message dissemination
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2022 ◽  
pp. 199-218
Author(s):  
Ravneet Kaur ◽  
Ramkumar Ketti Ramachandran ◽  
Robin Doss ◽  
Lei Pan

2022 ◽  
pp. 234-255
Author(s):  
Afonso Biscaia ◽  
Susana Salgado

This chapter examines the discourse of the Portuguese right-wing populist André Ventura and compares it with his close counterparts, Santiago Abascal, Marine Le Pen, and Matteo Salvini. The empirical analysis is focused on the 2021 presidential campaign and looks at Twitter and YouTube as parts of an integrated political communication strategy that are used as tools of exposure and message dissemination. The results show how André Ventura appropriates the features of right-wing populism but adapts those to the Portuguese specific context as a strategy to gain both wider media visibility and popular support.


2021 ◽  
Vol 14 (1) ◽  
pp. 12
Author(s):  
Mazen Alowish ◽  
Yoshiaki Shiraishi ◽  
Masami Mohri ◽  
Masakatu Morii

The Internet of connected vehicles (IoCV) has made people more comfortable and safer while driving vehicles. This technology has made it possible to reduce road casualties; however, increased traffic and uncertainties in environments seem to be limitations to improving the safety of environments. In this paper, driver behavior is analyzed to provide personalized assistance and to alert surrounding vehicles in case of emergencies. The processes involved in this research are as follows. (i) Initially, the vehicles in an environment are clustered to reduce the complexity in analyzing a large number of vehicles. Multi-criterion-based hierarchical correlation clustering (MCB-HCC) is performed to dynamically cluster vehicles. Vehicular motion is detected by edge-assisted road side units (E-RSUs) by using an attention-based residual neural network (AttResNet). (ii) Driver behavior is analyzed based on the physiological parameters of drivers, vehicle on-board parameters, and environmental parameters, and driver behavior is classified into different classes by implementing a refined asynchronous advantage actor critic (RA3C) algorithm for assistance generation. (iii) If the driver’s current state is found to be an emergency state, an alert message is disseminated to the surrounding vehicles in that area and to the neighboring areas based on traffic flow by using jelly fish search optimization (JSO). If a neighboring area does not have a fog node, a virtual fog node is deployed by executing a constraint-based quantum entropy function to disseminate alert messages at ultra-low latency. (iv) Personalized assistance is provided to the driver based on behavior analysis to assist the driver by using a multi-attribute utility model, thereby preventing road accidents. The proposed driver behavior analysis and personalized assistance model are experimented on with the Network Simulator 3.26 tool, and performance was evaluated in terms of prediction error, number of alerts, number of risk maneuvers, accuracy, latency, energy consumption, false alarm rate, safety score, and alert-message dissemination efficiency.


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