LGCRMar 16, 2023

Web and Mobile Platforms for Managing Elections based on IoT And Machine Learning Algorithms

arXiv:2303.09045v1h-index: 12
Originality Synthesis-oriented
AI Analysis

This addresses election management challenges for governments, particularly in cost reduction and security, but appears incremental as it builds on existing biometric and ML technologies.

The paper tackles the problem of high election costs and security issues in e-voting systems by proposing a web and mobile platform that uses IoT for fraud prevention and ML for predictions, aiming to reduce costs and enhance safety.

The global pandemic situation has severely affected all countries. As a result, almost all countries had to adjust to online technologies to continue their processes. In addition, Sri Lanka is yearly spending ten billion on elections. We have examined a proper way of minimizing the cost of hosting these events online. To solve the existing problems and increase the time potency and cost reduction we have used IoT and ML-based technologies. IoT-based data will identify, register, and be used to secure from fraud, while ML algorithms manipulate the election data and produce winning predictions, weather-based voters attendance, and election violence. All the data will be saved in cloud computing and a standard database to store and access the data. This study mainly focuses on four aspects of an E-voting system. The most frequent problems across the world in E-voting are the security, accuracy, and reliability of the systems. E-government systems must be secured against various cyber-attacks and ensure that only authorized users can access valuable, and sometimes sensitive information. Being able to access a system without passwords but using biometric details has been there for a while now, however, our proposed system has a different approach to taking the credentials, processing, and combining the images, reformatting and producing the output, and tracking. In addition, we ensure to enhance e-voting safety. While ML-based algorithms use different data sets and provide predictions in advance.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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