Modern applications of machine teaching for humans often involve domain-specific, non- trivial target hypothesis classes. To facilitate understanding of the target hypothesis, it is crucial for the teaching algorithm to use examples which are interpretable to the human learner. In this paper, we propose NOTES, a principled framework for constructing interpretable teaching sets, utilizing explanations to accelerate the teaching process. Our algorithm is built upon a natural stochastic model of learners and a novel submodular surrogate objective function which greedily selects interpretable teaching examples. We prove that NOTES is competitive with the optimal explanation-based teaching strategy. We further instantiate NOTES with a specific h...
The state-of-the-art machine teaching techniques overestimate the ability of learners in grasping a ...
Inductive learning, which involves largely structural comparisons of examples, and explanation-based...
In the last decade, machine learning evolved from a sub-field of computer science into one of the mo...
Modern applications of machine teaching for humans often involve domain-specific, non- trivial targe...
We study the problem of computer-assisted teaching with explanations. Conventional approaches for ma...
Existing machine learning techniques have only limited capabilities of handling computationally intr...
A student’s ability to learn a new concept can be greatly improved by providing them with clear and ...
A hallmark property of explainable AI models is the ability to teach other agents, communicating kno...
Machine learning is a powerful method for predicting the outcomes of interactions with educational s...
Machine learning models often exhibit complex behavior that is difficult to understand. Recent resea...
Compared to machines, humans are extremely good at classifying images into categories, especially wh...
Machine learning models often exhibit complex behavior that is difficult to understand. Recent resea...
Existing machine learning programs possess only limited abilities to exploit previously acquired bac...
In this paper, we consider the problem of iterative machine teaching, where a teacher provides examp...
We take inspiration from the study of human explanation to inform the design and evaluation of inter...
The state-of-the-art machine teaching techniques overestimate the ability of learners in grasping a ...
Inductive learning, which involves largely structural comparisons of examples, and explanation-based...
In the last decade, machine learning evolved from a sub-field of computer science into one of the mo...
Modern applications of machine teaching for humans often involve domain-specific, non- trivial targe...
We study the problem of computer-assisted teaching with explanations. Conventional approaches for ma...
Existing machine learning techniques have only limited capabilities of handling computationally intr...
A student’s ability to learn a new concept can be greatly improved by providing them with clear and ...
A hallmark property of explainable AI models is the ability to teach other agents, communicating kno...
Machine learning is a powerful method for predicting the outcomes of interactions with educational s...
Machine learning models often exhibit complex behavior that is difficult to understand. Recent resea...
Compared to machines, humans are extremely good at classifying images into categories, especially wh...
Machine learning models often exhibit complex behavior that is difficult to understand. Recent resea...
Existing machine learning programs possess only limited abilities to exploit previously acquired bac...
In this paper, we consider the problem of iterative machine teaching, where a teacher provides examp...
We take inspiration from the study of human explanation to inform the design and evaluation of inter...
The state-of-the-art machine teaching techniques overestimate the ability of learners in grasping a ...
Inductive learning, which involves largely structural comparisons of examples, and explanation-based...
In the last decade, machine learning evolved from a sub-field of computer science into one of the mo...