Learning from life-logging data by hybrid HMM: a case study on active states prediction

SPG biomed Pub Date : 2016-02-20 DOI:10.2316/P.2016.832-019
Ji Ni, T. Lambrou, Xujiong Ye
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引用次数: 1

Abstract

In this paper, we have proposed employing a hybrid classifier-hidden Markov model (HMM) as a supervised learning approach to recognize daily active states from sequential life-logging data collected from wearable sensors. We generate synthetic data from real dataset to cope with noise and incompleteness for training purpose and, in conjunction with HMM, propose using a multiobjective genetic programming (MOGP) classifier in comparison of the support vector machine (SVM) with variant kernels. We demonstrate that the system with either algorithm works effectively to recognize personal active states regarding medical reference. We also illustrate that MOGP yields generally better results than SVM without requiring an ad hoc kernel.
基于混合HMM的生命测井数据学习:动态状态预测案例研究
在本文中,我们提出采用混合分类器-隐马尔可夫模型(HMM)作为监督学习方法,从可穿戴传感器收集的连续生命记录数据中识别日常活动状态。我们从真实数据集生成合成数据,以应对训练目的的噪声和不完整性,并与HMM结合,提出使用多目标遗传规划(MOGP)分类器来比较具有变核的支持向量机(SVM)。我们证明了两种算法的系统都能有效地识别医疗参考方面的个人活动状态。我们还说明,MOGP通常比SVM产生更好的结果,而不需要特别的内核。
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