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Modified Hierarchical Clustering Algorithm for Time Series Data

机译:修改时间序列数据的分层聚类算法

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Time-Series clustering is used to attain deep knowledge of the mechanism that generate the time-series and speculate the prospective values of the given time-series. Time-Series clustering is shape-level if it is carried out on the many individual time-series or structure-level if it works on single long-length time-series. Depending on whether Time-series clustering is working directly on unprocessed data (frequency or time domain), or indirectly with the features extracted or model built from the unprocessed data, it is categorized into three groups. The proposed work comes under the raw data based approach. In this work, DTW is utilized as a distance/similarity count in the hierarchical clustering algorithm with inter/intra-cluster-distance-based-swap. The performance of the proposed work is evaluated by using Clustering Validity indices.
机译:时间序列聚类用于达到生成时间序列的机制的深度知识,并推测给定时间序列的前瞻性值。如果它在单长长度时间序列上工作,则时间序列聚类是在许多单个时序或结构级别进行的形状级别。根据时间序列聚类是否直接在未处理的数据(频率或时域)上工作,或间接与从未处理数据构建的提取或模型间接地工作,它被分为三组。拟议的工作受到基于原始数据的方法。在该工作中,DTW用作具有基于间/帧内间距离距离的分层聚类算法中的距离/相似度计数。通过使用聚类有效性指数来评估所提出的工作的性能。

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