Indonesian Journal of Electrical Engineering and Computer Science
Vol 29, No 3: March 2023

Adaptation issues of machine learning in safety digitization

Gyana Ranjana Panigrahi (Sambalpur University)
Nalini Kanta Barpanda (Sambalpur University)
Komma Anitha (Prasad V. Potluri Siddhartha Institute of Technology)
Shanti Rathore (Dr. C.V. Raman University Bilaspur Chhattisgarh)
Preesat Biswas (Government Engineering College Jagdalpur)
Prabira Kumar Sethy (Sambalpur University)



Article Info

Publish Date
01 Mar 2023

Abstract

The internet community is the only set of irreplaceable spaces in today’s world and is used by millions for knowledge acquittance via the digital exchange between the landed gentry. The torrent of available e-contents in the Internet community attracts corporates and researchers to find the factual weightage of formed data. It is high time for digital diversification, which is the objective of using various learning-based machine learning (ML) systems for hands-on fortification. The main idea is to make stylistic communication more understandable. Here, the authors try to adapt the factual weightage procedure of formed data through the Internet community using machine learning schemes. Hence, the authors have chosen to emphasize cyber security, which is not well discussed and concerned with ethical contemplation from hackers' forums amidst internet communities. There are disparities in the continual growth of connotations, acronyms, spellings, and even technical jargon, which need periodic re-learning and their prototype implications through the proposed model.

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