When are Deep Networks really better than Decision Forests at small sample sizes, and how?
Deep networks and decision forests (such as random forests and gradient boosted trees) are the leading machine learning methods for structured and tabular data, respectively. Many papers have empirically compared large numbers of classifiers on one or two different domains (e.g., on 100 different ta...
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Zusammenfassung: | Deep networks and decision forests (such as random forests and gradient
boosted trees) are the leading machine learning methods for structured and
tabular data, respectively. Many papers have empirically compared large numbers
of classifiers on one or two different domains (e.g., on 100 different tabular
data settings). However, a careful conceptual and empirical comparison of these
two strategies using the most contemporary best practices has yet to be
performed. Conceptually, we illustrate that both can be profitably viewed as
"partition and vote" schemes. Specifically, the representation space that they
both learn is a partitioning of feature space into a union of convex polytopes.
For inference, each decides on the basis of votes from the activated nodes.
This formulation allows for a unified basic understanding of the relationship
between these methods. Empirically, we compare these two strategies on hundreds
of tabular data settings, as well as several vision and auditory settings. Our
focus is on datasets with at most 10,000 samples, which represent a large
fraction of scientific and biomedical datasets. In general, we found forests to
excel at tabular and structured data (vision and audition) with small sample
sizes, whereas deep nets performed better on structured data with larger sample
sizes. This suggests that further gains in both scenarios may be realized via
further combining aspects of forests and networks. We will continue revising
this technical report in the coming months with updated results. |
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DOI: | 10.48550/arxiv.2108.13637 |