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A General Bayesian Network-Assisted Ensemble System for Context Prediction: An Emphasis on Location Prediction

机译:用于上下文预测的通用贝叶斯网络辅助合奏系统:强调位置预测

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摘要

Context prediction, highlighted by accurate location prediction, has been at the heart of ubiquitous decision support systems. To improve the prediction accuracy of such systems, various methods have been proposed and tested; these include Bayesian networks, decision classifiers, and SVMs. Still, greater accuracy may be achieved when individual classifiers are integrated into an ensemble system. Meanwhile, General Bayesian Network (GBN) classifier possesses a great potential as an accurate decision support engine for context prediction. To leverage the power of both the GBN and the ensemble system, we propose a GBN-assisted ensemble system for location prediction. The proposed ensemble system uses variables extracted from Markov blanket of the GBN's class node to integrate GBN, decision tree, and SVM. The proposed system was applied to a real-world location prediction dataset, and promising results were obtained. Practical implications are discussed.
机译:准确的位置预测突出显示了上下文预测,它已成为无处不在的决策支持系统的核心。为了提高这种系统的预测精度,已经提出并测试了各种方法。这些包括贝叶斯网络,决策分类器和SVM。当将单个分类器集成到集成系统中时,仍可以实现更高的准确性。同时,通用贝叶斯网络(GBN)分类器作为上下文预测的准确决策支持引擎具有巨大的潜力。为了充分利用GBN和集成系统的功能,我们提出了GBN辅助集成系统进行位置预测。所提出的集成系统使用从GBN的类节点的Markov毯提取的变量来集成GBN,决策树和SVM。将该系统应用于现实世界的位置预测数据集,并获得了可喜的结果。讨论了实际含义。

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