2021
DOI: 10.48550/arxiv.2112.01576
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Scheduling to Learn In An Unsupervised Online Streaming Model

Abstract: An unsupervised online streaming model is considered where samples arrive in an online fashion over T slots. There are M classifiers, whose confusion matrices are unknown a priori. In each slot, at most one sample can be labeled by any classifier. The accuracy of a sample is a function of the set of labels obtained for it from various classifiers. The utility of a sample is a scalar multiple of its accuracy minus the response time (difference of the departure slot and the arrival slot), where the departure slo… Show more

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