基于聚类的政府控烟策略规则发现模型

Md. Shamsul Huda, J. Yearwood, R. Borland
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引用次数: 4

摘要

发现描述吸烟者戒烟意图的行为模式的有趣规则是确定有效烟草控制策略的重要任务。在本文中,我们研究了一个紧凑和简化的规则发现过程,用于预测吸烟者的戒烟行为,该过程可以为建立科学的基于证据的适应性烟草控制政策提供反馈。基于标准决策树(SDT)的规则发现依赖于特征空间中的决策边界,这些边界与特定决策节点的特征轴线正交。这可能会限制SDT学习高维大型数据集(如烟草控制)的中间概念的能力。本文提出了一种基于聚类的规则发现模型(CRDM),用于生成更紧凑和简化的规则,以增强烟草控制政策。基于聚类的方法构建概念组,从中构建一组决策树(决策林)。在控烟数据集上的实验结果表明,与单一决策树相比,基于CRDM构建的决策树决策规则更简单,能够更准确地预测吸烟者的戒烟意愿。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cluster Based Rule Discovery Model for Enhancement of Government's Tobacco Control Strategy
Discovery of interesting rules describing the behavioural patterns of smokers’ quitting intentions is an important task in the determination of an effective tobacco control strategy. In this paper, we investigate a compact and simplified rule discovery process for predicting smokers’ quitting behaviour that can provide feedback to build an scientific evidence-based adaptive tobacco control policy. Standard decision tree (SDT) based rule discovery depends on decision boundaries in the feature space which are orthogonal to the axis of the feature of a particular decision node. This may limit the ability of SDT to learn intermediate concepts for high dimensional large datasets such as tobacco control. In this paper, we propose a cluster based rule discovery model (CRDM) for generation of more compact and simplified rules for the enhancement of tobacco control policy. The cluster-based approach builds conceptual groups from which a set of decision trees (a decision forest) are constructed. Experimental results on the tobacco control data set show that decision rules from the decision forest constructed by CRDM are simpler and can predict smokers’ quitting intention more accurately than a single decision tree.
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