In business applications such as direct marketing, decision-makers are required to choose the action which best maximizes a utility function. Cost-sensitive learning methods can help them achieve this goal. In this paper, we introduce Pessimistic Active Learning (PAL). PAL employs a novel pessimistic measure, which relies on confidence intervals and is used to balance the exploration/exploitation trade-off. In order to acquire an initial sample of labeled data, PAL applies orthogonal arrays of fractional factorial design. PAL was tested on ten datasets using a decision tree inducer. A comparison of these results to those of other methods indicates PAL’s superiority. 1
This paper addresses focused information acquisition for predictive data mining. As businesses striv...
One key question is whether people rely on frugal heuristics or full-information strategies when mak...
Classification models are a fundamental component of physical-asset management technologies such as ...
Abstract: Active learning is the process in which unlabeled in-stances are dynamically selected for ...
Active learning is the process in which unlabeled instances are dynamically selected for expert labe...
Decision makers rely on observations to make better decisions. Hence mastering the interplay between...
: Learning methods vary in the optimism or pessimism with which they regard the informativeness of l...
Active Learning is the problem of interactively constructing the training set used in classifica-tio...
It can be expensive to acquire the data required for businesses to employ data-driven predictive mod...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
International audience—Classification trees have been extensively studied for decades. In the online...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
Existing approaches to active learning are generally optimistic about their certainty with respect t...
International audienceIn the context of Active Learning for classification, the classification error...
This paper addresses focused information acquisition for predictive data mining. As businesses striv...
One key question is whether people rely on frugal heuristics or full-information strategies when mak...
Classification models are a fundamental component of physical-asset management technologies such as ...
Abstract: Active learning is the process in which unlabeled in-stances are dynamically selected for ...
Active learning is the process in which unlabeled instances are dynamically selected for expert labe...
Decision makers rely on observations to make better decisions. Hence mastering the interplay between...
: Learning methods vary in the optimism or pessimism with which they regard the informativeness of l...
Active Learning is the problem of interactively constructing the training set used in classifica-tio...
It can be expensive to acquire the data required for businesses to employ data-driven predictive mod...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
International audience—Classification trees have been extensively studied for decades. In the online...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
Existing approaches to active learning are generally optimistic about their certainty with respect t...
International audienceIn the context of Active Learning for classification, the classification error...
This paper addresses focused information acquisition for predictive data mining. As businesses striv...
One key question is whether people rely on frugal heuristics or full-information strategies when mak...
Classification models are a fundamental component of physical-asset management technologies such as ...