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Conference papers

Mining Contextual Rules to Predict Asbestos in Buildings

Abstract : In the context of the work conducted at CSTB (French Scientific and Technical Center for Building), the need for a tool providing assistance in the identification of asbestos-containing materials in buildings was identified. To this end, we have developed an approach, named CRA-Miner, that mines logical rules from a knowledge graph that describes buildings and asbestos diagnoses. Since the specific product used is not defined, CRA-Miner considers temporal data, product types, and contextual information to find a set of candidate rules that maximizes the confidence. These rules can then be used to identify building elements that may contain asbestos and those that are asbestos-free. The experiments conducted on an RDF graph provided by the CSTB show that the proposed approach is promising and a satisfactory accuracy can be obtained.
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Conference papers
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https://hal-cnam.archives-ouvertes.fr/hal-03722804
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Submitted on : Wednesday, July 13, 2022 - 3:56:09 PM
Last modification on : Friday, August 5, 2022 - 2:54:00 PM

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Thamer Mecharnia, Nathalie Pernelle, Celine Rouveirol, Fayçal Hamdi, Lydia Chibout Khelifa. Mining Contextual Rules to Predict Asbestos in Buildings. Graph-Based Representation and Reasoning, Sep 2021, En ligne, France. pp.170-184, ⟨10.1007/978-3-030-86982-3_13⟩. ⟨hal-03722804⟩

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