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arxiv 1803.07947 v1 pith:R46DVVR7 submitted 2018-03-21 cs.HC cs.LG

Crowd-Machine Collaboration for Item Screening

classification cs.HC cs.LG
keywords efficientlyitemsscreenscreeningalgorithmsclassifiercollaborationcombined
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper we describe how crowd and machine classifier can be efficiently combined to screen items that satisfy a set of predicates. We show that this is a recurring problem in many domains, present machine-human (hybrid) algorithms that screen items efficiently and estimate the gain over human-only or machine-only screening in terms of performance and cost.

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