动态加权多数方法检测恶意人群工作者

IF 1.7 Q2 Engineering
Meisam Nazariani, A. Barforoush
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引用次数: 3

摘要

众包是一种范例,它利用人类的智慧来解决计算机无法解决的问题。然而,将人类智能引入计算也给质量控制带来了新的挑战。这些挑战源于群体工作者的恶意行为。恶意员工是有隐藏动机的员工,他们要么只是破坏任务,要么提供任意反应以获得一些金钱补偿。最近,许多研究都试图检测和减少恶意工作人员的影响。这些机制各不相同,从使用基本事实到由专家进行同行评议。虽然使用这种机制可以提高产出的总体质量,但它也增加了金钱和/或时间方面的间接成本,这种成本往往是惊人的,与众包的理念相矛盾。本文提出了一种基于新的恶意度量的动态加权多数方法来检测恶意工作者。实验结果表明了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Weighted Majority Approach for Detecting Malicious Crowd Workers
Crowdsourcing is a paradigm that utilizes human intelligence to solve problems that computers cannot yet solve. However, the introduction of human intelligence into computations has also resulted in new challenges in quality control. These challenges originate from the malicious behaviors of crowd workers. Malicious workers are workers with hidden motives, who either simply sabotage a task or provide arbitrary responses to attain some monetary compensation. Recently, many studies have tried to detect and reduce the impact of malicious workers. The mechanisms vary from using ground truth to peer review by experts. Although the use of such mechanisms may increase the overall quality of outputs, it also imposes overhead costs in terms of money and/or time, with such costs being often remarkable and contradictory to the philosophy of crowdsourcing. In this paper, a novel dynamic weighted majority method is introduced to detect malicious workers based on a new malicious metric. Effectiveness of the proposed methodology is then showed by presenting the experimental results.
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来源期刊
自引率
0.00%
发文量
27
期刊介绍: The Canadian Journal of Electrical and Computer Engineering (ISSN-0840-8688), issued quarterly, has been publishing high-quality refereed scientific papers in all areas of electrical and computer engineering since 1976
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