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Filters: Keyword is cyberbullying  [Clear All Filters]
2022-02-24
Ali, Wan Noor Hamiza Wan, Mohd, Masnizah, Fauzi, Fariza.  2021.  Cyberbullying Predictive Model: Implementation of Machine Learning Approach. 2021 Fifth International Conference on Information Retrieval and Knowledge Management (CAMP). :65–69.
Machine learning is implemented extensively in various applications. The machine learning algorithms teach computers to do what comes naturally to humans. The objective of this study is to do comparison on the predictive models in cyberbullying detection between the basic machine learning system and the proposed system with the involvement of feature selection technique, resampling and hyperparameter optimization by using two classifiers; Support Vector Classification Linear and Decision Tree. Corpus from ASKfm used to extract word n-grams features before implemented into eight different experiments setup. Evaluation on performance metric shows that Decision Tree gives the best performance when tested using feature selection without resampling and hyperparameter optimization involvement. This shows that the proposed system is better than the basic setting in machine learning.
2020-12-14
Kavitha, R., Malathi, K., Kunjachen, L. M..  2020.  Interference of Cyber Endanger using Support Vector Machine. 2020 International Conference on Computer Communication and Informatics (ICCCI). :1–4.
The wonder of cyberbullying, implied as persistent and repeated mischief caused through the use of PC systems, mobile phones, and noteworthy propelled contraptions. for instance, Hinduja and Patching upheld that 10-forty% of outlined children masses surrendered having dealt with it each as a harmed individual or as a with the guide of the use of-stander wherein additional progressively young individuals use development to issue, undermine, embarrass, or by and large burden their mates. Advanced badgering has starting at now been said as one which reason first rate harm to society and monetary machine. Advances in development related with web record remark and the assortment of the web associations renders the area and following of such models as a credibility hard and extremely problematic. This paper portrays a web structure for robotized revelation and seeing of Cyber-tormenting cases from on-line exchanges and on line associations. The device is mainly assembled completely absolutely as for the revelation of 3 basic ordinary language sections like Insults, Swears and 2d person. A sort machine and cosmology like reasoning had been contracted to go over the normality of such substances inside the trade board/web documents, which may conceivable explanation a message to security in case you have to take fitting improvement. The instrument has been dissected on staggering social occasions and achieves less steeply-esteemed acknowledgment displays.
2017-05-19
Zhang, Sixuan, Yu, Liang, Wakefield, Robin L., Leidner, Dorothy E..  2016.  Friend or Foe: Cyberbullying in Social Network Sites. SIGMIS Database. 47:51–71.

As the use of social media technologies proliferates in organizations, it is important to understand the nefarious behaviors, such as cyberbullying, that may accompany such technology use and how to discourage these behaviors. We draw from neutralization theory and the criminological theory of general deterrence to develop and empirically test a research model to explain why cyberbullying may occur and how the behavior may be discouraged. We created a research model of three second-order formative constructs to examine their predictive influence on intentions to cyberbully. We used PLS- SEM to analyze the responses of 174 Facebook users in two different cyberbullying scenarios. Our model suggests that neutralization techniques enable cyberbullying behavior and while sanction certainty is an important deterrent, sanction severity appears ineffective. We discuss the theoretical and practical implications of our model and results.