A far-reaching expansion of advanced information technology enables ease and seamless communications over online social networks, which have been a de facto premium correspondents
in the current cyber world. The ever-growing social network data has gained attention in
recent years and can be handy for industrial revolution 4.0. With the integration of social
networks with the Internet of Things being noticed in different industries to enhance human involvement and increase their productivity, security in such networks is increasingly
alarming. Vulnerabilities can be characterized in the form of privacy invasion, leading to
hazardous contents, which can be detrimental to social media actors and in turn impact the
processes of the overall Social Network-Integrated Industrial Internet of Things (SN-IIoT)
ecosystem. Despite this prevalence, the current platforms do not have any significant level
of functionality to capture, process, and reveal unhealthy content among the social media
actors. To address those challenges by detecting hazardous contents and create a stable
social internet environment within IIoT, a statistical learning-enabled trustworthy analytic
tool for human behaviors has been developed in this paper. More specifically, this paper
proposes a machine learning (ML)-enabled scheme SPY-BOT, which incorporates a hybrid
data extraction algorithm to perform post-filtering that arbitrates the users’ behavior polarity. The scheme creates class labels based on the featured keywords from the decision user
and classifies suspicious contacts through the aid of ML. The results suggest the potential
of the proposed approach to classify the users’ behavior in SN-IIoT.
APA:Rahman, M.A.; Zaman, N.; Asyhari, A.T.; Sadat, S.M.N.; Pillai, P.; Arshah, R.A.. (Volume-121, Issue- -(Year-2021)). Machine learning-enabled post filtering for Social Network-Integrated Industrial Internet of Things. Retrieved from https://doi.org/10.1016/j.adhoc.2021.102588
Chicago:Rahman, M.A.; Zaman, N.; Asyhari, A.T.; Sadat, S.M.N.; Pillai, P.; Arshah, R.A.. "Machine learning-enabled post filtering for Social Network-Integrated Industrial Internet of Things" Example, Volume-121-issue--Year-2021-1570-8705. https://doi.org/10.1016/j.adhoc.2021.102588.