Extremely Fast Decision Tree
About
We introduce a novel incremental decision tree learning algorithm, Hoeffding Anytime Tree, that is statistically more efficient than the current state-of-the-art, Hoeffding Tree. We demonstrate that an implementation of Hoeffding Anytime Tree---"Extremely Fast Decision Tree", a minor modification to the MOA implementation of Hoeffding Tree---obtains significantly superior prequential accuracy on most of the largest classification datasets from the UCI repository. Hoeffding Anytime Tree produces the asymptotic batch tree in the limit, is naturally resilient to concept drift, and can be used as a higher accuracy replacement for Hoeffding Tree in most scenarios, at a small additional computational cost.
Chaitanya Manapragada, Geoff Webb, Mahsa Salehi• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Online Class-Incremental Learning | Wine | Final Mean Accuracy97 | 26 | |
| Online Class-Incremental Learning | Iris | Final Mean Accuracy93.3 | 26 | |
| Online Class-Incremental Learning | Covertype | Final Mean Accuracy27.7 | 26 | |
| Online Class-Incremental Learning | Synth-10 | Final Mean Accuracy21.9 | 26 | |
| Online Class-Incremental Learning | Synth-50 | Final Mean Accuracy4 | 26 | |
| Online Class-Incremental Learning | Split MNIST | Final Mean Accuracy18.2 | 26 | |
| Online Class-Incremental Learning | pendigits | Final Mean Accuracy27.2 | 26 | |
| Online Class-Incremental Learning | Shuttle | Final Mean Accuracy14.3 | 26 | |
| Online Class-Incremental Learning | Letter | Final Mean Accuracy16.8 | 26 | |
| Online Class-Incremental Learning | HAR | Final Mean Accuracy20.2 | 26 |
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