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Boosting Naive-Bayes classifiers to predict outcomes for hip prostheses

机译:提升朴素贝叶斯分类器以预测髋关节假体的结果

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Our primary aim is to develop a classifier system that is capable of predicting the success or failure of hip prostheses on the basis of data from early radiological observations. The data set we employ (collected at The Royal London Hospital) records observations taken in the early years following fixation of the prosthesis and failure or otherwise after ten years. Many of the records contained in this data set have missing values. Recent work on the well-known Pima Indian data set has demonstrated the effectiveness of the Naive-Bayes (NB) method, coupled with boosting, on data with missing values. In this paper we investigate the performance of the NB method and boosting on the hip prosthesis data which contains a much greater proportion of missing values than the Pima Indian data. Our data set is additionally challenging in that it contains many more examples of one class (success) than the other.
机译:我们的主要目标是开发一种分类器系统,该系统能够根据早期放射学观察的数据预测髋关节假体的成功或失败。我们使用的数据集(在伦敦皇家医院收集)记录了在修复假体和失败后的早期或十年后其他情况下获得的观察结果。此数据集中包含的许多记录都缺少值。最近在著名的Pima Indian数据集上的工作证明了朴素贝叶斯(Naive-Bayes)(NB)方法的有效性,以及对缺失值的数据的增强。在本文中,我们研究了NB方法的性能以及对髋关节假体数据的增强作用,该数据包含比Pima Indian数据更大比例的缺失值。我们的数据集还具有挑战性,因为它包含的一类(成功)实例比另一类更多。

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