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The key idea behind active learning is that a machine learning
algorithm can perform better with less training if it is allowed to
choose the data from which it learns. An active learner may pose
"queries," usually in the form of unlabeled data instances to be
labeled by an "oracle" (e.g., a human annotator) that already
understands the nature of the problem. This sort of approach is
well-motivated in many modern machine learning and data mining
applications, where unlabeled data may be abundant or easy to come
by, but training labels are difficult, time-consuming, or expensive
to obtain. This book is a general introduction to active learning.
It outlines several scenarios in which queries might be formulated,
and details many query selection algorithms which have been
organized into four broad categories, or "query selection
frameworks." We also touch on some of the theoretical foundations
of active learning, and conclude with an overview of the strengths
and weaknesses of these approaches in practice, including a summary
of ongoing work to address these open challenges and opportunities.
Table of Contents: Automating Inquiry / Uncertainty Sampling /
Searching Through the Hypothesis Space / Minimizing Expected Error
and Variance / Exploiting Structure in Data / Theory / Practical
Considerations
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