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MIST: Reliable Streaming Decision Trees for Online Class-Incremental Learning via McDiarmid Bound

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Streaming decision trees are natural candidates for open-world continual learning, as they perform local updates, enjoy bounded memory, and static decision boundaries. Despite these, they still fail in online class-incremental learning due to two coupled miscalibrations: (i) their split criterion grows unreliable as the class count K expands, and (ii) the absence of knowledge transfer at split time. Both failures share a common root: the range of Information Gain intrinsically scales with log2 K. Consequently, any Hoeffding-style confidence radius derived from it must inevitably grow with the class count, making a K-independent split criterion structurally impossible, taking away the potential benefits of applying streaming decision trees to continual learning. To fix this issue, we present MIST (McDiarmid Incremental Streaming Tree), which resolves both failures through three integrated components: (i) a tight, K-independent McDiarmid confidence radius for Gini splitting that acts as a structural regulariser; (ii) a Bayesian inheritance protocol that projects parent statistics to child nodes via truncated-Gaussian moments, with variance reduction guarantees strongest precisely when splitting is most conservative; and (iii) per-leaf KLL quantile sketches that support both continuous threshold evaluation and geometry-adaptive leaf prediction from a single data structure. On standard and stress-test tabular streams, MIST is competitive with global parametric methods on near-Gaussian benchmarks and uniquely robust on non-Gaussian geometry where SOTA benchmarks collapse.

Phu-Hoa Pham, Chi-Nguyen Tran, Nguyen Lam Phu Quy, Dao Sy Duy Minh, Huynh Trung Kiet, Long Tran-Thanh• 2026

Related benchmarks

TaskDatasetResultRank
Online Class-Incremental LearningSynth-50
Final Mean Accuracy100
26
Online Class-Incremental LearningCovertype
Final Mean Accuracy69.4
26
Online Class-Incremental LearningShuttle
Final Mean Accuracy78.3
26
Online Class-Incremental LearningWine
Final Mean Accuracy97
26
Online Class-Incremental LearningIris
Final Mean Accuracy93.3
26
Online Class-Incremental Learningpendigits
Final Mean Accuracy88.9
26
Online Class-Incremental LearningSplit MNIST
Final Mean Accuracy86.3
26
Online Class-Incremental LearningLetter
Final Mean Accuracy69.2
26
Online Class-Incremental LearningHAR
Final Mean Accuracy62.5
26
Online Class-Incremental LearningSynth-10
Final Mean Accuracy99.6
26
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