We target on the document-level relation extraction in an end-to-end setting, where the model needs to jointly perform mention extraction, coreference resolution (COREF) and relation extraction (RE) at once, and gets evaluated in an entity-centric way. Especially, we address the two-way interaction between COREF and RE that has not been the focus by previous work, and propose to introduce explicit interaction namely Graph Compatibility (GC) that is specifically designed to leverage task characteristics, bridging decisions of two tasks for direct task interference. Our experiments are conducted on DocRED and DWIE; in addition to GC, we implement and compare different multi-task settings commonly adopted in previous work, including pipeline, shared encoders, graph propagation, to examine the effectiveness of different interactions. The result shows that GC achieves the best performance by up to 2.3/5.1 F1 improvement over the baseline.
翻译:我们的目标是在文件级关系提取的端到端设置中,模型需要同时联合进行提及提取、参照分辨率和关系提取(RE),并以实体为中心的方式进行评估。特别是,我们处理COREF和RE之间的双向互动,这以前的工作没有重点,我们建议引入明确的互动,即专为利用任务特点而设计的相容图(GC),将两项任务的决定与直接任务干扰相衔接。我们在DocRED和DWIE上进行了实验;除了GC之外,我们还实施和比较以往工作中通常采用的不同多任务设置,包括管道、共享的编码器、图示传播,以审查不同互动的有效性。结果显示,GC取得最佳业绩的方式是改进基线,达到2.3/5.1 F1。