机器学习模型性能的初步实验

Misheck Banda, E. Ngassam, Ernest Mnkandla
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引用次数: 0

摘要

人工智能及其相关的机器学习技术不断改变组织在无处不在的数据源和格式的动态环境中管理业务数据的方式。大多数组织都面临着选择合适的机器学习模型来从现有业务数据中提取见解的挑战,这些数据集可能是非结构化的,具有不同的形式、类型和大小。Logistic回归、随机森林和决策树是本文初步实验中选择的三种机器学习模型,用于预测泰坦尼克号灾难中乘客幸存的可能性。我们的调查显示,特定的模型需要处理特定的数据集类型,在这种情况下,分类数据集。从研究结果中可以看出,基于在分类误差度量和混淆矩阵中获得的速度和高预测性能,可以强烈推荐在分类数据集上使用逻辑回归模型。所选择的模型构成了本文范围之外的混合机器学习模型构建中正在探索的一组模型的一部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preliminary Experiments on the Performance of Machine Learning Models
Artificial intelligence and its related machine learning technologies constantly change how organisations manage their business data in a dynamic environment of ubiquitous data sources and formats. Most organisations face the challenge of selecting the appropriate machine learning models to extract insights from their existing business data, of which datasets may be unstructured, of different forms, types, and sizes. Logistic regression, random forest, and decision tree were the three machine learning models selected for this paper’s preliminary experiments to predict the likelihood of passengers surviving the Titanic disaster. Our investigation revealed that specific models are required to handle specific dataset types, in this case, categorical datasets. It was noted from the findings that a logistic regression model could be highly recommended for use on a categorical dataset based on the speed and high prediction performance obtained in the classification error metrics and confusion matrix. The selected models form part of a set of models currently being explored in the construction of hybrid machine learning models beyond the scope of this paper.
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