Smart Cities (Sep 2024)

SemConvTree: Semantic Convolutional Quadtrees for Multi-Scale Event Detection in Smart City

  • Mikhail Andeevich Kovalchuk,
  • Anastasiia Filatova,
  • Aleksei Korneev,
  • Mariia Koreneva,
  • Denis Nasonov,
  • Aleksandr Voskresenskii,
  • Alexander Boukhanovsky

DOI
https://doi.org/10.3390/smartcities7050107
Journal volume & issue
Vol. 7, no. 5
pp. 2763 – 2780

Abstract

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The digital world is increasingly permeating our reality, creating a significant reflection of the processes and activities occurring in smart cities. Such activities include well-known urban events, celebrations, and those with a very local character. These widespread events have a significant influence on shaping the spirit and atmosphere of urban environments. This work presents SemConvTree, an enhanced semantic version of the ConvTree algorithm. It incorporates the semantic component of data through semi-supervised learning of a topic modeling ensemble, which consists of improved models: BERTopic, TSB-ARTM, and SBert-Zero-Shot. We also present an improved event search algorithm based on both statistical evaluations and semantic analysis of posts. This algorithm allows for fine-tuning the mechanism of discovering the required entities with the specified particularity (such as a particular topic). Experimental studies were conducted within the area of New York City. They showed an improvement in the detection of posts devoted to events (about 40% higher f1-score) due to the accurate handling of events of different scales. These results suggest the long-term potential for creating a semantic platform for the analysis and monitoring of urban events in the future.

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