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Semantic text-pairing for relevant provision identification in construction specification reviews

Seonghyeon Moon, Gitaek Lee, Seokho Chi

2021Automation in Construction34 citationsDOIOpen Access PDF

Abstract

Field engineers should manually analyze the site appropriateness of every provision in a construction specification by comparing the requirements against the national standards. To support the manual review involving multiple documents, the authors proposed a semantic text-pairing method that identified relevant provisions from different specifications considering the textual properties. First, 2527 provisions were prepared from two construction specifications of highway projects undertaken in Qatar and five national standards from Australia, the United Kingdom, and the United States. Second, the Doc2Vec model trained the provisions and learned the textual features based on Paragraph Vector with Distributed Memory. Third, the provision relevance was estimated by normalizing cosine similarities between provision vectors generated by the Doc2Vec model. The experiments returned promising results, with an average matching accuracy of 84.40%. The results contribute to the specification review by automatically identifying the most relevant provisions and making the process objective and robust to human errors.

Topics & Concepts

ParagraphComputer scienceIdentification (biology)Process (computing)Relevance (law)Matching (statistics)Field (mathematics)Information retrievalCosine similaritySoftware engineeringWorld Wide WebArtificial intelligenceCluster analysisPolitical sciencePure mathematicsMathematicsOperating systemBiologyLawStatisticsBotanyNatural Language Processing TechniquesSoftware Engineering Researchlinguistics and terminology studies