Multi-view consistency for multi-hop knowledge base question answering

Xin Wang
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Abstract

The task of Knowledge Base Question Answering (KBQA) is to answer a question in natural language over a Knowledge Base. And multi-hop KBQA aims to reason over multiple hops of facts in KB to answer a complex question. Step-wised reasoning has been an important schema to solve multi-hop KBQA. But previous approaches suffer from lacking reasoning paths, causing models may answer in an incorrect way. To address the issue, we present a novel approach to enhance the KBQA model by leveraging consistency between different views of the data, with few intermediate-relation-labeled data. Previous retrieval-based methods proceeded by utilizing the data view of (question, intermediate entities, answer entities). In our method, we introduce the data view of (question, intermediate relations) and enhance the KBQA model through the consistency of different data views. Concretely, we first implement a question-to-intermediate relations(Q2R) model to obtain intermediate relations’ distributions. By utilizing a pretrained text generation model, it performs well using a small part of relation-labeled data. Then we devise a map function to map distributions of intermediate entities to distributions of intermediate. Finally, a constraint that metrics the consistency between the intermediate path distributions obtained from the Q2R model and the original KBQA model is constructed to enhance the KBQA model. Experiments over three datasets of multi-hop KBQA are conducted, and the results demonstrate the effectiveness of our method.
多跳知识库问答的多视图一致性
知识库问答(KBQA)的任务是在知识库上用自然语言回答问题。而多跳KBQA旨在对知识库中的多个跳的事实进行推理,以回答一个复杂的问题。逐步推理是解决多跳KBQA问题的重要模式。但以前的方法缺乏推理路径,导致模型可能以不正确的方式回答。为了解决这个问题,我们提出了一种新的方法,通过利用数据的不同视图之间的一致性来增强KBQA模型,并且使用很少的中间关系标记数据。以前基于检索的方法利用(问题、中间实体、答案实体)的数据视图继续进行。在该方法中,我们引入了(问题、中间关系)数据视图,并通过不同数据视图的一致性来增强KBQA模型。具体来说,我们首先实现了一个问题到中间关系(Q2R)模型来获得中间关系的分布。通过使用预训练的文本生成模型,它在使用一小部分关系标记数据时表现良好。然后,我们设计了一个映射函数,将中间实体的分布映射到中间实体的分布。最后,构造了一个约束来衡量从Q2R模型得到的中间路径分布与原KBQA模型之间的一致性,以增强KBQA模型。在三个多跳KBQA数据集上进行了实验,结果证明了该方法的有效性。
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