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Detecting Vicious Cycles in Urban Problem Knowledge Graph using Inference Rules
Author(s) -
Shusaku Egami,
Takahiro Kawamura,
Kouji Kozaki,
Akihiko Ohsuga
Publication year - 2021
Publication title -
data intelligence
Language(s) - English
Resource type - Journals
eISSN - 2096-7004
pISSN - 2641-435X
DOI - 10.1162/dint_a_00113
Subject(s) - inference , computer science , causality (physics) , graph , sparql , order (exchange) , theoretical computer science , artificial intelligence , rdf , business , semantic web , physics , finance , quantum mechanics
Urban areas have many problems, including homelessness, graffiti, and littering. These problems are influenced by various factors and are linked to each other; thus, an understanding of the problem structure is required in order to detect and solve the root problems that generate vicious cycles. Moreover, before implementing action plans to solve these problems, local governments need to estimate cost-effectiveness when the plans are carried out. Therefore, this paper proposed constructing an urban problem knowledge graph that would include urban problems' causality and the related cost information in budget sheets. In addition, this paper proposed a method for detecting vicious cycles of urban problems using SPARQL queries with inference rules from the knowledge graph. Finally, several root problems that led to vicious cycles were detected. Urban-problem experts evaluated the extracted causal relations.

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