Active learning strategies are often deployed in technology-assisted review tasks, such as e-discovery and sensitivity review, to learn a classifier that can assist the reviewers with their task. In particular, an active learning strategy selects the documents that are expected to be the most useful for learning an effective classifier, so that these documents can be reviewed before the less useful ones. However, when reviewing for sensitivity, the order in which the documents are reviewed can impact on the reviewers' ability to perform the review. Therefore, when deploying active learning in technology-assisted sensitivity review, we want to know when a sufficiently effective classifier has been learned, such that the active learning can s...
Efficient training of machine learning algorithms requires a reliable labeled set from the applicati...
Systematic Reviews are “top of the bill” in research. The number of systematic reviews published by ...
The Automated Systematic Review (ASReview) project implements learning algorithms that interactively...
Government documents must be reviewed to identify and protect any sensitive information, such as per...
Technology-Assisted Reviews (TAR) aim to expedite document reviewing (e.g., medical articles or lega...
Active learning for systematic review screening promises to reduce the human effort required to iden...
Background Conducting a systematic review requires great screening effort. Various tools have been p...
Automated app review analysis is an important avenue for extracting a variety of requirements-relate...
Technology-Assisted Review (TAR) refers to the human-in-the-loop machine learning process whose goal...
Systematic reviews are scientific investigations that use strategies to include a comprehensive sear...
In several subfields of data science, the term “review” refers to the activities, carried out by one...
In this paper, we address the problem of knowing when to stop the process of active learning. We pro...
Efficient training of machine learning algorithms requires a reliable labeled set from the applicati...
Systematic Reviews are “top of the bill” in research. The number of systematic reviews published by ...
The Automated Systematic Review (ASReview) project implements learning algorithms that interactively...
Government documents must be reviewed to identify and protect any sensitive information, such as per...
Technology-Assisted Reviews (TAR) aim to expedite document reviewing (e.g., medical articles or lega...
Active learning for systematic review screening promises to reduce the human effort required to iden...
Background Conducting a systematic review requires great screening effort. Various tools have been p...
Automated app review analysis is an important avenue for extracting a variety of requirements-relate...
Technology-Assisted Review (TAR) refers to the human-in-the-loop machine learning process whose goal...
Systematic reviews are scientific investigations that use strategies to include a comprehensive sear...
In several subfields of data science, the term “review” refers to the activities, carried out by one...
In this paper, we address the problem of knowing when to stop the process of active learning. We pro...
Efficient training of machine learning algorithms requires a reliable labeled set from the applicati...
Systematic Reviews are “top of the bill” in research. The number of systematic reviews published by ...
The Automated Systematic Review (ASReview) project implements learning algorithms that interactively...