Optimizing the 2024 Governor Election Quick Count with Extreme Gradient Boosting (XGBoost) to Increase Voting Prediction Accuracy

I. Wayan, Gede Suacana, Didik Suhariyanto, Ferdinant Nuru
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Abstract

This research aims to increase the accuracy of vote predictions in the Quick Count process in the 2024 Governor Election using the XGBoost algorithm. Quick Count is a fast method for obtaining estimates of election results based on some of the data that has been calculated. The XGBoost algorithm was chosen because it has proven effective in various applications, including predictive modeling. This research analyzes the implementation of the XGBoost algorithm in modeling vote predictions for Quick Count, especially in the context of the 2024 gubernatorial election. By using various evaluation metrics such as accuracy, precision, recall, and F1-score, this research provides a comprehensive understanding of the performance of the XGBoost model. The research results show that the XGBoost algorithm achieves high accuracy, precision, recall, and F1 score, demonstrating its ability to classify sounds accurately. The practical implications of this research are significant in improving the integrity of the democratic process by providing more reliable and transparent election results. Additionally, this research paves the way for developing more sophisticated Quick Count methods by leveraging insights from previous research on machine learning techniques and data security.
利用极端梯度提升(XGBoost)优化 2024 年州长选举快速计数,提高投票预测准确性
本研究旨在利用 XGBoost 算法提高 2024 年州长选举快速计票过程中的选票预测准确性。快速计票是一种基于部分已计算数据获得选举结果估计值的快速方法。之所以选择 XGBoost 算法,是因为该算法已被证明在各种应用(包括预测建模)中行之有效。本研究分析了 XGBoost 算法在 Quick Count 选票预测建模中的应用,尤其是在 2024 年州长选举的背景下。通过使用准确率、精确度、召回率和 F1 分数等各种评估指标,本研究全面了解了 XGBoost 模型的性能。研究结果表明,XGBoost 算法实现了较高的准确率、精确度、召回率和 F1 分数,证明了其对声音进行准确分类的能力。这项研究的实际意义在于通过提供更可靠、更透明的选举结果,提高民主进程的完整性。此外,这项研究还利用了以前在机器学习技术和数据安全方面的研究成果,为开发更复杂的快速计数方法铺平了道路。
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