Challenges of Reliable, Realistic and Comparable Active Learning Evaluation
Publication date
2017-09-13
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Abstract
Active learning has the potential to save costs by intelligent use of resources in form of some expert’s knowledge. Nevertheless, these methods are still not established in real-world applications as they can not be evaluated properly in the specific scenario because evaluation data is missing. In this article, we provide a summary of different evaluation methodologies by discussing them in terms of being reproducible, comparable, and realistic. A pilot study which compares the results of different exhaustive evaluations suggests a lack in repetitions in many articles. Furthermore, we aim to start a discussion on a gold standard evaluation setup for active learning that ensures comparability without reimplementing algorithms.
Keywords
Evaluation, Active Learning, Classification, Semi-supervised Learning, Data Mining
Citation
Kottke, D, Calma, A, Huseljic, D, Krempl, G M & Sick, B 2017, Challenges of Reliable, Realistic and Comparable Active Learning Evaluation. in Proceedings of the Workshop and Tutorial on Interactive Adaptive Learning. pp. 2-14.