One-shot Machine Teaching: Cost Very Few Examples to Converge Faster

12/13/2022
by   Chen Zhang, et al.
0

Artificial intelligence is to teach machines to take actions like humans. To achieve intelligent teaching, the machine learning community becomes to think about a promising topic named machine teaching where the teacher is to design the optimal (usually minimal) teaching set given a target model and a specific learner. However, previous works usually require numerous teaching examples along with large iterations to guide learners to converge, which is costly. In this paper, we consider a more intelligent teaching paradigm named one-shot machine teaching which costs fewer examples to converge faster. Different from typical teaching, this advanced paradigm establishes a tractable mapping from the teaching set to the model parameter. Theoretically, we prove that this mapping is surjective, which serves to an existence guarantee of the optimal teaching set. Then, relying on the surjective mapping from the teaching set to the parameter, we develop a design strategy of the optimal teaching set under appropriate settings, of which two popular efficiency metrics, teaching dimension and iterative teaching dimension are one. Extensive experiments verify the efficiency of our strategy and further demonstrate the intelligence of this new teaching paradigm.

READ FULL TEXT
research
05/30/2017

Iterative Machine Teaching

In this paper, we consider the problem of machine teaching, the inverse ...
research
10/27/2021

Iterative Teaching by Label Synthesis

In this paper, we consider the problem of iterative machine teaching, wh...
research
06/05/2023

Nonparametric Iterative Machine Teaching

In this paper, we consider the problem of Iterative Machine Teaching (IM...
research
01/18/2018

An Overview of Machine Teaching

In this paper we try to organize machine teaching as a coherent set of i...
research
04/21/2022

A Framework for Interactive Knowledge-Aided Machine Teaching

Machine Teaching (MT) is an interactive process where humans train a mac...
research
11/22/2021

Teaching Humans When To Defer to a Classifier via Exemplars

Expert decision makers are starting to rely on data-driven automated age...
research
05/25/2016

Toward a general, scaleable framework for Bayesian teaching with applications to topic models

Machines, not humans, are the world's dominant knowledge accumulators bu...

Please sign up or login with your details

Forgot password? Click here to reset