Adaptive Importance
Adaptive importance focuses on dynamically adjusting resource allocation or model parameters based on learned importance scores or contextual information, aiming to improve efficiency and performance in various machine learning tasks. Current research emphasizes adaptive sampling techniques, hyperparameter optimization strategies (like Loss Conditional Training), and the development of novel architectures such as Mixture-of-Experts models and adaptive low-rank adaptations to achieve this goal. This field is significant because it addresses critical challenges in scalability, efficiency, and robustness across diverse applications, including federated learning, reinforcement learning, and real-time processing on resource-constrained devices.
Papers
AdaptoML-UX: An Adaptive User-centered GUI-based AutoML Toolkit for Non-AI Experts and HCI Researchers
Amr Gomaa, Michael Sargious, Antonio Krüger
Meta Stackelberg Game: Robust Federated Learning against Adaptive and Mixed Poisoning Attacks
Tao Li, Henger Li, Yunian Pan, Tianyi Xu, Zizhan Zheng, Quanyan Zhu
Adaptive and oblivious statistical adversaries are equivalent
Guy Blanc, Gregory Valiant
Truncating Trajectories in Monte Carlo Policy Evaluation: an Adaptive Approach
Riccardo Poiani, Nicole Nobili, Alberto Maria Metelli, Marcello Restelli
Interactive Navigation with Adaptive Non-prehensile Mobile Manipulation
Cunxi Dai, Xiaohan Liu, Koushil Sreenath, Zhongyu Li, Ralph Hollis
DurIAN-E 2: Duration Informed Attention Network with Adaptive Variational Autoencoder and Adversarial Learning for Expressive Text-to-Speech Synthesis
Yu Gu, Qiushi Zhu, Guangzhi Lei, Chao Weng, Dan Su
AdaSwitch: Adaptive Switching between Small and Large Agents for Effective Cloud-Local Collaborative Learning
Hao Sun, Jiayi Wu, Hengyi Cai, Xiaochi Wei, Yue Feng, Bo Wang, Shuaiqiang Wang, Yan Zhang, Dawei Yin
Probabilistic Satisfaction of Temporal Logic Constraints in Reinforcement Learning via Adaptive Policy-Switching
Xiaoshan Lin, Sadık Bera Yüksel, Yasin Yazıcıoğlu, Derya Aksaray
Adaptive AI-Driven Material Synthesis: Towards Autonomous 2D Materials Growth
Leonardo Sabattini, Annalisa Coriolano, Corneel Casert, Stiven Forti, Edward S. Barnard, Fabio Beltram, Massimiliano Pontil, Stephen Whitelam, Camilla Coletti, Antonio Rossi