This paper analyzes the potential advantages and theoretical challenges of "active learning" algorithms. Active learning involves sequential sampling procedures that use information gleaned from previous samples in order to focus the sampling and accelerate the learning process relative to "passive learning" algorithms, which are based on nonadaptive (usually random) samples. There are a number of empirical and theoretical results suggesting that in certain situations active learning can be significantly more effective than passive learning. However, the fact that active learning algorithms are feedback systems makes their theoretical analysis very challenging. This paper aims to shed light on achievable limits in active learning. Using min...
We study pool-based active learning in the presence of noise, i.e. the agnostic setting. Previous wo...
We characterize the sample complexity of active learning problems in terms of a parameter which tak...
We study pool-based active learning in the presence of noise, that is, the agnostic setting. It is k...
This paper analyzes the potential advantages and theoretical challenges of "active learning" algorit...
This thesis presents a general discussion of active learning and adaptive sampling. In many practica...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
AbstractWe state and analyze the first active learning algorithm that finds an ϵ-optimal hypothesis ...
Abstract We address problems of model misspeci\u85cation in active learning. We suppose that an inve...
This paper presents a rigorous statistical analysis characterizing regimes in which active learning ...
This paper presents a rigorous statistical analysis characterizing regimes in which active learning ...
This dissertation develops and analyzes active learning algorithms for binary classification problem...
We study the problem of active learning in a stream-based setting, allowing the distribution of the ...
In this paper we show how large margin assump-tions make it possible to use ideas and algorithms fro...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
We develop unified information-theoretic machinery for deriving lower bounds for passive and active ...
We study pool-based active learning in the presence of noise, i.e. the agnostic setting. Previous wo...
We characterize the sample complexity of active learning problems in terms of a parameter which tak...
We study pool-based active learning in the presence of noise, that is, the agnostic setting. It is k...
This paper analyzes the potential advantages and theoretical challenges of "active learning" algorit...
This thesis presents a general discussion of active learning and adaptive sampling. In many practica...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
AbstractWe state and analyze the first active learning algorithm that finds an ϵ-optimal hypothesis ...
Abstract We address problems of model misspeci\u85cation in active learning. We suppose that an inve...
This paper presents a rigorous statistical analysis characterizing regimes in which active learning ...
This paper presents a rigorous statistical analysis characterizing regimes in which active learning ...
This dissertation develops and analyzes active learning algorithms for binary classification problem...
We study the problem of active learning in a stream-based setting, allowing the distribution of the ...
In this paper we show how large margin assump-tions make it possible to use ideas and algorithms fro...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
We develop unified information-theoretic machinery for deriving lower bounds for passive and active ...
We study pool-based active learning in the presence of noise, i.e. the agnostic setting. Previous wo...
We characterize the sample complexity of active learning problems in terms of a parameter which tak...
We study pool-based active learning in the presence of noise, that is, the agnostic setting. It is k...