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Similarity Search for Efficient Active Learning and Search of Rare Concepts

Authors :
Coleman, Cody
Chou, Edward
Katz-Samuels, Julian
Culatana, Sean
Bailis, Peter
Berg, Alexander C.
Nowak, Robert
Sumbaly, Roshan
Zaharia, Matei
Yalniz, I. Zeki
Publication Year :
2020

Abstract

Many active learning and search approaches are intractable for large-scale industrial settings with billions of unlabeled examples. Existing approaches search globally for the optimal examples to label, scaling linearly or even quadratically with the unlabeled data. In this paper, we improve the computational efficiency of active learning and search methods by restricting the candidate pool for labeling to the nearest neighbors of the currently labeled set instead of scanning over all of the unlabeled data. We evaluate several selection strategies in this setting on three large-scale computer vision datasets: ImageNet, OpenImages, and a de-identified and aggregated dataset of 10 billion images provided by a large internet company. Our approach achieved similar mean average precision and recall as the traditional global approach while reducing the computational cost of selection by up to three orders of magnitude, thus enabling web-scale active learning.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2007.00077
Document Type :
Working Paper