Margin-based sampling in high dimensions: When being active is less efficient than staying passive

December 01, 2022 ยท Declared Dead ยท ๐Ÿ› International Conference on Machine Learning

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Authors Alexandru Tifrea, Jacob Clarysse, Fanny Yang arXiv ID 2212.00772 Category cs.LG: Machine Learning Citations 5 Venue International Conference on Machine Learning Last Checked 4 months ago
Abstract
It is widely believed that given the same labeling budget, active learning (AL) algorithms like margin-based active learning achieve better predictive performance than passive learning (PL), albeit at a higher computational cost. Recent empirical evidence suggests that this added cost might be in vain, as margin-based AL can sometimes perform even worse than PL. While existing works offer different explanations in the low-dimensional regime, this paper shows that the underlying mechanism is entirely different in high dimensions: we prove for logistic regression that PL outperforms margin-based AL even for noiseless data and when using the Bayes optimal decision boundary for sampling. Insights from our proof indicate that this high-dimensional phenomenon is exacerbated when the separation between the classes is small. We corroborate this intuition with experiments on 20 high-dimensional datasets spanning a diverse range of applications, from finance and histology to chemistry and computer vision.
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