No One Representation to Rule Them All: Overlapping Features of Training
Methods
- URL: http://arxiv.org/abs/2110.12899v2
- Date: Tue, 26 Oct 2021 17:29:51 GMT
- Title: No One Representation to Rule Them All: Overlapping Features of Training
Methods
- Authors: Raphael Gontijo-Lopes, Yann Dauphin, Ekin D. Cubuk
- Abstract summary: High-performing models tend to make similar predictions regardless of training methodology.
Recent work has made very different training techniques, such as large-scale contrastive learning, yield competitively-high accuracy.
We show these models specialize in generalization of the data, leading to higher ensemble performance.
- Score: 12.58238785151714
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Despite being able to capture a range of features of the data, high accuracy
models trained with supervision tend to make similar predictions. This
seemingly implies that high-performing models share similar biases regardless
of training methodology, which would limit ensembling benefits and render
low-accuracy models as having little practical use. Against this backdrop,
recent work has made very different training techniques, such as large-scale
contrastive learning, yield competitively-high accuracy on generalization and
robustness benchmarks. This motivates us to revisit the assumption that models
necessarily learn similar functions. We conduct a large-scale empirical study
of models across hyper-parameters, architectures, frameworks, and datasets. We
find that model pairs that diverge more in training methodology display
categorically different generalization behavior, producing increasingly
uncorrelated errors. We show these models specialize in subdomains of the data,
leading to higher ensemble performance: with just 2 models (each with ImageNet
accuracy ~76.5%), we can create ensembles with 83.4% (+7% boost). Surprisingly,
we find that even significantly low-accuracy models can be used to improve
high-accuracy models. Finally, we show diverging training methodology yield
representations that capture overlapping (but not supersetting) feature sets
which, when combined, lead to increased downstream performance.
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