Minimum-Probability-Flow-Learning

MPF estimator

This project provides Matlab implementations of Minimum Probability Flow learning for parameter estimation in probabilistic models.

Matlab code implementing Minimum Probability Flow Learning.

GitHub

68 stars
7 watching
15 forks
Language: Matlab
last commit: about 10 years ago
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