Multi-hop Knowledge Base Question Answering (KBQA) aims to find the answer entities that are multiple hops away in the Knowledge Base (KB) from the entities in the question. A major challenge is the lack of supervision signals at intermediate steps. Therefore, multi-hop KBQA algorithms can only receive the feedback from the final answer, which makes the learning unstable or ineffective. To address this challenge, we propose a novel teacher-student approach for the multi-hop KBQA task. In our approach, the student network aims to find the correct answer to the query, while the teacher network tries to learn intermediate supervision signals for improving the reasoning capacity of the student network. The major novelty lies in the design of the teacher network, where we utilize both forward and backward reasoning to enhance the learning of intermediate entity distributions. By considering bidirectional reasoning, the teacher network can produce more reliable intermediate supervision signals, which can alleviate the issue of spurious reasoning. Extensive experiments on three benchmark datasets have demonstrated the effectiveness of our approach on the KBQA task.
翻译:多跳知识库问题解答(KBQA)旨在寻找来自问题实体的知识库(KBB)中多重跳跃的答案实体。一个重大挑战是中间步骤缺乏监督信号。因此,多跳KBQA算法只能从最后答案获得反馈,这导致学习不稳定或无效。为了应对这一挑战,我们建议对多跳KBQA的任务采取新的师生研究方法。在我们的方法中,学生网络旨在找到对查询的正确答案,而教师网络则试图学习提高学生网络推理能力的中间监督信号。主要的新颖之处在于教师网络的设计,即我们利用前向和后向推力加强中间实体分布的学习。通过双向推理,教师网络可以产生更可靠的中间监督信号,从而减轻虚伪推理问题。关于三个基准数据集的广泛实验证明了我们在KBQA任务上的方法的有效性。