LGCVJul 8, 2022

Big Learning

arXiv:2207.03899v4h-index: 14
Originality Highly original
AI Analysis

This proposes a foundational paradigm for AI/ML that could unify existing machine learning approaches, but it appears incremental as it builds on current foundation models.

The paper tackles the challenge of developing a universal learning paradigm called big learning, which exploits large-scale training data to model multiple data distributions with a single foundation model, and reports validation through diverse experiments.

Recent advances in big/foundation models reveal a promising path for deep learning, where the roadmap steadily moves from big data to big models to (the newly-introduced) big learning. Specifically, the big learning exhaustively exploits the information inherent in its large-scale complete/incomplete training data, by simultaneously modeling many/all joint/conditional/marginal data distributions across potentially diverse domains, with one universal foundation model. We reveal that big learning ($i$) underlies most existing foundation models, ($ii$) is equipped with extraordinary flexibilities for complete/incomplete training data and trustworthy data tasks, ($iii$) is capable of delivering all joint/conditional/marginal data capabilities with one universal model, and ($iv$) unifies conventional machine learning paradigms and enables their flexible cooperations, manifested as a universal learning paradigm. Diverse experiments are carried out to validate the effectiveness of the presented big learning.

Foundations

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

Your Notes