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Decision diagrams in machine learning: an empirical study on real-life credit-risk data

机译:机器学习中的决策图:对真实信用风险数据的实证研究

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摘要

Decision trees are a widely used knowledge representation in machine learning. However, one of their main drawbacks is the inherent replication of isomorphic subtrees, as a result of which the produced classifiers might become too large to be comprehensible by the human experts that have to validate them. Alternatively, decision diagrams, a generalization of decision trees taking on the form of a rooted, acyclic digraph instead of a tree, have occasionally been suggested as a potentially more compact representation. Their application in machine learning has nonetheless been criticized, because the theoretical size advantages of subgraph sharing did not always directly materialize in the relatively scarce reported experiments on real-world data. Therefore, in this paper, starting from a series of rule sets extracted from three real-life credit-scoring data sets, we will empirically assess to what extent decision diagrams are able to provide a compact visual description. Furthermore, we will investigate the practical impact of finding a good attribute ordering on the achieved size savings.
机译:决策树是机器学习中广泛使用的知识表示。但是,它们的主要缺点之一是同构子树的固有复制,其结果是,所产生的分类器可能会变得太大而无法被必须对其进行验证的人类专家所理解。备选地,作为一种可能更紧凑的表示,有时建议采用决策图,即采用有根无环二阶图而不是树的形式对决策树进行概括。尽管如此,它们在机器学习中的应用受到了批评,因为子图共享的理论上的尺寸优势并不总是直接体现在相对稀少的真实数据实验中。因此,在本文中,将从从三个现实信用评分数据集中提取的一系列规则集开始,我们将凭经验评估决策图在多大程度上能够提供紧凑的视觉描述。此外,我们将研究找到良好的属性顺序对实现的尺寸节省的实际影响。

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