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Inertial Hidden Markov Models: Modeling Change in Multivariate Time Series

机译:惯性隐马尔可夫模型:多变量时间序列的建模变化

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Faced with the problem of characterizing systematic changes in multivariate time series in an unsupervised manner, we derive and test two methods of regularizing hidden Markov models for this task. Regularization on state transitions provides smooth transitioning among states, such that the sequences are split into broad, contiguous segments. Our methods are compared with a recent hierarchical Dirichlet process hidden Markov model (HDP-HMM) and a baseline standard hidden Markov model, of which the former suffers from poor performance on moderate-dimensional data and sensitivity to parameter settings, while the latter suffers from rapid state transitioning, over-segmentation and poor performance on a segmentation task involving human activity accelerometer data from the UCI Repository. The regularized methods developed here are able to perfectly characterize change of behavior in the human activity data for roughly half of the real-data test cases, with accuracy of 94% and low variation of information. In contrast to the HDP-HMM, our methods provide simple, drop-in replacements for standard hidden Markov model update rules, allowing standard expectation maximization (EM) algorithms to be used for learning.
机译:面对以无人监督的方式表征多元时间序列系统的系统变化的问题,我们导出并测试了这项任务的定义马尔可夫模型的两种方法。在状态转换的正则化提供状态之间的平稳转换,使得序列被分成宽,连续的段。我们的方法与最近的分层Dirichlet过程隐马尔可夫模型(HDP-HMM)和基线标准隐马尔可夫模型进行了比较,其中前者对中等程度数据的性能不佳,对参数设置的敏感性,而后者则遭受在涉及来自UCI存储库的人类活动加速度计数据的分割任务中快速的状态转换,过分分割和性能差。这里开发的正则化方法能够完全表征人类活动数据中的行为的变化,大约一半的实际数据测试用例,精度为94%和信息变化低。与HDP-HMM相比,我们的方法为标准隐藏马尔可夫模型更新规则提供了简单的替换,允许使用标准期望最大化(EM)算法来学习。

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