MultiMin: Multivariate Gaussian fitting
Project description
Introducing MultiMin
MultiMin is a Python package designed to provide numerical tools for fitting composed multivariate distributions to data. It is particularly useful for modelling complex multimodal distributions in N-dimensions.
These are the main features of MultiMin:
Multivariate Fitting: Tools for fitting composed multivariate normal distributions (CMND).
Visualization: Density plots and specific visualization utilities.
Statistical Analysis: Tools for handling covariance matrices and correlations.
Documentation
Full API documentation is available at https://multimin.readthedocs.io.
Installation
From PyPI
MultiMin will be available on PyPI at https://pypi.org/project/multimin/. Once published, you can install it with:
pip install -U multimin
From Sources
You can also install from the GitHub repository:
git clone https://github.com/seap-udea/multimin
cd multimin
pip install .
For development, use an editable installation:
cd multimin
pip install -e .
In Google Colab
If you use Google Colab, you can install MultiMin by executing:
!pip install -U multimin
Theoretical Background
The core of MultiMin is the Composed Multivariate Normal Distribution (CMND). The theory behind it posits that any multivariate distribution function \(p(\tilde U):\Re^{N}\rightarrow\Re\), where \(\tilde U:(u_1,u_2,u_3,\ldots,u_N)\) are random variables, can be approximated with arbitrary precision by a normalized linear combination of \(M\) Multivariate Normal Distributions (MND):
where the multivariate normal \(\mathcal{N}(\tilde U; \tilde \mu, \Sigma)\) with mean vector \(\tilde \mu\) and covariance matrix \(\Sigma\) is given by:
The covariance matrix \(\Sigma\) elements are defined as \(\Sigma_{ij} = \rho_{ij}\sigma_{i}\sigma_{j}\), where \(\sigma_i\) is the standard deviation of \(u_i\) and \(\rho_{ij}\) is the correlation coefficient between variable \(u_i\) and \(u_j\) (\(-1<\rho_{ij}<1\), \(\rho_{ii}=1\)).
The normalization condition on \(p(\tilde U)\) implies that the set of weights \(\{w_k\}_M\) are also normalized, i.e., \(\sum_i w_i=1\).
Fitting procedure
To estimate the parameters of the CMND that best describe a given dataset , we use the Likelihood Statistics method.
Given a dataset of \(S\) objects with state vectors \(\{\tilde U_k\}_{k=1}^S\), the likelihood \(\mathcal{L}\) of the CMND parameters is defined as the product of the probability densities evaluated at each data point:
The goal is to find the set of parameters (weights, means, and covariances) that maximize this likelihood. In practice, it is numerically more stable to minimize the negative normalized log-likelihood:
This approach allows us to fit the distribution without making strong assumptions about the underlying normality of the data, effectively treating the CMND as a series expansion of the true probability density function.
In MultiMin, we use the scipy.optimize.minimize function to find the set of parameters that minimize the negative normalized log-likelihood.
Quickstart
Getting started with MultiMin is straightforward. Import the package:
import multimin as mn
NOTE: If you are working in Google Colab, load the matplotlib backend before producing plots:
%matplotlib inline
Here is a basic example of how to use MultiMin to fit a 3D distribution composed of 2 Multivariate Normals.
1. Define a true distribution
First, we define a distribution from which we will generate synthetic data. We use a Composed Multivariate Normal Distribution (CMND) with 2 Gaussian components (ngauss=2) in 3 dimensions (nvars=3).
import numpy as np
import multimin as mn
# Define parameters for 2 Gaussian components
weights = [0.5, 0.5]
mus = [[1.0, 0.5, -0.5], [1.0, -0.5, +0.5]]
sigmas = [[1, 1.2, 2.3], [0.8, 0.2, 3.3]]
deg = np.pi/180
angles = [
[10*deg, 30*deg, 20*deg],
[-20*deg, 0*deg, 30*deg],
]
# Calculate covariance matrices from rotation angles
Sigmas = mn.Stats.calc_covariance_from_rotation(sigmas, angles)
# Create the CMND object
CMND = mn.ComposedMultiVariateNormal(mus=mus, weights=weights, Sigmas=Sigmas)
2. Generate sample data
We generate 5000 random samples from this distribution to serve as our “observed” data.
np.random.seed(1)
data = CMND.rvs(5000)
3. Visualize the data
We can check the distribution of the generated data using DensityPlot.
import matplotlib.pyplot as plt
# Define properties labels
properties = dict(
x=dict(label=r"$x$", range=None),
y=dict(label=r"$y$", range=None),
z=dict(label=r"$z$", range=None),
)
# Plot the density plot
G = mn.DensityPlot(properties, figsize=3)
hargs = dict(bins=30, cmap='Spectral_r')
sargs = dict(s=1.2, edgecolor='None', color='r')
hist = G.scatter_plot(data, **sargs)
4. Initialize the Fitter and Run the Fit
We initialize the FitCMND handler with the expected number of Gaussians (2) and variables (3). We then run the fitting procedure.
# Initialize the fitter
F = mn.FitCMND(ngauss=2, nvars=3)
# Run the fit (using advance=True for better convergence on complex models)
F.fit_data(data, advance=True)
5. Check and Plot Results
Finally, we visualize the fitted distribution compared to the data.
# Plot the fit result
G = F.plot_fit(
props=["x", "y", "z"],
hargs=dict(bins=30, cmap='YlGn'),
sargs=dict(s=0.2, edgecolor='None', color='r'),
figsize=3
)
Citation
The numerical tools and codes provided in this package have been developed and tested over several years of scientific research.
If you use MultiMin in your research, please cite:
@software{multimin2026,
author = {Zuluaga, Jorge I.},
title = {MultiMin: Multivariate Gaussian fitting},
year = {2026},
url = {https://github.com/seap-udea/multimin}
}
What’s New
For a detailed list of changes and new features, see WHATSNEW.md.
Contributing
We welcome contributions! If you’re interested in contributing to MultiMin, please:
Fork the repository
Create a feature branch
Make your changes
Submit a pull request
Please read the CONTRIBUTING.md file for more information.
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