AbstractAn active learner has a collection of data points, each with a label that is initially hidden but can be obtained at some cost. Without spending too much, it wishes to find a classifier that will accurately map points to labels. There are two common intuitions about how this learning process should be organized: (i) by choosing query points that shrink the space of candidate classifiers as rapidly as possible; and (ii) by exploiting natural clusters in the (unlabeled) data set. Recent research has yielded learning algorithms for both paradigms that are efficient, work with generic hypothesis classes, and have rigorously characterized labeling requirements. Here we survey these advances by focusing on two representative algorithms an...
Data labeling is an expensive and time-consuming task. Choosing which labels to use is increasingly ...
In this work we discuss the problem of active learning. We present an approach that is based on A-op...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
Traditional supervised machine learning algorithms are expected to have access to a large corpus of ...
Recent decades have witnessed great success of machine learning, especially for tasks where large an...
AbstractWe state and analyze the first active learning algorithm that finds an ϵ-optimal hypothesis ...
Traditional active learning methods require the labeler to provide a class label for each queried in...
Active learning is a machine learning technique in which a learning algorithm is able to interactive...
Traditional active learning methods request experts to provide ground truths to the queried instance...
Obtaining labels can be expensive or time-consuming, but unlabeled data is often abundant and easier...
Despite the availability and ease of collecting a large amount of free, unlabeled data, the expensiv...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
This dissertation develops and analyzes active learning algorithms for binary classification problem...
In this work we proposed a novel transductive method to solve the problem of learning from partially...
Data labeling is an expensive and time-consuming task. Choosing which labels to use is increasingly ...
In this work we discuss the problem of active learning. We present an approach that is based on A-op...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
Traditional supervised machine learning algorithms are expected to have access to a large corpus of ...
Recent decades have witnessed great success of machine learning, especially for tasks where large an...
AbstractWe state and analyze the first active learning algorithm that finds an ϵ-optimal hypothesis ...
Traditional active learning methods require the labeler to provide a class label for each queried in...
Active learning is a machine learning technique in which a learning algorithm is able to interactive...
Traditional active learning methods request experts to provide ground truths to the queried instance...
Obtaining labels can be expensive or time-consuming, but unlabeled data is often abundant and easier...
Despite the availability and ease of collecting a large amount of free, unlabeled data, the expensiv...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
This dissertation develops and analyzes active learning algorithms for binary classification problem...
In this work we proposed a novel transductive method to solve the problem of learning from partially...
Data labeling is an expensive and time-consuming task. Choosing which labels to use is increasingly ...
In this work we discuss the problem of active learning. We present an approach that is based on A-op...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...