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Re-Benchmarking Pool-Based Active Learning for Binary Classification

Research re-evaluates active learning benchmarks, revealing misconfigurations and addressing model compatibility to confirm the effectiveness of uncertainty sampling strategies.

Year
2023
Venue
arXiv 2023
Authors
3
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arxiv.org/abs/2306.08954v2ARXIV-DEFAULT
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Abstract

Active learning is a paradigm that significantly enhances the performance of machine learning models when acquiring labeled data is expensive. While several benchmarks exist for evaluating active learning strategies, their findings exhibit some misalignment. This discrepancy motivates us to develop a transparent and reproducible benchmark for the community. Our efforts result in an open-sourced implementation (https://github.com/ariapoy/active-learning-benchmark) that is reliable and extensible for future research. By conducting thorough re-benchmarking experiments, we have not only rectified misconfigurations in existing benchmark but also shed light on the under-explored issue of model compatibility, which directly causes the observed discrepancy. Resolving the discrepancy reassures that the uncertainty sampling strategy of active learning remains an effective and preferred choice for most datasets. Our experience highlights the importance of dedicating research efforts towards re-benchmarking existing benchmarks to produce more credible results and gain deeper insights.

Authors

3