We describe a framework for designing efficient active learning algorithms that are tolerant to random classification noise and are differentially-private. The framework is based on active learning algorithms that are statistical in the sense that they rely on estimates of expectations of functions of filtered random examples. It builds on the powerful statistical query framework of Kearns [Kea98]. We show that any efficient active statistical learning algorithm can be automatically con-verted to an efficient active learning algorithm which is tolerant to random classification noise as well as other forms of “uncorrelated ” noise. The complexity of the resulting algorithms has information-theoretically optimal quadratic dependence on 1/(1−2...
<p>We introduce a new approach for designing computationally efficient and noise tolerant algorithms...
Recent decades have witnessed great success of machine learning, especially for tasks where large an...
Recent decades have witnessed great success of machine learning, especially for tasks where large an...
We describe a framework for designing efficient active learning algorithms that are tolerant to rand...
<p>We describe a framework for designing efficient active learning algorithms that are tolerant to r...
AbstractWe state and analyze the first active learning algorithm that finds an ϵ-optimal hypothesis ...
<p>We present a polynomial-time noise-robust margin-based active learning algorithm to find homogene...
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...
AbstractWe state and analyze the first active learning algorithm that finds an ϵ-optimal hypothesis ...
We present a simple noise-robust margin-based active learn-ing algorithm to find homogeneous (passin...
This work studies the problem of privacy-preserving classification – namely, learning a classifier f...
We present a simple noise-robust margin-based active learn-ing algorithm to find homogeneous (passin...
We present an agnostic active learning algorithm for any hypothesis class of bounded VC dimension un...
We introduce a new approach for designing computationally efficient learning algorithms that are tol...
<p>We introduce a new approach for designing computationally efficient and noise tolerant algorithms...
Recent decades have witnessed great success of machine learning, especially for tasks where large an...
Recent decades have witnessed great success of machine learning, especially for tasks where large an...
We describe a framework for designing efficient active learning algorithms that are tolerant to rand...
<p>We describe a framework for designing efficient active learning algorithms that are tolerant to r...
AbstractWe state and analyze the first active learning algorithm that finds an ϵ-optimal hypothesis ...
<p>We present a polynomial-time noise-robust margin-based active learning algorithm to find homogene...
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...
AbstractWe state and analyze the first active learning algorithm that finds an ϵ-optimal hypothesis ...
We present a simple noise-robust margin-based active learn-ing algorithm to find homogeneous (passin...
This work studies the problem of privacy-preserving classification – namely, learning a classifier f...
We present a simple noise-robust margin-based active learn-ing algorithm to find homogeneous (passin...
We present an agnostic active learning algorithm for any hypothesis class of bounded VC dimension un...
We introduce a new approach for designing computationally efficient learning algorithms that are tol...
<p>We introduce a new approach for designing computationally efficient and noise tolerant algorithms...
Recent decades have witnessed great success of machine learning, especially for tasks where large an...
Recent decades have witnessed great success of machine learning, especially for tasks where large an...