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Budget-constraint mechanism for incremental multi-labeling crowdsensing

机译:增量多标签众粘的预算约束机制

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摘要

Machine learning techniques require an enormous amount of high-quality data labeling for more naturally simulating human comprehension. Recently, mobile crowdsensing, as a new paradigm, makes it possible that a large number of instances can be often quickly labeled at low cost. Existing works only focus on the single labeling for supervised learning problems of traditional machine learning, where one instance associates with only label. However, in many real world applications, an instance may have more than one label. To the end, in this paper, we explore an incremental multi-labeling issue by incentivizing crowd users to label instances under the budget constraint, where each instance is composed of multiple labels. Considering both uncertainty and diversity of the number of each instance's labels, this paper proposes two mechanisms for incremental multi-labeling crowdsensing by introducing both uncertainty and diversity. Through extensive simulations, we validate their theoretical properties and evaluate the performance.
机译:机器学习技术需要大量的高质量数据标签,以便更自然地模拟人类理解。最近,作为一种新的范式,移动人群使得可以在低成本中常常可以快速标记大量实例。现有的作品仅关注传统机器学习的监督学习问题的单一标签,其中一个实例只与标签相关联。但是,在许多真实世界应用中,一个实例可能有多个标签。到目前为止,在本文中,我们通过激励人群用户在预算约束下的标签实例中探索增量多标签问题,其中每个实例由多个标签组成。考虑到每个案例标签的数量的不确定性和多样性,本文提出了通过引入不确定性和多样性来增量多标记众粘性机制。通过广泛的模拟,我们验证了他们的理论属性并评估了性能。

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