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Building Models of Ecological Dynamics Using HMM Based Temporal Data Clustering - A Preliminary Study

机译:基于HMM的时间数据聚类构建生态动态模型 - 初步研究

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摘要

This paper discusses a temporal data clustering system that is based on the Hidden Markov Model(HMM) methodology. The proposed methodology improves upon existing HMM clustering methods in two ways. First, an explicit HMM model size selection procedure is incorporated into the clustering process, i.e., the sizes of the individual HMMs are dynamically determined for each cluster. This improves the interpretability of cluster models, and the quality of the final clustering partition results. Secondly, a partition selection method is developed to ensure an objective, data-driven selection of the number of clusters in the partition. The result is a heuristic sequential search control algorithm that is computationally feasible. Experiments with artificially generated data and real world ecology data show that: (i) the HMM model size selection algorithm is effective in re-discovering the structure of the generating HMMs, (ii) the HMM clustering with model size selection significantly outperforms HMM clustering using uniform HMM model sizes for re-discovering clustering partition structures, (iii) it is able to produce interpretable and ``interesting'' models for real world data.
机译:本文讨论了一个基于隐马尔可夫模型(HMM)方法的时间数据聚类系统。所提出的方法可以通过两种方式提高现有的HMM聚类方法。首先,将显式的HMM模型大小选择过程结合到聚类过程中,即,为每个群集动态确定各个HMM的大小。这提高了群集模型的可解释性,以及最终聚类分区结果的质量。其次,开发了分区选择方法以确保分区中的簇数的目标,数据驱动的选择。结果是一种启发式顺序搜索控制算法,其是计算可行的。具有人工生成的数据和现实世界生态数据的实验表明:(i)HMM模型尺寸选择算法在重新发现生成HMMS的结构方面是有效的,(ii)与模型尺寸选择的HMM聚类显着优于使用HMM聚类用于重新发现聚类分区结构的统一嗯模型大小,(iii)它能够为现实世界数据提供可解释和“有趣”模型。

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