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Towards an Efficient One-Class Classifier for Mobile Devices and Wearable Sensors on the Context of Personal Risk Detection

机译:在个人风险检测的背景下针对移动设备和可穿戴传感器的高效一类分类器

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摘要

In this work, we present a first step towards an efficient one-class classifier well suited for mobile devices to be implemented as part of a user application coupled with wearable sensors in the context of personal risk detection. We compared one-class Support Vector Machine (ocSVM) and OCKRA (One-Class K-means with Randomly-projected features Algorithm). Both classifiers were tested using four versions of the publicly available PRIDE (Personal RIsk DEtection) dataset. The first version is the original PRIDE dataset, which is based only on time-domain features. We created a second version that is simply an extension of the original dataset with new attributes in the frequency domain. The other two datasets are a subset of these two versions, after a feature selection procedure based on a correlation matrix analysis followed by a Principal Component Analysis. All experiments were focused on the performance of the classifiers as well as on the execution time during the training and classification processes. Therefore, our goal in this work is twofold: we aim at reducing execution time but at the same time maintaining a good classification performance. Our results show that OCKRA achieved on average, 89.1% of Area Under the Curve (AUC) using the full set of features and 83.7% when trained using a subset of them. Furthermore, regarding execution time, OCKRA reports in the best case a 33.1% gain when using a subset of the feature vector, instead of the full set of features. These results are better than those reported by ocSVM, in which case, even though the AUCs are very close to each other, execution times are significantly higher in all cases, for example, more than 20 h versus less than an hour in the worst-case scenario. Having in mind the trade-off between classification performance and efficiency, our results support the choice of OCKRA as our best candidate so far for a mobile implementation where less processing and memory resources are at hand. OCKRA reports a very encouraging speed-up without sacrificing the classifier performance when using the PRIDE dataset based only on time-domain attributes after a feature selection procedure.
机译:在这项工作中,我们提出了朝着高效的一类分类器迈出的第一步,该分类器非常适合在个人风险检测的背景下与可穿戴式传感器一起作为用户应用程序的一部分实现的移动设备。我们比较了一类支持向量机(ocSVM)和OCKRA(一类具有随机投影特征算法的K均值)。使用公开可用的PRIDE(个人RIsk检测)数据集的四个版本测试了这两个分类器。第一个版本是原始PRIDE数据集,该数据集仅基于时域特征。我们创建了第二个版本,该版本只是原始数据集的扩展,在频域中具有新属性。在基于相关矩阵分析然后进行主成分分析的特征选择过程之后,其他两个数据集是这两个版本的子集。所有实验都集中在分类器的性能以及训练和分类过程中的执行时间上。因此,我们在这项工作中的目标是双重的:我们旨在减少执行时间,但同时保持良好的分类性能。我们的结果表明,OCKRA使用全套功能平均可达到89.1%的曲线下面积(AUC),而使用其中一部分进行训练时可达到83.7%。此外,关于执行时间,OCKRA在最佳情况下使用特征向量的子集而不是完整特征集时报告的增益为33.1%。这些结果比ocSVM报告的结果要好,在这种情况下,即使AUC彼此非常接近,在所有情况下执行时间都显着增加,例如,超过20小时,而在最差的情况下,则不到一小时。案例方案。考虑到分类性能和效率之间的权衡,我们的结果支持选择OCKRA作为迄今为止最适合处理少量处理和内存资源的移动实现的最佳选择。当仅使用基于特征选择程序的时域属性的PRIDE数据集时,OCKRA报告了非常令人鼓舞的加速,而没有牺牲分类器性能。

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