LGFeb 26, 2025

INFO-SEDD: Continuous Time Markov Chains as Scalable Information Metrics Estimators

arXiv:2502.19183v22 citationsh-index: 6
Originality Incremental advance
AI Analysis

It addresses a bottleneck in information theory for researchers and practitioners dealing with discrete data, offering a more efficient and accurate estimator, though it appears incremental as it builds on existing CTMC methods.

The paper tackles the problem of estimating information-theoretic quantities like mutual information and entropy for high-dimensional discrete distributions, introducing INFO-SEDD, which uses Continuous-Time Markov Chains and outperforms neural competitors on synthetic and real-world benchmarks, showing scalability to high dimensions.

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 requires the training of a single parametric model, offering significant computational and memory advantages. Additionally, it seamlessly integrates with pretrained networks, allowing for efficient reuse of pretrained generative models. To evaluate our approach, we construct a challenging synthetic benchmark. Our experiments demonstrate that INFO-SEDD is robust and outperforms neural competitors that rely on embedding techniques. Moreover, we validate our method on a real-world task: estimating the entropy of an Ising model. Overall, INFO-SEDD outperforms competing methods and shows scalability to high-dimensional scenarios, paving the way for new applications where estimating MI between discrete distribution is the focus. The promising results in this complex, high-dimensional scenario highlight INFO-SEDD as a powerful new estimator in the toolkit for information-theoretical analysis.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes