Iterative Teaching by Data Hallucination (2210.17467v2)
Abstract: We consider the problem of iterative machine teaching, where a teacher sequentially provides examples based on the status of a learner under a discrete input space (i.e., a pool of finite samples), which greatly limits the teacher's capability. To address this issue, we study iterative teaching under a continuous input space where the input example (i.e., image) can be either generated by solving an optimization problem or drawn directly from a continuous distribution. Specifically, we propose data hallucination teaching (DHT) where the teacher can generate input data intelligently based on labels, the learner's status and the target concept. We study a number of challenging teaching setups (e.g., linear/neural learners in omniscient and black-box settings). Extensive empirical results verify the effectiveness of DHT.
- Zeju Qiu (7 papers)
- Weiyang Liu (83 papers)
- Tim Z. Xiao (16 papers)
- Zhen Liu (234 papers)
- Umang Bhatt (42 papers)
- Yucen Luo (12 papers)
- Adrian Weller (150 papers)
- Bernhard Schölkopf (412 papers)