预算约束下参与式感知的激励机制

Zheng Song, E. Ngai, Jian Ma, Xiangyang Gong, Yazhi Liu, Wendong Wang
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引用次数: 11

摘要

激励策略在参与式感知中是重要的,特别是在预算有限的情况下,决定应该收集多少样本和在哪里收集样本。当前基于拍卖的激励策略以最低的价格要求购买传感数据,以最大化样品数量。然而,这种方法可能导致数据插值后的传感结果不准确,特别是对于聚集在通常聚集低价格传感数据的某些次区域的参与者。本文引入加权熵作为定量度量来评价样本的分布,发现数据样本的分布是影响传感结果准确性的另一个重要因素。我们进一步提出了一种基于贪婪的激励策略,该策略同时考虑了数据收集中样本的数量和分布。用真实数据集进行的模拟证实了样本分布对数据准确性的影响,并证明了我们提出的激励策略的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incentive mechanism for participatory sensing under budget constraints
Incentive strategy is important in participatory sensing, especially when the budget is limited, to decide how much and where the samples should be collected. Current auction-based incentive strategies purchase sensing data with lowest price requirements to maximize the amount of samples. However, such methods may lead to inaccurate sensing result after data interpolation, particularly for participants that are massing in certain subregions where the low-price sensing data are usually aggregated. In this paper, we introduce weighted entropy as a quantitative metric to evaluate the distribution of samples and find that the distribution of data samples is another important factor to the accuracy of sensing result. We further propose a greedy-based incentive strategy which considers both the amount and distribution of samples in data collection. Simulations with real datasets confirmed the impact of samples distribution to data accuracy and demonstrated the efficacy of our proposed incentive strategy.
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