Joint Extraction of Multiple Relations and Entities from Building Code Clauses
Joint Extraction of Multiple Relations and Entities from Building Code Clauses
Blog Article
The extraction of regulatory information is a prerequisite for automated code compliance checking.Although a number of machine learning models have been explored for extracting computer-understandable engineering constraints from code clauses written in natural language, most are inadequate to address the complexity of the semantic relations between named entities.In particular, the existence of two or more overlapping relations involving the same entity greatly exacerbates the difficulty of information extraction.In this paper, a joint extraction model is here proposed to extract the relations among entities in the form of triplets.
In the proposed model, a hybrid royal nomadic 5413 rug deep learning algorithm combined with a decomposition strategy is applied.First, all candidate subject entities are identified, and then, the associated object entities and predicate relations are simultaneously detected.In this way, multiple relations, especially overlapping relations, can be extracted.Furthermore, nonrelated pairs are excluded through the judicious recognition of subject entities.
Moreover, a collection of domain-specific entity and relation types is investigated for model implementation.The experimental results indicate that the proposed model is promising for extracting multiple relations and entities from building codes.