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Pitfalls of Unlabeled Disagreement-Based Drift Detection in Streaming Tree Ensembles

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Detecting concept drift in high-speed data streams remains challenging, particularly when models must operate on unlabeled data and avoid false alarms caused by benign shifts. While disagreement-based uncertainty has shown promise in neural networks, its adaptation to ensembles of incremental decision trees (IDTs) remains largely unexplored. We investigate this approach by constructing batch-specific disagreement measures via label flipping in ensemble members and evaluating their effectiveness for drift detection in tabular data streams. Our experiments show that, although this method performs well in ensembles of multi-layer perceptrons (MLPs), it consistently underperforms loss-based detectors when applied to IDTs. We attribute this behavior to the intrinsic rigidity of IDTs: learning primarily through structural expansion, with limited parameter adaptation, restricts model plasticity and prevents disagreement from reliably reflecting learning potential. Recent work on restructuring IDTs using their intrinsic decomposition into non-overlapping rules offers a promising direction for improving adaptability.

Lara S\'a Neves, Afonso Louren\c{c}o, Lizy K. John, Goreti Marreiros• 2026

Related benchmarks

TaskDatasetResultRank
Concept Drift DetectionSineA gradual
FA0.00e+0
13
Concept Drift DetectionRBF abrupt
FA4
13
Concept Drift DetectionRBF2 gradual
MTD843
13
Concept Drift DetectionRBF gradual
MTD1.33e+3
13
Concept Drift DetectionHyp0 gradual
MTD1.53e+3
13
Concept Drift DetectionSEA0 gradual
MTD1.48e+3
13
Concept Drift DetectionSEA1 gradual
MTD2.43e+3
13
Concept Drift DetectionSEA2 gradual
MTD643
13
Concept Drift DetectionSine4 gradual
FA3
13
Concept Drift DetectionRBF2 abrupt
MTD365
13
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