ORSA: Outlier Robust Stacked Aggregation for Best- and Worst-Case Approximations of Ensemble Systems\
Peter Domanski, Dirk Pfl\"uger, Jochen Rivoir, Rapha\"el Latty

TL;DR
This paper introduces ORSA, a neural network-based method for robustly approximating ensemble systems' best- and worst-case behaviors, effectively handling outliers in diverse data sets.
Contribution
The paper proposes a novel outlier-robust stacking approach using neural networks and LOF-based weighting for ensemble approximation in complex, heterogeneous data environments.
Findings
Effective outlier mitigation in ensemble approximations
Robust best- and worst-case predictions achieved
Applicable to diverse, device-specific data sets
Abstract
In recent years, the usage of ensemble learning in applications has grown significantly due to increasing computational power allowing the training of large ensembles in reasonable time frames. Many applications, e.g., malware detection, face recognition, or financial decision-making, use a finite set of learning algorithms and do aggregate them in a way that a better predictive performance is obtained than any other of the individual learning algorithms. In the field of Post-Silicon Validation for semiconductor devices (PSV), data sets are typically provided that consist of various devices like, e.g., chips of different manufacturing lines. In PSV, the task is to approximate the underlying function of the data with multiple learning algorithms, each trained on a device-specific subset, instead of improving the performance of arbitrary classifiers on the entire data set. Furthermore,…
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