Cyber warfare by social network media

2016 ◽  
pp. 146-166
2020 ◽  
Vol 2020 ◽  
pp. 1-11
Author(s):  
Zhe Zheng ◽  
Chunliang Zhou ◽  
Xiangpei Meng ◽  
Le Wang ◽  
Ying Xu

In order to solve the information transfer of social network media, a new information transfer prediction method is presented by a triangle ring attractor. At first, the description method of social media information is given in this model, and the evaluation indexes such as information recall rate, matching degree, and recall rate are emphatically expounded. At the same time, the characteristics of media information are analyzed with a triangular ring attractor, and an information transfer prediction model is established. Finally, through the simulation experiment, the key factors influencing the method are deeply analyzed. Experimental results show that compared with other algorithms, this method has good adaptability in the degree of information attenuation and information checking rate.


2019 ◽  
Vol 9 (S1) ◽  
pp. 64-67
Author(s):  
R. Sebastiyan ◽  
V. Rameshbabu

Since the tremendous growth of the internet, the social networking media have become an essential part in the everyday life of academic people. This study tries to find and fill the gap between the teaching and learning in the academic culture of engineering institution by selecting the best social network media to promote and develop online quality content of educational resources. This kind of study pulse the mentality of academic student in private engineering institution through structural questionnaire survey method have been taken and made the best situation solution. The study recommends that academic students should record scholarly accomplishment of gigantic against successive accessing social network media.


2020 ◽  
Vol 72 (4) ◽  
pp. 133-139
Author(s):  
S.T. Kaldybek ◽  
◽  
N.U. Shedenova ◽  
Zh.K Karimova ◽  
◽  
...  

Along with the rapid growth of modern social media, it can be recognized that these platforms influence social standards. Showing women on social media can indicate how others treat them in real life. This article examines the emergence of sociocultural ideas about feminіnіtу images in the context of social network media. The research is based on the concept of social drama by I. Goffman, adapted to the conditions of the communicative environment in the virtual space. The relevance of the study is due to the ever-increasing role of social media in the life of modern women.


Author(s):  
M. A. Jayaram ◽  
Gayitri Jayatheertha ◽  
Ritu Rajpurohit

Aims: We have set forth three main objectives in the work presented in this paper, they are namely, to study how social networking media usage is surging over the time for three social media networks viz., Facebook, Twitter and LinkedIn, ii.to develop best fitting time series predictive models for predicting future usage of three network media  and, iii. to make a comparative analysis to herald the ups and downs noticed in the usage across three network media considered. Study Design: Application of time series techniques for the analysis of social network user’s data. The main research question addressed by this work is to see how time series models augurs for time dependent data such as the one chosen in this research. Place and Duration of Study: Research Center, Department of Master of Computer Applications, Siddaganga Institute of Technology, Tumakuru, Karnataka, India, between January 2020- April 2020. Methodology: The work delved on collection three social network users (Facebook, LinkedIn, and Twitter) data for a span of nine years i.e., for the tenure 2011-2019. One dimensional, two dimensional and three dimensional visual analytics is made prior to time series analysis. Time series predictive analytics involved development of best fits for prediction. To select the best fits among linear, polynomial, exponential, power function and logarithmic models, mean absolute error and root mean square error metrics were used. Results: Linear, polynomial function trend lines proved to be the best for Facebook, LinkedIn and Twitter respectively with low values of MAE and RMSE and high values of regression coefficients as compared with other kinds of models. Apart from the error metrics, the Theil’s U-statistic values of 0.928, 1.008 and 1.21 for Facebook, Twitter and LinkedIn also heralded the fact that these functions are superior models when compared with other naïve models. It is also projected that by 2025, Facebook will see 10,000 billion, followed by LinkedIn at 1500 billion while Twitter would see 750 billion people if same kind of surge trend prevails in user numbers across three networks considered in this research. Conclusion: This paper presented a unique work which is supposedly deemed to be the first of its kind to the best of the knowledge of authors. The models come with a limitation that, they can provide accurate projection if the same trend prevails in the pattern of upheavals in usage.


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