Title
Iterative Teacher-Aware Learning.
Abstract
In human pedagogy, teachers and students can interact adaptively to maximize communication efficiency. The teacher adjusts her teaching method for different students, and the student, after getting familiar with the teacher’s instruction mechanism, can infer the teacher’s intention to learn faster. Recently, the benefits of integrating this cooperative pedagogy into machine concept learning in discrete spaces have been proved by multiple works. However, how cooperative pedagogy can facilitate machine parameter learning hasn’t been thoroughly studied. In this paper, we propose a gradient optimization based teacher-aware learner who can incorporate teacher’s cooperative intention into the likelihood function and learn provably faster compared with the naive learning algorithms used in previous machine teaching works. We give theoretical proof that the iterative teacher-aware learning (ITAL) process leads to local and global improvements. We then validate our algorithms with extensive experiments on various tasks including regression, classification, and inverse reinforcement learning using synthetic and real data. We also show the advantage of modeling teacher-awareness when agents are learning from human teachers.
Year
Venue
DocType
2021
Annual Conference on Neural Information Processing Systems
Conference
ISSN
Citations 
PageRank 
Advances in Neural Information Processing Systems (2021)
0
0.34
References 
Authors
0
8
Name
Order
Citations
PageRank
Luyao Yuan100.34
Dongruo Zhou2509.91
Junhong Shen300.34
Jingdong Gao400.34
Jeffrey Chen564.61
Quanquan Gu6111678.25
Ying Nian Wu71652267.72
Song-Chun Zhu86580741.75