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DIVINE: A Generative Adversarial Imitation Learning Framework for Knowledge Graph Reasoning

机译:DIVINE:知识图推理的生成式对抗模仿学习框架

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Knowledge graphs (KGs) often suffer from sparseness and incompleteness. Knowledge graph reasoning provides a feasible way to address such problems. Recent studies on knowledge graph reasoning have shown that reinforcement learning (RL) based methods can provide state-of-the-art performance. However, existing RL-based methods require numerous trials for path-finding and rely heavily on meticulous reward engineering to fit specific dataset, which is inefficient and laborious to apply to fast-evolving KGs. In this paper, we present DIVINE, a novel plug-and-play framework based on generative adversarial imitation learning for enhancing existing RL-based methods. DIVINE guides the path-finding process, and learns reasoning policies and reward functions self-adaptively through imitating the demonstrations automatically sampled from KGs. Experimental results on two benchmark datasets show that our framework improves the performance of existing RL-based methods without extra reward engineering.
机译:知识图谱(KGs)通常遭受稀疏和不完整的困扰。知识图推理提供了解决此类问题的可行方法。关于知识图推理的最新研究表明,基于强化学习(RL)的方法可以提供最新的性能。但是,现有的基于RL的方法需要进行大量的尝试来寻找路径,并且严重依赖细致的奖励工程来拟合特定的数据集,这对于快速发展的KG而言效率低下且费力。在本文中,我们提出了DIVINE,这是一种基于生成的对抗模仿学习的新型即插即用框架,用于增强现有的基于RL的方法。 DIVINE引导寻路过程,并通过模仿从KG自动采样的演示来自适应地学习推理策略和奖励功能。在两个基准数据集上的实验结果表明,我们的框架无需其他奖励工程就可以提高现有基于RL的方法的性能。

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