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MINING TIME SERIES DATA BASED UPON CLOUD MODEL

机译:基于云模型的采矿时间序列数据

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In recent years many attempts have been made to index, cluster, classify and mine prediction rules from increasing massive sources of spatial time-series data. In this paper, a novel approach of mining time-series data is proposed based on cloud model, which described by numerical characteristics. Firstly, the cloud model theory is introduced into the time series data mining. Time-series data can be described by the three numerical characteristics as their features: expectation, entropy and hyper-entropy. Secondly, the features of time-series data can be generated through the backward cloud generator and regarded as time-series numerical characteristics based on cloud model. In accordance with such numerical characteristics as sample sets, the prediction rules are obtained by curve fitting. Thirdly, the model of mining time-series data is presented, mainly including the numerical characteristics and prediction rule mining. Lastly, a case study is carried out for the prediction of satellite image. The results show that the model is feasible and can be easily applied to other forecasting.
机译:近年来,已经从增加了索引,群集,分类和矿井预测规则增加了许多尝试,从而提高了空间时间序列数据的大规模来源。本文基于数值特征描述的云模型提出了一种新的采矿时间序列数据方法。首先,云模型理论被引入时间序列数据挖掘。时间序列数据可以通过三个数值特征描述为其特征:期望,熵和超熵。其次,可以通过向后云发生器生成时间序列数据的特征,并被视为基于云模型的时间序列数值特征。根据样本集的这种数值特征,通过曲线配件获得预测规则。第三,提出了采矿时间序列数据的模型,主要包括数值特征和预测规则挖掘。最后,对卫星图像预测进行了案例研究。结果表明,该模型是可行的,可以很容易地应用于其他预测。

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