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Special Sessions

Special sessions are very small and specialized events to be held during the conference as a set of oral and poster presentations that are highly specialized in some particular theme or consisting of the works of some particular international project. The goal of special sessions (minimum 4 papers; maximum 9) is to provide a focused discussion on innovative topics. All accepted papers will be published in a special section of the conference proceedings book, under an ISBN reference, and on digital support. All papers presented at the conference venue will be available at the SCITEPRESS Digital Library. SCITEPRESS is a member of CrossRef and every paper is given a DOI (Digital Object Identifier). The proceedings are submitted for indexation by The DBLP Computer Science Bibliography, Conference Proceedings Citation Index, The Institution of Engineering and Technology, Engineering Index (EI) and SCOPUS.


SPECIAL SESSIONS LIST

SPBDIoT 2018Special Session on Recent Advances on Security, Privacy, Big Data and Internet of Things
Chair(s): Roger Hallman, Victor Chang, Mamadou Diallo, Bahar Farahani and Farshad Firouzi

Special Session on Recent Advances on Security, Privacy, Big Data and Internet of Things - SPBDIoT 2018

Paper Submission: January 30, 2018 (expired)
Authors Notification: February 2, 2018 (expired)
Camera Ready and Registration: February 6, 2018 (expired)


Co-chairs

Roger Hallman
Thayer School of Engineering, Dartmouth College & Naval Information Warfare Center (NIWC) Pacific
United States
e-mail
 
Victor Chang
Teesside University
United Kingdom
e-mail
 
Mamadou Diallo
Naval Information Warfare Center (NIWC) Pacific
United States
e-mail
 
Bahar Farahani
Shahid Beheshti University
Iran, Islamic Republic of
e-mail
 
Farshad Firouzi
IMEC/Katholieke Univ. Leuven
Germany
e-mail
 
Scope

In recent years, the Internet of Things (IoT) has grown at an exponential pace solving complex problems in different disciplinary fields such as healthcare, finance, business, transportation, etc. However, these innovations are not without their drawbacks. Many challenges related to Security, Privacy, Connectivity, Big Data Analytics, Intelligent Analysis, Compatibility, Standards, etc. remain.
Security is a crucial issue on the Internet, and it is probably the most significant challenge for the IoT. The Internet of Things (IoT) opens up new vulnerabilities for both security and privacy. Smart buildings and smart cities, for example, will collect and process data for millions of individuals. Industrial systems, which were never intended to be linked via common protocols, are recognized as suddenly being open to security threats that can limit service availability and possibly cause considerable damage. Autonomous systems allowed to operate with minimal oversight are ripe targets for cyber-attacks. Data stored and processed in confidence in the cloud may be subject to exfiltration, leading to public embarrassment or the exposure of proprietary information.  Ransomware has emerged in the public consciousness after multiple high-profile attacks, and many experts forecast that it will become a major threat to IoT and critical infrastructure in the very near future.

Of course, Big Data is the crucial mean for plagiarizing valuable actionable information quickly and effectively from the IoT tsunami. Machine learning techniques are usually used to effectively synthesize (big) data and extracts meaning from (big) data traversing from things/devices to the edge/fog an to the cloud using different techniques such as regression analysis, classification, clustering, decision trees and random forests, support vector machines, reinforcement learning, and deep learning.

In order to succeed in IoT, multidisciplinary research is needed, in addition to collaboration between academia and industry. This special session will bring researchers and industrial partners together to examine and report state-of-the-art research on recent advances in the IoT era such as Big Data analytics, Machine Learning, and security.




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