4.5 Article

High Influencing Pattern Discovery over Time Series Data

Journal

Publisher

MDPI
DOI: 10.3390/ijgi10100696

Keywords

time series data mining; high influencing pattern; influence propagation; attribute-aware

Funding

  1. National Natural Science Foundation of China [61966036, 61662086, 61762090]
  2. Project of Innovative Research Team of Yunnan Province [2018HC019]

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This study focuses on high influence co-location pattern mining in spatial features, proposing a new concept of proximity and a mining framework to discover meaningful patterns. By utilizing attribute descriptors, attribute weights calculation, and influencing metrics construction, high influencing patterns can be efficiently discovered. Improved algorithms are also proposed to enhance efficiency in pattern mining.
A spatial co-location pattern denotes a subset of spatial features whose instances frequently appear nearby. High influence co-location pattern mining is used to find co-location patterns with high influence in specific aspects. Studies of such pattern mining usually rely on spatial distance for measuring nearness between instances, a method that cannot be applied to an influence propagation process concluded from epidemic dispersal scenarios. To discover meaningful patterns by using fruitful results in this field, we extend existing approaches and propose a mining framework. We first defined a new concept of proximity to depict semantic nearness between instances of distinct features, thus applying a star-shaped materialized model to mine influencing patterns. Then, we designed attribute descriptors to perceive attributes of instances and edges from time series data, and we calculated the attribute weights via an analytic hierarchy process, thereby computing the influence between instances and the influence of features in influencing patterns. Next, we constructed influencing metrics and set a threshold to discover high influencing patterns. Since the metrics do not satisfy the downward closure property, we propose two improved algorithms to boost efficiency. Extensive experiments conducted on real and synthetic datasets verified the effectiveness, efficiency, and scalability of our method.

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