Collaborative Self Organizing Map with DeepNNs for Fake Task Prevention
in Mobile Crowdsensing
- URL: http://arxiv.org/abs/2203.12434v1
- Date: Thu, 17 Feb 2022 04:56:28 GMT
- Title: Collaborative Self Organizing Map with DeepNNs for Fake Task Prevention
in Mobile Crowdsensing
- Authors: Murat Simsek, Burak Kantarci, Azzedine Boukerche
- Abstract summary: Mobile Crowdsensing (MCS) is a sensing paradigm that has transformed the way that various service providers collect, process, and analyze data.
Various threats, such as data poisoning, clogging task attacks and fake sensing tasks adversely affect the performance of MCS systems.
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.
- Score: 26.6224977032229
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: 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.
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