The author proposes an innovative approach, IPED, for relational triple extraction using an implicit perspective and a block-denoising diffusion model to overcome challenges in explicit tagging methods. Experimental results show superior performance and efficiency compared to state-of-the-art models.
IPED proposes an innovative approach for relational triple extraction using an implicit perspective and denoising diffusion model, achieving state-of-the-art performance and efficiency.
A bi-consolidating model is proposed to simultaneously reinforce the local and global semantic features relevant to each relational triple, which is effective for extracting overlapping relational triples from sentences.
A model collaboration framework that integrates a small evaluation model with large language models to improve the recall of relational triple extraction, especially from complex sentences containing multiple triples.
A novel region-based table filling method that exploits local spatial dependencies of relational triples to improve entity pair boundary detection and relational triple extraction.