AbstractWe introduce a formal model of teaching in which the teacher is tailored to a particular learner, yet the teaching protocol is designed so that no collusion is possible. Not surprisingly, such a model remedies the nonintuitive aspects of other models in which the teacher must successfully teach any consistent learner. We prove that any class that can be exactly identified by a deterministic polynomial-time algorithm with access to a very rich set of example-based queries is teachable by a computationally unbounded teacher and a polynomial-time learner. In addition, we present other general results relating this model of teaching to various previous results. We also consider the problem of designing teacher/learner pairs in which bot...
This paper is concerned with the problem of learning translations from minimally adequate teacher. A...
The aim of this pioneering research is to study, design, and implement systems that could tutor othe...
While most theoretical work in machine learning has focused on the complexity of learning, recently ...
We introduce a formal model of teaching in which the teacher is tailored to a particular learner, ye...
AbstractWe introduce a formal model of teaching in which the teacher is tailored to a particular lea...
Goldman and Kearns [GK91] recently introduced a notionof the teaching dimensionof a concept class. T...
AbstractIn a typical algorithmic learning model, a learner has to identify a target object from part...
We consider a model of teaching in which the learners are consistent and have bounded state, but are...
AbstractPrevious teaching models in the learning theory community have been batch models. That is, i...
Abstract. The PAC and other equivalent learning models are widely accepted models for polynomial lea...
Previous teaching models in the learning theory community have been batch models. That is, in these ...
AbstractIn this paper we consider several variants of Valiant's learnability model that have appeare...
New Generation Computing 8, 337-347, 1991This paper considers computationai learning from the viewp...
AbstractIn this paper we introduce and study a new model of exact learning called the teaching assis...
AbstractWe show that simple deterministic languages are polynomial time learnable via membership que...
This paper is concerned with the problem of learning translations from minimally adequate teacher. A...
The aim of this pioneering research is to study, design, and implement systems that could tutor othe...
While most theoretical work in machine learning has focused on the complexity of learning, recently ...
We introduce a formal model of teaching in which the teacher is tailored to a particular learner, ye...
AbstractWe introduce a formal model of teaching in which the teacher is tailored to a particular lea...
Goldman and Kearns [GK91] recently introduced a notionof the teaching dimensionof a concept class. T...
AbstractIn a typical algorithmic learning model, a learner has to identify a target object from part...
We consider a model of teaching in which the learners are consistent and have bounded state, but are...
AbstractPrevious teaching models in the learning theory community have been batch models. That is, i...
Abstract. The PAC and other equivalent learning models are widely accepted models for polynomial lea...
Previous teaching models in the learning theory community have been batch models. That is, in these ...
AbstractIn this paper we consider several variants of Valiant's learnability model that have appeare...
New Generation Computing 8, 337-347, 1991This paper considers computationai learning from the viewp...
AbstractIn this paper we introduce and study a new model of exact learning called the teaching assis...
AbstractWe show that simple deterministic languages are polynomial time learnable via membership que...
This paper is concerned with the problem of learning translations from minimally adequate teacher. A...
The aim of this pioneering research is to study, design, and implement systems that could tutor othe...
While most theoretical work in machine learning has focused on the complexity of learning, recently ...