Medical Relation Extraction (MRE) task aims to extract relations between entities in medical texts. Traditional relation extraction methods achieve impressive success by exploring the syntactic information, e.g., dependency tree. However, the quality of the 1-best dependency tree for medical texts produced by an out-of-domain parser is relatively limited so that the performance of medical relation extraction method may degenerate. To this end, we propose a method to jointly model semantic and syntactic information from medical texts based on causal explanation theory. We generate dependency forests consisting of the semantic-embedded 1-best dependency tree. Then, a task-specific causal explainer is adopted to prune the dependency forests, which are further fed into a designed graph convolutional network to learn the corresponding representation for downstream task. Empirically, the various comparisons on benchmark medical datasets demonstrate the effectiveness of our model.
翻译:传统关系提取方法通过探索合成信息,例如依赖树,取得了令人印象深刻的成功;然而,由外部分析师制作的医学文本的一棵最佳依赖树的质量相对有限,因此医学关系提取方法的性能可能退化;为此,我们提议一种方法,根据因果关系解释理论,从医学文本中联合模拟语义和合成信息;我们产生由语义组成的最佳依赖树组成的依赖性森林;然后,对依赖性森林采用针对具体任务的因果解释,进一步输入设计图象革命网络,以了解下游任务的相应代表性;同时,关于基准医疗数据集的各种比较表明我们模型的有效性。