This paper studies joint models for selecting correct answer sentences among the top $k$ provided by answer sentence selection (AS2) modules, which are core components of retrieval-based Question Answering (QA) systems. Our work shows that a critical step to effectively exploit an answer set regards modeling the interrelated information between pair of answers. For this purpose, we build a three-way multi-classifier, which decides if an answer supports, refutes, or is neutral with respect to another one. More specifically, our neural architecture integrates a state-of-the-art AS2 model with the multi-classifier, and a joint layer connecting all components. We tested our models on WikiQA, TREC-QA, and a real-world dataset. The results show that our models obtain the new state of the art in AS2.
翻译:本文研究在答案选择模块(AS2)提供的顶级美元中选择正确答案句数的联合模式,这是基于检索的问答(QA)系统的核心组成部分。我们的工作表明,一个有效利用答案集的关键步骤是模拟对答之间相互关联的信息。为此,我们建立一个三向多分类化系统,它决定答案是否支持、否定或中性。更具体地说,我们的神经结构将一个最新的AS2模型与多级化器结合起来,并结合一个连接所有组成部分的组合层。我们在WikiQA、TREC-QA和真实世界数据集上测试了我们的模型。结果显示,我们的模型在AS2中获得了新的艺术状态。