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Time Series Piecewise Linear Representation Based on Trend Feature Points

机译:时间序列基于趋势特征点的分段线性表示

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As local maximum and minimum can reflect the trend feature of subsequence, an approach of time series piecewise linear representation based on trend feature point is proposed. The points with large fluctuation can be extracted by judging the variation amplitude of slope. The results of the experiment show that the LMMS algorithm can meet the requirements of different compression ratios, and ensure small fitting error, stable performance, and good adaptability in time series datasets with low volatility. It has nice fitting effect in the volatile datasets under the low compression ratio condition. The relationship between the fitting error of piecewise linear representation algorithm with the whole fluctuation ratio of data and compression ratio is discussed. It can provide a certain reference for time series data mining effectively.
机译:由于局部最大和最小值可以反映子序列的趋势特征,提出了一种基于趋势特征点的时间序列分段线性表示的方法。通过判断斜率的变化幅度,可以提取具有大的​​波动的点。实验结果表明,LMMS算法可以满足不同压缩比的要求,并确保小拟合误差,稳定的性能和具有低波动性的时间序列数据集的良好适应性。在低压缩比条件下,它在挥发性数据集中具有良好的拟合效果。讨论了具有数据和压缩比的整个波动比的分段线性表示算法的拟合误差与压缩比的关系。它可以有效地为时间序列数据挖掘提供一定的参考。

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