缺少机器学习模型的数据处理

Karim H. Erian, Pedro Regalado, J. Conrad
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引用次数: 1

摘要

本文讨论了一种解决机器学习预处理阶段缺失数据问题的新算法。本文以一个模型为例,该模型是通过学习可用的用户数据,基于多种因素来帮助贷款人评估住房贷款。如果数据集中缺少一个人的因素,目前使用的方法会删除整个条目,从而减少数据集的大小并影响机器学习模型的准确性。该算法旨在通过将数据集分成多个子集,为每个子集构建不同的机器学习模型,然后将这些模型组合成一个机器学习模型,从而避免因缺失因素而丢失条目。以这种方式,模型利用所有可用的数据,只忽略缺失的值。总体而言,新算法将房屋贷款示例中的预测准确率从93%提高到98%,提高了5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Missing data handling for machine learning models
This paper discusses a novel algorithm for solving a missing data problem in the machine learning pre-processing stage. A model built to help lenders evaluate home loans based on numerous factors by learning from available user data, is adopted in this paper as an example. If one of the factors is missing for a person in the dataset, the currently used methods delete the whole entry therefore reducing the size of the dataset and affecting the machine learning model accuracy. The novel algorithm aims to avoid losing entries for missing factors by breaking the dataset into multiple subsets, building a different machine learning model for each subset, then combining the models into one machine learning model. In this manner, the model makes use of all available data and only neglects the missing values. Overall, the new algorithm improved the prediction accuracy by 5% from 93% accuracy to 98% in the home loan example.
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