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Crowdsourced top-k queries by pairwise preference judgments with confidence and budget control

机译:通过配对偏好判断众包疑问,充满信心和预算控制

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摘要

Crowdsourced query processing is an emerging technique that tackles computationally challenging problems by human intelligence. The basic idea is to decompose a computationally challenging problem into a set of human-friendly microtasks (e.g., pairwise comparisons) that are distributed to and answered by the crowd. The solution of the problem is then computed (e.g., by aggregation) based on the crowdsourced answers to themicrotasks. In thiswork, we attempt to revisit the crowdsourced processing of the top-k queries, aiming at (1) securing the quality of crowdsourced comparisons by a certain confidence level and (2) minimizing the total monetary cost. To secure the quality of each paired comparison, we employ statistical tools to estimate the confidence interval from the collected judgments of the crowd, which is then used to guide the aggregated judgment. We propose novel frameworks, SPR and SPR+, to address the crowdsourced top-k queries. Both SPR and SPR+ are budget-aware, confidence-aware, and effective in producing high-quality top-k results. SPR requires as input a budget for each paired comparison, whereas SPR+ requires only a total budget for the whole top-k task. Extensive experiments, conducted on four real datasets, demonstrate that our proposed methods outperform the other existing top-k processing techniques by a visible difference.
机译:众群查询处理是一种新兴技术,通过人类智能解决对计算挑战性问题。基本思想是将计算上的挑战性问题分解为一组人友好的微量娱乐器(例如,成对比较),该问题分布到人群并由人群回答。然后基于众群答案对Themicrotasks的众包来计算问题的解决方案(例如,通过聚合。在这方面,我们试图重新审视顶级查询的众包处理,旨在通过一定的置信水平确保众包比较的质量和(2)最大限度地减少总货币成本。为了确保每个配对比较的质量,我们采用统计工具来估计人群的收集判断中的置信区间,然后用于指导汇总判断。我们提出了小说框架,SPR和SPR +,以解决众群的Top-K查询。 SPR和SPR +都是预算感知,信心感知,有效地生产高质量的TOP-K结果。 SCR需要输入每个配对比较的预算,而SPR +仅需要整个TOP-K任务的总预算。在四个真实数据集上进行的广泛实验表明我们所提出的方法通过可见差异越优于其他现有的Top-K处理技术。

著录项

  • 来源
    《The VLDB journal》 |2021年第2期|189-213|共25页
  • 作者单位

    Univ Macau Dept Comp & Informat Sci State Key Lab Internet Things Smart City Taipa Macao Peoples R China;

    Incept Inst Artificial Intelligence Abu Dhabi U Arab Emirates;

    Cainiao Smart Logist Network Ltd Hangzhou Peoples R China;

    Univ Macau Dept Comp & Informat Sci State Key Lab Internet Things Smart City Taipa Macao Peoples R China;

    Univ Macau Dept Comp & Informat Sci State Key Lab Internet Things Smart City Taipa Macao Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Crowdsourcing; Top-kquery; Preference judgments; Confidence; Budget control;

    机译:众包;顶牛;偏好判断;信心;预算控制;
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