MLCVLGDec 7, 2017

End-to-end Learning of Deterministic Decision Trees

arXiv:1712.02743v112 citations
Originality Incremental advance
AI Analysis

This work addresses the need for interpretable and efficient machine learning models that can learn features from scratch, though it is incremental in improving upon existing probabilistic methods.

The authors tackled the problem of making decision trees end-to-end trainable while preserving their efficiency, and achieved results on par with or superior to standard oblique decision tree algorithms.

Conventional decision trees have a number of favorable properties, including interpretability, a small computational footprint and the ability to learn from little training data. However, they lack a key quality that has helped fuel the deep learning revolution: that of being end-to-end trainable, and to learn from scratch those features that best allow to solve a given supervised learning problem. Recent work (Kontschieder 2015) has addressed this deficit, but at the cost of losing a main attractive trait of decision trees: the fact that each sample is routed along a small subset of tree nodes only. We here propose a model and Expectation-Maximization training scheme for decision trees that are fully probabilistic at train time, but after a deterministic annealing process become deterministic at test time. We also analyze the learned oblique split parameters on image datasets and show that Neural Networks can be trained at each split node. In summary, we present the first end-to-end learning scheme for deterministic decision trees and present results on par with or superior to published standard oblique decision tree algorithms.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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