ITLGMay 23, 2023

Reviewing Evolution of Learning Functions and Semantic Information Measures for Understanding Deep Learning

arXiv:2305.14397v16 citations
Originality Synthesis-oriented
AI Analysis

This work connects historical semantic information theory to current deep learning trends, offering potential simplifications for practitioners, but it is largely incremental as it revisits and applies existing concepts.

The paper reviews the evolution of semantic information measures and learning functions, highlighting that Estimated Mutual Information (EMI) used in modern deep learning methods like MINE and InfoNCE is essentially the same as Semantic Mutual Information (SeMI) proposed decades ago, and it applies SeMI to tasks such as multi-label learning and mixture models to simplify deep learning.

A new trend in deep learning, represented by Mutual Information Neural Estimation (MINE) and Information Noise Contrast Estimation (InfoNCE), is emerging. In this trend, similarity functions and Estimated Mutual Information (EMI) are used as learning and objective functions. Coincidentally, EMI is essentially the same as Semantic Mutual Information (SeMI) proposed by the author 30 years ago. This paper first reviews the evolutionary histories of semantic information measures and learning functions. Then, it briefly introduces the author's semantic information G theory with the rate-fidelity function R(G) (G denotes SeMI, and R(G) extends R(D)) and its applications to multi-label learning, the maximum Mutual Information (MI) classification, and mixture models. Then it discusses how we should understand the relationship between SeMI and Shan-non's MI, two generalized entropies (fuzzy entropy and coverage entropy), Autoencoders, Gibbs distributions, and partition functions from the perspective of the R(G) function or the G theory. An important conclusion is that mixture models and Restricted Boltzmann Machines converge because SeMI is maximized, and Shannon's MI is minimized, making information efficiency G/R close to 1. A potential opportunity is to simplify deep learning by using Gaussian channel mixture models for pre-training deep neural networks' latent layers without considering gradients. It also discusses how the SeMI measure is used as the reward function (reflecting purposiveness) for reinforcement learning. The G theory helps interpret deep learning but is far from enough. Combining semantic information theory and deep learning will accelerate their development.

Foundations

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

Your Notes