基于神经语句匹配的生物医学问答文档检索。

Jiho Noh, Ramakanth Kavuluru
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引用次数: 3

摘要

文档检索(DR)是端到端问答(QA)系统中的一个重要组成部分,在该系统中,为格式良好的问题寻求特定的答案。即使没有更复杂的自然语言处理组件来从检索到的文档中提取准确的答案,QA场景中的DR本身也很有用。后一步可以像在传统搜索引擎中一样由人类简单地完成,只要检索到的文档包含答案。在本文中,我们利用通过BioASQ端到端QA共享任务系列提供的数据集,构建了一个有效的生物医学DR系统,该系统依赖于BioASQ训练数据集中的相关答案片段。我们方法的核心是问答句匹配神经网络,该网络以匹配分数的形式学习句子与输入问题的相关性。除了这种匹配分数特征外,我们还利用了两个辅助特征来对文档相关性进行评分:文档发表的期刊名称,以及连接问题中提到的实体的候选答案句子中是否存在语义关系(主谓宾语三元组)。我们使用这三个额外的特征,通过自适应随机研究和其他学习排序方法进行加权,对基线序列依赖性模型得分进行重新排序。我们的全系统在2018年BioASQ任务B(QA)的最后一批A阶段(DR)中排名第二。我们的消融实验强调了神经匹配网络组件在整个系统中的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Document Retrieval for Biomedical Question Answering with Neural Sentence Matching.

Document Retrieval for Biomedical Question Answering with Neural Sentence Matching.

Document retrieval (DR) forms an important component in end-to-end question-answering (QA) systems where particular answers are sought for well-formed questions. DR in the QA scenario is also useful by itself even without a more involved natural language processing component to extract exact answers from the retrieved documents. This latter step may simply be done by humans like in traditional search engines granted the retrieved documents contain the answer. In this paper, we take advantage of datasets made available through the BioASQ end-to-end QA shared task series and build an effective biomedical DR system that relies on relevant answer snippets in the BioASQ training datasets. At the core of our approach is a question-answer sentence matching neural network that learns a measure of relevance of a sentence to an input question in the form of a matching score. In addition to this matching score feature, we also exploit two auxiliary features for scoring document relevance: the name of the journal in which a document is published and the presence/absence of semantic relations (subject-predicate-object triples) in a candidate answer sentence connecting entities mentioned in the question. We rerank our baseline sequential dependence model scores using these three additional features weighted via adaptive random research and other learning-to-rank methods. Our full system placed 2nd in the final batch of Phase A (DR) of task B (QA) in BioASQ 2018. Our ablation experiments highlight the significance of the neural matching network component in the full system.

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