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A compact and accurate model for classification

机译:紧凑而准确的分类模型

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摘要

We describe and evaluate an information-theoretic algorithm for data-driven induction of classification models based on a minimal subset of available features. The relationship between input (predictive) features and the target (classification) attribute is modeled by a tree-like structure termed an information network (IN). Unlike other decision-tree models, the information network uses the same input attribute across the nodes of a given layer (level). The input attributes are selected incrementally by the algorithm to maximize a global decrease in the conditional entropy of the target attribute. We are using the prepruning approach: when no attribute causes a statistically significant decrease in the entropy, the network construction is stopped. The algorithm is shown empirically to produce much more compact models than other methods of decision-tree learning while preserving nearly the same level of classification accuracy.
机译:我们基于可用功能的最小子集描述和评估一种信息理论算法,用于数据驱动的分类模型归纳。输入(预测)特征和目标(分类)属性之间的关系由称为信息网络(IN)的树状结构建模。与其他决策树模型不同,信息网络在给定层(级别)的节点上使用相同的输入属性。通过算法增量选择输入属性,以使目标属性的条件熵的全局减小最大化。我们正在使用预修剪方法:当没有属性导致熵在​​统计上显着降低时,网络构建将停止。实验表明,与其他决策树学习方法相比,该算法可生成更紧凑的模型,同时保持几乎相同水平的分类精度。

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