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Computationally lightweight classifiers with frequentist bounds on predictions

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While both classical and neural network classifiers can achieve high accuracy, they fall short on offering uncertainty bounds on their predictions, making them unfit for safety-critical applications. Existing kernel-based classifiers that provide such bounds scale with $\mathcal O (n^{\sim3})$ in time, making them computationally intractable for large datasets. To address this, we propose a novel, computationally efficient classification algorithm based on the Nadaraya-Watson estimator, for whose estimates we derive frequentist uncertainty intervals. We evaluate our classifier on synthetically generated data and on electrocardiographic heartbeat signals from the MIT-BIH Arrhythmia database. We show that the method achieves competitive accuracy $>$\SI{96}{\percent} at $\mathcal O(n)$ and $\mathcal O(\log n)$ operations, while providing actionable uncertainty bounds. These bounds can, e.g., aid in flagging low-confidence predictions, making them suitable for real-time settings with resource constraints, such as diagnostic monitoring or implantable devices.

Shreeram Murali, Cristian R. Rojas, Dominik Baumann• 2026

Related benchmarks

TaskDatasetResultRank
ClassificationECG
Accuracy98
30
Heartbeat ClassificationECG 10 000
Accuracy96.4
4
Heartbeat ClassificationECG (1 000)
Accuracy91
4
Heartbeat ClassificationECG 60 000
Accuracy97.6
3
Heartbeat ClassificationECG
Accuracy97.8
3
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