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A Multi-Criteria Decision Strategy to Select a Machine Learning Method for Indoor Positioning System

机译:一种为室内定位系统选择机器学习方法的多标准决策策略

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摘要

Indoor positioning system is an active research area. There are various performance metrics such as accuracy, computation time, precision, and f-score in machine learning based indoor positioning systems. The aim of this study is to present a multi-criteria decision strategy to determine suitable machine learning methods for a specific indoor positioning system. This helps to evaluate the performance of machine learning algorithms considering multiple criteria. During the experiments, UJllndoorLoc, KIOS and RFKON datasets are used from the positioning literature. The algorithms such as k-nearest neighbor, support vector machine, decision tree, naive bayes and bayesian networks are compared using these datasets. In addition to these, ensemble learning algorithms, namely adaboost and bagging, are utilized to improve the performance of these classifiers. As a conclusion, the test results for any specific dataset are reevaluated using the performance metrics such as accuracy, f-score and computation time, and a multi-criteria decision strategy is proposed to find the most convenient algorithm. The analytical hierarchy process is used for multi-criteria decision. To the best of our knowledge, this is the first work to select the proper machine learning algorithm for an indoor positioning system using multi-criteria decision strategy.
机译:室内定位系统是一个活跃的研究区。基于机器学习的室内定位系统中存在各种性能指标,如精度,计算时间,精度和F分数。本研究的目的是提供一种多标准决策策略,以确定特定室内定位系统的合适机器学习方法。这有助于评估考虑多个标准的机器学习算法的性能。在实验期间,从定位文献中使用UjllNdoORLoC,KIOS和RFKON数据集。使用这些数据集比较k-collect邻居,支持向量机,决策树,朴素贝叶斯和贝叶斯网络等算法。除了这些,集合学习算法,即Adaboost和Bagging,用于提高这些分类器的性能。作为结论,使用诸如精度,F分数和计算时间之类的性能度量来重新评估任何特定数据集的测试结果,以及提出了多标准决策策略以找到最方便的算法。分析层次过程用于多标准决策。据我们所知,这是使用多标准决策策略选择适当的机器学习算法的第一项工作。

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