Predicting Classification Accuracy When Adding New Unobserved Classes
- URL: http://arxiv.org/abs/2010.15011v3
- Date: Tue, 9 Mar 2021 14:38:37 GMT
- Title: Predicting Classification Accuracy When Adding New Unobserved Classes
- Authors: Yuli Slavutsky, Yuval Benjamini
- Abstract summary: We study how a classifier's performance can be used to extrapolate its expected accuracy on a larger, unobserved set of classes.
We formulate a robust neural-network-based algorithm, "CleaneX", which learns to estimate the accuracy of such classifiers on arbitrarily large sets of classes.
- Score: 8.325327265120283
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Multiclass classifiers are often designed and evaluated only on a sample from
the classes on which they will eventually be applied. Hence, their final
accuracy remains unknown. In this work we study how a classifier's performance
over the initial class sample can be used to extrapolate its expected accuracy
on a larger, unobserved set of classes. For this, we define a measure of
separation between correct and incorrect classes that is independent of the
number of classes: the "reversed ROC" (rROC), which is obtained by replacing
the roles of classes and data-points in the common ROC. We show that the
classification accuracy is a function of the rROC in multiclass classifiers,
for which the learned representation of data from the initial class sample
remains unchanged when new classes are added. Using these results we formulate
a robust neural-network-based algorithm, "CleaneX", which learns to estimate
the accuracy of such classifiers on arbitrarily large sets of classes. Unlike
previous methods, our method uses both the observed accuracies of the
classifier and densities of classification scores, and therefore achieves
remarkably better predictions than current state-of-the-art methods on both
simulations and real datasets of object detection, face recognition, and brain
decoding.
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