Missing Value Imputation using Deep Gaussian Processes with a scikit-learn compatible API.
Project description
MGP-Imputer: Missing Value Imputation with Deep Gaussian Processes
A PyTorch-based implementation of Missing Gaussian Processes (MGP) for missing value imputation, wrapped in a user-friendly scikit-learn compatible API.
This package allows you to seamlessly integrate Deep Gaussian Process models into your data preprocessing pipelines for robust and uncertainty-aware imputation. It is based on the paper "Gaussian processes for missing value imputation".
Features
- Scikit-learn Compatible: Use
fit,predict, andfit_transformmethods just like any other scikit-learn transformer. - Two Imputation Strategies:
chained(Default): Builds a separate GP layer for each feature with missing values, modeling dependencies in a chained fashion (MGP).holistic: Builds a single, multi-output Deep GP to model all features simultaneously.
- Probabilistic Imputation: Returns both the imputed values and the standard deviation, giving you a measure of uncertainty for each imputed value.
- GPU Accelerated: Leverages PyTorch to run on CUDA devices for significant speedups.
Installation
You can install mgp-imputer directly from PyPI:
pip install mgp-imputer
Quick Start
Here's how to use MGPImputer to fill in missing values (np.nan) in your dataset.
import numpy as np
import pandas as pd
from mgp import MGPImputer
# 1. Create a synthetic dataset with 20% missing values
np.random.seed(42)
n_samples, n_features = 200, 5
X_true = np.random.rand(n_samples, n_features) * 10
X_missing = X_true.copy()
missing_mask = np.random.rand(n_samples, n_features) < 0.2
X_missing[missing_mask] = np.nan
print(f"Created a dataset with {np.sum(missing_mask)} missing values.")
# 2. Initialize the MGPImputer
# Strategies can be 'chained' (default) or 'holistic'
imputer = MGPImputer(
imputation_strategy='chained',
n_inducing_points=100,
n_iterations=1000, # Use more iterations for real data
learning_rate=0.01,
batch_size=64,
verbose=True,
seed=42
)
# 3. Fit on the data and transform it to get imputed values
# The imputer returns the imputed data and the standard deviation of the predictions
X_imputed, X_std = imputer.fit_transform(X_missing)
# 4. Evaluate the imputation quality
rmse = np.sqrt(np.mean((X_imputed[missing_mask] - X_true[missing_mask])**2))
print(f"\nImputation complete.")
print(f"RMSE on missing values: {rmse:.4f}")
# The result is a complete numpy array
print("\nImputed data shape:", X_imputed.shape)
print("Number of NaNs in imputed data:", np.isnan(X_imputed).sum())
Configuration Options
You can customize the behavior of MGPImputer by passing parameters during initialization. Here are the available options:
| Parameter | Description | Type | Options | Default |
|---|---|---|---|---|
imputation_strategy |
The core method for building the GP model. | str |
'chained', 'holistic' |
'chained' |
imp_init |
The standard imputation method used to create an initial complete dataset before training the GP. | str |
'mean', 'median', 'knn', 'mice', 'constant' |
'mean' |
kernel |
The covariance function for the Gaussian Process layers. | str |
'matern', 'rbf' |
'matern' |
n_layers |
The number of layers in the Deep GP. Only used when imputation_strategy is 'holistic'. |
int |
> 0 |
2 |
n_inducing_points |
The number of inducing points for the sparse GP approximation. A higher number is more accurate but computationally slower. | int |
> 0 |
100 |
n_iterations |
The total number of optimization iterations to run during training. | int |
> 0 |
10000 |
n_samples |
The number of Monte Carlo samples drawn to approximate the model's posterior distribution. | int |
> 0 |
20 |
learning_rate |
The learning rate for the Adam optimizer. | float |
> 0 |
0.01 |
batch_size |
The number of data points in each mini-batch during training. | int |
> 0 |
128 |
likelihood_var |
The initial variance of the Gaussian likelihood function. | float |
> 0 |
0.01 |
var_noise |
The initial variance of the white noise added to the kernel. | float |
> 0 |
0.0001 |
verbose |
If True, prints training progress and other information. |
bool |
True, False |
True |
use_cuda |
If True, the model will run on a GPU if one is available. |
bool |
True, False |
True |
seed |
A random seed for reproducibility of results. | int |
≥ 0 |
0 |
Citation
If you use this work in your research, please cite the original paper:
Jafrasteh, B., Hernández-Lobato, D., Lubián-López, S. P., & Benavente-Fernández, I. (2023). Gaussian processes for missing value imputation. Knowledge-Based Systems, 273, 110603. Missing GPs
License
This project is licensed under the MIT License.
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