利用惯性传感器和机器学习进行昏厥和癫痫发作的自动识别

Erick Ribeiro, Larissa Bentes, Anderson Cruz, Gabriel Leitão, R. Barreto, V. Silva, T. Primo, F. Koch
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引用次数: 1

摘要

本文描述了一种用于昏厥和癫痫发作自动识别的机器学习方法。我们评估了五种机器学习技术,以找出哪种分类方法最大限度地提高准确性水平,同时最小化计算复杂性,因为实验环境具有非常有限的计算资源(处理能力)。考虑到F-Score和Accuracy指标,我们在可穿戴设备中原型化了这种方法。实验评价表明,KNN、PART和C4.5之间无显著性差异。然而,与PART和C4.5相比,KNN具有较高的计算成本。与C4.5相比,PART的计算成本较低,因为它识别的规则较少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the use of inertial sensors and machine learning for automatic recognition of fainting and epileptic seizure
This paper depicts a machine learning method for fainting and epileptic seizures automatic recognition. We evaluated five machine learning techniques in order to find out which classification method maximizes the accuracy level and, at the same time, minimizes the computational complexity since the experimental environment has very limited computational resources (processing power). We prototype such method in a wearable device, taking into account F-Score and Accuracy metrics. The experimental evaluation shows that there are no significant difference between KNN, PART, and C4.5. However, KNN has high computational cost when compared to PART and C4.5. PART has low computational cost when compared to C4.5 since it identified less rules.
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