: GitHub Discussions
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