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Joint modeling with automatic differentiation

Project description

📦 jmstate

jmstate is a Python package for multi-state nonlinear joint modeling.
It leverages PyTorch for automatic differentiation and vectorized computation, making it efficient and scalable. The package provides a flexible framework where you can use neural networks as regression and link functions, while still offering simpler built-in options like parametric baseline hazards.

With jmstate, you can model longitudinal data jointly with multi-state transitions (e.g. health progression), capture nonlinear effects, and perform inference in complex real-world settings.


✨ Features

  • Multi-State Joint Modeling
    Supports subjects moving through multiple states with transition intensities that depend on longitudinal trajectories and covariates.

  • Nonlinear Flexibility
    Use neural networks (or any PyTorch model) as regression or link functions.

  • Built-in Tools
    Includes default baseline hazards, regression, link functions, and analysis utilities.

  • Automatic Differentiation & GPU Support
    Powered by PyTorch for efficient gradient computation and vectorization.

  • Analysis & Visualization
    Tools for state occupancy probabilities, hazard estimation, and residual diagnostics.


🚀 Installation

pip install jmstate

📖 Learn More

For tutorials, API reference, visit the official site:
👉 jmstate Documentation

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