Stepwise Reasoning for Multi-Relation Question Answering over Knowledge Graph with Weak Supervision

Yunqi Qiu, Yuanzhuo Wang, Xiaolong Jin, Kun Zhang
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引用次数: 95

Abstract

Knowledge Graph Question Answering aims to automatically answer natural language questions via well-structured relation information between entities stored in knowledge graphs. When faced with a multi-relation question, existing embedding-based approaches take the whole topic-entity-centric subgraph into account, resulting in high time complexity. Meanwhile, due to the high cost for data annotations, it is impractical to exactly show how to answer a complex question step by step, and only the final answer is labeled, as weak supervision. To address these challenges, this paper proposes a neural method based on reinforcement learning, namely Stepwise Reasoning Network, which formulates multi-relation question answering as a sequential decision problem. The proposed model performs effective path search over the knowledge graph to obtain the answer, and leverages beam search to reduce the number of candidates significantly. Meanwhile, based on the attention mechanism and neural networks, the policy network can enhance the unique impact of different parts of a given question over triple selection. Moreover, to alleviate the delayed and sparse reward problem caused by weak supervision, we propose a potential-based reward shaping strategy, which can accelerate the convergence of the training algorithm and help the model perform better. Extensive experiments conducted over three benchmark datasets well demonstrate the effectiveness of the proposed model, which outperforms the state-of-the-art approaches.
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弱监督下知识图多关系问答的逐步推理
知识图问答旨在通过知识图中存储的实体之间结构良好的关系信息,自动回答自然语言问题。当面对多关系问题时,现有的基于嵌入的方法考虑的是整个以主题实体为中心的子图,导致时间复杂度很高。同时,由于数据标注的成本较高,要准确地展示如何一步一步地回答一个复杂的问题是不现实的,只有最后的答案被标记,是弱监督。为了解决这些问题,本文提出了一种基于强化学习的神经方法,即逐步推理网络,该方法将多关系问题的回答表述为一个顺序决策问题。该模型在知识图上进行有效的路径搜索以获得答案,并利用束搜索显著减少候选个数。同时,基于注意力机制和神经网络,策略网络可以增强给定问题不同部分对三重选择的独特影响。此外,为了缓解弱监督导致的奖励延迟和稀疏问题,我们提出了一种基于电位的奖励塑造策略,该策略可以加速训练算法的收敛,帮助模型更好地执行。在三个基准数据集上进行的大量实验很好地证明了所提出模型的有效性,它优于最先进的方法。
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