Skip to main content

A comprehensive toolkit for cluster analysis with full pipeline support

Project description

ClusterTK

A comprehensive toolkit for cluster analysis with full pipeline support

Python Version License

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_heatmap()  # or plot_cluster_radar()

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()

Note for Jupyter users: To prevent automatic display duplication in Jupyter notebooks, add ; at the end of plot commands:

pipeline.plot_clusters_2d();  # Semicolon suppresses automatic display

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 workflow
  • advanced_customization.ipynb - Custom preprocessing and clustering
  • visualization_guide.ipynb - All visualization options
  • interpretation.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:

Support

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

clustertk-0.3.1.tar.gz (57.1 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

clustertk-0.3.1-py3-none-any.whl (71.2 kB view details)

Uploaded Python 3

File details

Details for the file clustertk-0.3.1.tar.gz.

File metadata

  • Download URL: clustertk-0.3.1.tar.gz
  • Upload date:
  • Size: 57.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.3

File hashes

Hashes for clustertk-0.3.1.tar.gz
Algorithm Hash digest
SHA256 b907b33852836c0a4b1f52f27c7ef6e8ded7ba724bf05e27b33c8f5112e9aeb6
MD5 64b669b90f2559cc32ef8dcb7e81c02e
BLAKE2b-256 6f96d634b135cc4eb366c24f55a0c6fe79e34a5b3448b1c0b21c5f2610bb532a

See more details on using hashes here.

File details

Details for the file clustertk-0.3.1-py3-none-any.whl.

File metadata

  • Download URL: clustertk-0.3.1-py3-none-any.whl
  • Upload date:
  • Size: 71.2 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.3

File hashes

Hashes for clustertk-0.3.1-py3-none-any.whl
Algorithm Hash digest
SHA256 767d862d3c86f617b071404f12529046c63211028c9259870a80e12dffd5c0ec
MD5 b3c9b205c9a9ee15d484ce8c2a859aac
BLAKE2b-256 d6898f31bffaedc701b66f0dd77c593f623b2a003fa8961c9f95cb1fdcc30c71

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page