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Detection of cigarette smoke inhalations from respiratory signals using decision tree ensembles

机译:使用决策树集成从呼吸信号中检测卷烟吸入

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In this study we explored the ability of ensembles of decision trees to classify hand-to-mouth gestures in order to detect cigarette smoke inhalations. Three subject independent models were constructed using a variety of ensemble techniques: boosting (AdaBoost), bootstrap aggregating (bagging), and Random Forests. Data was gathered during previous studies by extracting features from the signal waveforms of worn sensors. Each hand gesture was associated with either a smoke inhalation or a hand gesture of another type (e.g. eating). Subject as well as group models were trained. For the group models, model performance was evaluated by computing F-score, precision, and recall statistics using a 20-fold leave-one-out cross-validation testing strategy where one subject was held out for evaluation and models were trained on the remaining 19 subjects. For the individual models, models were trained on a single subject and evaluated using 5-fold cross validation. The average and standard deviation of each statistic across all folds were reported.
机译:在这项研究中,我们探索了决策树集合对手到嘴手势进行分类以检测香烟烟雾吸入的能力。使用多种集成技术构建了三个独立于主题的模型:增强(AdaBoost),自举聚合(bagging)和随机森林。以前的研究是通过从磨损传感器的信号波形中提取特征来收集数据的。每个手势都与吸烟或另一种手势(例如进食)相关联。主题和小组模型都经过培训。对于组模型,通过使用20倍留一法交叉验证测试策略计算F得分,精度和召回统计信息来评估模型性能,其中一个主题被保留进行评估,其余模型则经过训练19个科目。对于单个模型,在单个主题上训练模型,并使用5倍交叉验证进行评估。报告了所有统计数据在所有倍数上的平均和标准差。

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