A Hybrid Model for Predicting Missing Records in Data Using XGBoost

Pascal Ndayishimiyepas, Cheruiyot Wilson, Micheal W. Kimwele
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Abstract

Many of the datasets in real-world applications contain incompleteness. The volume of the historical data is usually large. Moreover, there are many missing values for many features of the data. Therefore, this paper implemented an enhanced model for predicting missing records in data using supervised machine learning XGBoost regression. The paper explores different approaches that have been implemented for predicting missing records in data and then implement an enhanced approach. XGBoost stands for extreme Gradient Boosting. The main goal of XGBoost's development was improvement in model performance and speed of computation. It is an implementation of Gradient Boosting Machine which enhances the computing power for boosted trees algorithms. From the results of accuracy, precision, and recall score, it can be concluded that the implemented XGBoost algorithm model is capable of predicting missing records in a dataset.
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利用XGBoost预测数据缺失记录的混合模型
实际应用中的许多数据集都包含不完整性。历史数据的量通常很大。此外,数据的许多特征存在许多缺失值。因此,本文使用监督机器学习XGBoost回归实现了一个增强模型,用于预测数据中的缺失记录。本文探讨了预测数据中缺失记录的不同方法,然后实施了一种增强的方法。XGBoost代表极端梯度增强。XGBoost开发的主要目标是提高模型性能和计算速度。它是梯度增强机的一种实现,增强了增强树算法的计算能力。从准确度、精密度和召回分数的结果可以看出,实现的XGBoost算法模型能够预测数据集中的缺失记录。
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