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Flexible Distribution-Based Regression Models for Count Data: Application to Medical Diagnosis

机译:基于灵活的基于分配的回归模型,用于计数数据:应用于医学诊断

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摘要

Data mining techniques have been successfully utilized in different applications of significant fields, including medical research. With the wealth of data available within the healthcare systems, there is a lack of practical analysis tools to discover hidden relationships and trends in data. The complexity of medical data that is unfavorable for most models is a considerable challenge in prediction. The ability of a model to perform accurately and efficiently in disease diagnosis is extremely significant. Thus, the model must be selected to fit the data better, such that the learning from previous data is most efficient, and the diagnosis of the disease is highly accurate. This work is motivated by the limited number of regression analysis tools for multivariate counts in the literature. We propose two regression models for count data based on flexible distributions, namely, the multinomial Beta-Liouville and multinomial scaled Dirichlet, and evaluated the proposed models in the problem of disease diagnosis. The performance is evaluated based on the accuracy of the prediction which depends on the nature and complexity of the dataset. Our results show the efficiency of the two proposed regression models where the prediction performance of both models is competitive to other previously used regression models for count data and to the best results in the literature.
机译:数据挖掘技术已成功利用了有关重要领域的不同应用,包括医学研究。在医疗保健系统内提供的丰富数据,缺乏实用的分析工具来发现隐藏的关系和数据趋势。对大多数模型不利的医疗数据的复杂性是预测中具有相当大的挑战。模型在疾病诊断中准确和有效地进行的能力非常显着。因此,必须选择该模型以更好地拟合数据,使得从先前数据的学习是最有效的,并且疾病的诊断是高度准确的。这项工作受到文献中多元计数的有限数量的回归分析工具的动机。我们为基于灵活分布的计数数据提出了两种回归模型,即多项式Beta-Liouville和多项式缩放的Dirichlet,并评估了疾病诊断问题中的提出模型。基于预测的准确性来评估性能,这取决于数据集的性质和复杂性。我们的结果显示了两种拟议的回归模型的效率,其中两种型号的预测性能与用于计数数据的其他先前使用的回归模型具有竞争力,以及文献中的最佳结果。

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