论文标题
与Deepnns合作的自我组织地图
Collaborative Self Organizing Map with DeepNNs for Fake Task Prevention in Mobile Crowdsensing
论文作者
论文摘要
移动人货币(MCS)是一种感应范式,它改变了各种服务提供商收集,处理和分析数据的方式。 MCS提供了新颖的过程,其中通过用户的移动设备感知和共享数据,以支持各种尖端技术的应用程序和服务。但是,各种威胁,例如数据中毒,堵塞任务攻击和虚假的传感任务会对MCS系统的性能,尤其是其传感和计算能力产生不利影响。由于虚假的传感任务提交旨在成功完成合法任务和移动设备资源,因此它们也消耗了MCS平台资源。在这项工作中,以无监督的方式训练的人造神经网络自我组织功能图(SOFM)可用于将合法数据群群群群群群群群群群体群群体中,因此可以通过不平衡的数据更有效地检测到假任务,而新数据集中的合法/假任务比率较低。在群集的合法任务与原始数据集分开后,其余数据集用于训练深神经网络(DEEPNN)以达到最终的性能目标。群集的合法任务附加到DeepNN的积极预测输出中,以提高所提出的技术的性能,我们称之为预测技术,我们称之为预测技术。结果证明,通过所选功能集,可以区分从DEEPNN获得的合法和虚假任务的初始平均准确性可以提高到从提出的机器学习技术中获得的0.9812的平均精度。
Mobile Crowdsensing (MCS) is a sensing paradigm that has transformed the way that various service providers collect, process, and analyze data. MCS offers novel processes where data is sensed and shared through mobile devices of the users to support various applications and services for cutting-edge technologies. However, various threats, such as data poisoning, clogging task attacks and fake sensing tasks adversely affect the performance of MCS systems, especially their sensing, and computational capacities. Since fake sensing task submissions aim at the successful completion of the legitimate tasks and mobile device resources, they also drain MCS platform resources. In this work, Self Organizing Feature Map (SOFM), an artificial neural network that is trained in an unsupervised manner, is utilized to pre-cluster the legitimate data in the dataset, thus fake tasks can be detected more effectively through less imbalanced data where legitimate/fake tasks ratio is lower in the new dataset. After pre-clustered legitimate tasks are separated from the original dataset, the remaining dataset is used to train a Deep Neural Network (DeepNN) to reach the ultimate performance goal. Pre-clustered legitimate tasks are appended to the positive prediction outputs of DeepNN to boost the performance of the proposed technique, which we refer to as pre-clustered DeepNN (PrecDeepNN). The results prove that the initial average accuracy to discriminate the legitimate and fake tasks obtained from DeepNN with the selected set of features can be improved up to an average accuracy of 0.9812 obtained from the proposed machine learning technique.