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Aligning Bayesian Network Classifiers with Medical Contexts

机译:使贝叶斯网络分类器与医学环境保持一致

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While for many problems in medicine classification models are being developed, Bayesian network classifiers do not seem to have become as widely accepted within the medical community as logistic regression models. We compare first-order logistic regression and naive Bayesian classification in the domain of reproductive medicine and demonstrate that the two techniques can result in models of comparable performance. For Bayesian network classifiers to become more widely accepted within the medical community, we feel that they should be better aligned with their context of application. We describe how to incorporate well-known concepts of clinical relevance in the process of constructing and evaluating Bayesian network classifiers to achieve such an alignment.
机译:尽管正在开发许多医学分类模型中的问题,但贝叶斯网络分类器似乎并未像逻辑回归模型那样在医学界被广泛接受。我们比较了生殖医学领域的一阶逻辑回归和朴素贝叶斯分类,并证明了这两种技术可以产生可比性能的模型。为了使贝叶斯网络分类器在医学界得到更广泛的接受,我们认为它们应该更好地与其应用环境保持一致。我们描述了如何在构建和评估贝叶斯网络分类器的过程中纳入临床相关性的众所周知的概念,以实现这种一致性。

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