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Extracting Diagnostic Knowledge from Hepatitis Data by Decision Tree Graph-Based Induction

机译:基于决策树图的归纳法从肝炎数据中提取诊断知识

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摘要

Decision Tree Graph-Based Induction (DT-GBI) is a technique for constructing a decision tree from graph-structured data. In DT-GBI, substructures (discriminative patterns) are extracted by stepwise pair expansion (pair-wise chunking) and used as test attributes at nodes of a decision tree. We applied DT-GBI to a classification task of hepatitis data. In the first experiment, the stages of fibrosis are used as classes and a decision tree is constructed for discriminating patients with F4 (cirrhosis) from patients with the other stages using only the tune sequence data of blood inspection. In the second experiment, the types of hepatitis (B and C) are used as classes and a decision tree is constructed by DT-GBI as in the first experiment. The preliminary results of experiments, both constructed decision trees and their predictive accuracies, are reported in this paper.
机译:决策树基于图的归纳(DT-GBI)是一种从图结构数据构建决策树的技术。在DT-GBI中,通过逐步对扩展(逐对分块)提取子结构(区分模式),并将其用作决策树节点上的测试属性。我们将DT-GBI应用于肝炎数据的分类任务。在第一个实验中,将纤维化的阶段用作类别,并构建决策树,以仅使用血液检查的调谐序列数据将F4(肝硬化)患者与其他阶段的患者区分开。在第二个实验中,与第一个实验一样,将肝炎的类型(B和C)用作类别,并通过DT-GBI构建决策树。本文报道了实验的初步结果,包括构造的决策树及其预测精度。

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