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Extended Bayesian Regression Models: A Symbiotic Application of Belief Networks and Multilayer Perceptrons for the Classification of Ovarian Tumors

机译:扩展的贝叶斯回归模型:信念网络和多层感知器在卵巢肿瘤分类中的共生应用

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We describe a methodology based on a dual Belief Network-Multilayer Perceptron representation to build Bayesian classifiers. This methodology combines efficiently the prior domain knowledge and statistical data. We overview how this Bayesian methodology is able (1) to define constructively a valuable "informative" prior for black-box models, (2) to provide uncertainty information with predictions and (3) to handle missing values based on an auxiliary domain model. We assume that the prior domain model is formalized as a Belief Network (since this representation is a practical solution to acquiring prior domain knowledge) while we use black-box models (such as Multilayer Perceptrons) for learning to utilize the statistical data. In a medical task of predicting the malignancy of ovarian masses we demonstrate these two symbiotic applications of Belief Network models and summarize the practical advantages of the Bayesian approach.
机译:我们描述了一种基于双重信念网络-多层感知器表示的方法,以建立贝叶斯分类器。这种方法有效地结合了先验领域知识和统计数据。我们概述了这种贝叶斯方法如何(1)为黑盒模型建设性地定义有价值的“信息”先验;(2)为预测提供不确定性信息;(3)基于辅助域模型处理缺失值。我们假设先验领域模型被正式化为一个信念网络(因为此表示形式是获取先验领域知识的实用解决方案),而我们使用黑盒模型(例如多层感知器)来学习利用统计数据。在预测卵巢肿块恶性程度的医学任务中,我们展示了Belief Network模型的这两种共生应用,并总结了贝叶斯方法的实际优势。

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