Theoretical Understanding
Theoretical understanding in artificial intelligence currently focuses on rigorously analyzing the capabilities and limitations of various models, aiming to bridge the gap between empirical observations and formal guarantees. Research emphasizes developing theoretical frameworks for explaining model behavior, particularly in areas like large language models (LLMs), diffusion models, and graph neural networks, often employing techniques from information theory, optimization, and statistical learning theory to analyze model performance and generalization. These theoretical advancements are crucial for improving model design, enhancing reliability, and addressing concerns about robustness, fairness, and explainability, ultimately impacting the trustworthiness and responsible deployment of AI systems across diverse applications.
Papers
A Cloud Resources Portfolio Optimization Business Model -- From Theory to Practice
Valentin Haag, Maximilian Kiessler, Benedikt Pittl, Erich Schikuta
Towards free-response paradigm: a theory on decision-making in spiking neural networks
Zhichao Zhu, Yang Qi, Wenlian Lu, Zhigang Wang, Lu Cao, Jianfeng Feng
Views Are My Own, but Also Yours: Benchmarking Theory of Mind Using Common Ground
Adil Soubki, John Murzaku, Arash Yousefi Jordehi, Peter Zeng, Magdalena Markowska, Seyed Abolghasem Mirroshandel, Owen Rambow
Robustness Bounds on the Successful Adversarial Examples: Theory and Practice
Hiroaki Maeshima, Akira Otsuka