We consider formal models of learning from noisy data. Specifically, we focus on learning in the probability approximately correct model as defined by Valiant. Two of the most widely studied models of noise in this setting have been classification noise and malicious errors. However, a more realistic model combining the two types of noise has not been formalized. We define a learning environment based on a natural combination of these two noise models. We first show that hypothesis testing is possible in this model. We next describe a simple technique for learning in this model, and then describe a more powerful technique based on statistical query learning. We show that the noise tolerance of this improved technique is roughly optimal wit...
We present a new approach for learning programs from noisy datasets. Our approach is based on two ne...
<p>We describe a framework for designing efficient active learning algorithms that are tolerant to r...
International audienceTo study the problem of learning from noisy data, the common approach is to us...
The problem deals with learning to classify from random labeled examples in Valiant’s PAC model [30]...
Learning systems are often provided with imperfect or noisy data. Therefore, researchers have formal...
The statistical query learning model can be viewed as a tool for creating (or demonstrating the exis...
AbstractKearns introduced the “statistical query” (SQ) model as a general method for producing learn...
AbstractA recent innovation in computational learning theory is the statistical query (SQ) model. Th...
We investigate learnability in the PAC model when the data used for learning, attributes and labels,...
In this paper we propose and study a generalization of the standard active-learning model where a mo...
<p>In this paper we propose and study a generalization of the standard active-learning model where a...
This paper presents an approach to learning from noisy data that views the problem as one of reasoni...
We study online learning of linear and kernel-based predictors, when individual examples are corrupt...
We describe a framework for designing efficient active learning algorithms that are tolerant to rand...
We describe a framework for designing efficient active learning algorithms that are tolerant to rand...
We present a new approach for learning programs from noisy datasets. Our approach is based on two ne...
<p>We describe a framework for designing efficient active learning algorithms that are tolerant to r...
International audienceTo study the problem of learning from noisy data, the common approach is to us...
The problem deals with learning to classify from random labeled examples in Valiant’s PAC model [30]...
Learning systems are often provided with imperfect or noisy data. Therefore, researchers have formal...
The statistical query learning model can be viewed as a tool for creating (or demonstrating the exis...
AbstractKearns introduced the “statistical query” (SQ) model as a general method for producing learn...
AbstractA recent innovation in computational learning theory is the statistical query (SQ) model. Th...
We investigate learnability in the PAC model when the data used for learning, attributes and labels,...
In this paper we propose and study a generalization of the standard active-learning model where a mo...
<p>In this paper we propose and study a generalization of the standard active-learning model where a...
This paper presents an approach to learning from noisy data that views the problem as one of reasoni...
We study online learning of linear and kernel-based predictors, when individual examples are corrupt...
We describe a framework for designing efficient active learning algorithms that are tolerant to rand...
We describe a framework for designing efficient active learning algorithms that are tolerant to rand...
We present a new approach for learning programs from noisy datasets. Our approach is based on two ne...
<p>We describe a framework for designing efficient active learning algorithms that are tolerant to r...
International audienceTo study the problem of learning from noisy data, the common approach is to us...