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DEFINING DYNAMIC SPATIO-TEMPORAL NEIGHBOURHOOD OF NETWORK DATA

机译:定义网络数据的动态时空邻域

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To improve the accuracy and efficiency of space-time analysis, spatio-temporal neighbourhoods (STNs) should be investigated and analysed in the classification, prediction and outlier detection of space-time data. So far most researches in space-time analysis use either spatial or temporal neighbourhoods, without considering both time and space at the same time. Moreover, the neighbourhoods are mostly defined intuitively without quantitative measurement. Furthermore, STNs of network data are less investigated compared with other types of data due to the complexity of network structure. This paper investigates the existing approaches of defining STNs and proposes a quantitative method to define STNs of network data in which the topology of the network does not change but the characteristics of the edges (i.e. thematic attribute values) change with time which requires dynamic STNs adapted to the properties of the network. The proposed method is tested by using London traffic network data.
机译:为了提高时空分析的准确性和效率,应在空时数据的分类,预测和异常检测中调查和分析时空邻域(STN)。 到目前为止,在时空分析中大多数研究都使用空间或颞邻域,而不考虑同时的时间和空间。 此外,邻域主要定义直观,没有定量测量。 此外,由于网络结构的复杂性,与其他类型的数据相比,网络数据的STN不太调查。 本文研究了定义STN的现有方法,并提出了定量方法来定义网络数据的STN,其中网络的拓扑不会改变,但边缘的特性(即主题属性值)随着需要动态Stn的时间而改变 到网络的属性。 通过使用伦敦交通网络数据来测试所提出的方法。

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