Chen Wang, Eun Kyung Lee, et al.
KubeCon EU 2024
We develop the mathematical formulation for teaching generative models to a learner whose learning processes and cognitive behaviors may be analytically intractable, but can be simulated by numerical processes. The model considers the learner's bias (prior knowledge) or memory process by using stochastic models. We also present an optimization framework for solving the involved non-convex, stochastic optimization problems associated with machine teaching. The algorithm design and the conditions and analysis are discussed for local convergence properties of the proposed optimization algorithms. In the paper, we discuss a number of example cases to illustrate the algorithmic ideas and demonstrate their efficiency.
Chen Wang, Eun Kyung Lee, et al.
KubeCon EU 2024
Haifeng Qian
IJCAI 2020
Nandana Mihindukulasooriya, Jennifer D'souza
KGC 2025
Lingjuan Lyu, Yitong Li, et al.
IEEE TDSC