INFO-SEDD: Continuous Time Markov Chains as Scalable Information Metrics Estimators
Alberto Foresti, Giulio Franzese, Pietro Michiardi

TL;DR
INFO-SEDD is a new scalable method for estimating information-theoretic quantities directly from discrete data using Continuous-Time Markov Chains, outperforming existing neural embedding approaches especially in high-dimensional settings.
Contribution
It introduces INFO-SEDD, a novel approach that estimates information measures from discrete data with a single parametric model, enhancing efficiency and scalability.
Findings
Outperforms neural embedding-based estimators in synthetic benchmarks.
Demonstrates robustness and scalability in high-dimensional scenarios.
Successfully estimates entropy of a real-world Ising model.
Abstract
Information-theoretic quantities play a crucial role in understanding non-linear relationships between random variables and are widely used across scientific disciplines. However, estimating these quantities remains an open problem, particularly in the case of high-dimensional discrete distributions. Current approaches typically rely on embedding discrete data into a continuous space and applying neural estimators originally designed for continuous distributions, a process that may not fully capture the discrete nature of the underlying data. We consider Continuous-Time Markov Chains (CTMCs), stochastic processes on discrete state-spaces which have gained popularity due to their generative modeling applications. In this work, we introduce INFO-SEDD, a novel method for estimating information-theoretic quantities of discrete data, including mutual information and entropy. Our approach…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Markov Chains and Monte Carlo Methods · Machine Learning and ELM
