Participation Constraint
Participation constraints, in various contexts, refer to limitations or restrictions imposed on the optimization process, whether in machine learning model training, constraint programming, or reinforcement learning. Current research focuses on developing efficient algorithms and model architectures (e.g., incorporating constraints into neural networks, using penalty methods, or employing constrained reinforcement learning) to handle these limitations effectively, often within frameworks like alternating direction method of multipliers or constrained Markov decision processes. This research is significant because it enables the development of more robust and reliable systems across diverse fields, from robotics and music generation to power systems optimization and safe AI development, by ensuring solutions adhere to real-world limitations.
Papers
PARAFAC2-based Coupled Matrix and Tensor Factorizations with Constraints
Carla Schenker, Xiulin Wang, David Horner, Morten A. Rasmussen, Evrim Acar
AutoDSL: Automated domain-specific language design for structural representation of procedures with constraints
Yu-Zhe Shi, Haofei Hou, Zhangqian Bi, Fanxu Meng, Xiang Wei, Lecheng Ruan, Qining Wang