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Applying semi-supervised learning method for cellphone-based travel mode classification

机译:应用基于手机的旅行模式分类半监督学习方法

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Transportation mode detection is important in understanding traffic conditions, facility performance, and residents' daily movements. Using GPS data collected from personal cellphones, this study analyzed mode classification methods for participants in Moscow, Idaho. Principal component analysis and semi-supervised Gaussian mixture models were implemented as major machine learning techniques applied in the classification task. For the study of two-mode classifiers, the prediction accuracy was found to be 65.71% and 88.00% for motorized and non-motorized trips, respectively. For the four-mode classifiers (bike, bus, drive, and walk), the model correctly predicted 66.67% and 57.14% of the trips for the Drive and Walk modes. The prediction accuracy for Bike and Bus was not as high due to the small number of trips observed in these two modes. Ultimately, the model built with PC scores performed better than model with non-transformed variables.
机译:运输模式检测对于了解交通条件,设施性能和居民的日常运动非常重要。使用从个人手机收集的GPS数据,这项研究分析了莫斯科,爱达荷州参与者的模式分类方法。主要成分分析和半监控高斯混合模型被实施为在分类任务中应用的主要机器学习技术。对于两种模式分类器的研究,对于电动和非机动旅行,预测准确度分别为65.71%和88.00%。对于四模式分类器(自行车,公共汽车,驱动器和行走),该模型正确预测了驱动器和步行模式的66.67%和57.14%的旅行。由于这两种模式中观察到的少量旅行,自行车和公共汽车的预测精度并不高。最终,使用PC分数构建的模型比具有非变形变量的模型更好。

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