Visible to the public Biblio

Filters: Author is Malathi, K.  [Clear All Filters]
2023-01-05
Kumar, Marri Ranjith, Malathi, K..  2022.  An Innovative Method in Improving the accuracy in Intrusion detection by comparing Random Forest over Support Vector Machine. 2022 International Conference on Business Analytics for Technology and Security (ICBATS). :1—6.
Improving the accuracy of intruders in innovative Intrusion detection by comparing Machine Learning classifiers such as Random Forest (RF) with Support Vector Machine (SVM). Two groups of supervised Machine Learning algorithms acquire perfection by looking at the Random Forest calculation (N=20) with the Support Vector Machine calculation (N=20)G power value is 0.8. Random Forest (99.3198%) has the highest accuracy than the SVM (9S.56l5%) and the independent T-test was carried out (=0.507) and shows that it is statistically insignificant (p \textgreater0.05) with a confidence value of 95% by comparing RF and SVM. Conclusion: The comparative examination displays that the Random Forest is more productive than the Support Vector Machine for identifying the intruders are significantly tested.
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.