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Crowdsourced Classification with XOR Queries: An Algorithm with Optimal Sample Complexity

机译:具有XOR查询的众包分类:具有最佳样本复杂度的算法

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We consider the crowdsourced classification of m binary labels with XOR queries that ask whether the number of objects having a given attribute in the chosen subset of size d is even or odd. The subset size d, which we call query degree, can be varying over queries. Since a worker needs to make more efforts to answer a query of a higher degree, we consider a noise model where the accuracy of worker’s answer changes depending both on the worker reliability and query degree d. For this general model, we characterize the information-theoretic limit on the optimal number of queries to reliably recover m labels in terms of a given combination of degree-d queries and noise parameters. Further, we propose an efficient inference algorithm that achieves this limit even when the noise parameters are unknown.1
机译:我们考虑使用XOR查询对m个二元标签进行众包分类,这些查询询问在所选大小为d的子集中具有给定属性的对象数是偶数还是奇数。子集大小d(我们称为查询度)可以随查询而变化。由于工作人员需要付出更多的努力来回答更高级别的查询,因此我们考虑一种噪声模型,其中,工作人员的回答准确性取决于工作人员的可靠性和查询程度d。对于此一般模型,我们根据度数查询和噪声参数的给定组合,描述了关于最佳查询数的信息理论限制,以可靠地恢复m个标签。此外,我们提出了一种有效的推理算法,即使在噪声参数未知的情况下也可以达到此极限。 1

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