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MemoryPath: A deep reinforcement learning framework for incorporating memory component into knowledge graph reasoning

机译:存储路径:一个深度加强学习框架,用于将内存组件纳入知识图形推理

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Knowledge Graph (KG) is identified as a major area in artificial intelligence, which is used for many real -world applications. The task of knowledge graph reasoning has been widely used and proven to be effective, which aims to find these reasonable paths for various relations to solve the issue of incompleteness in KGs. However, many previous works on KG reasoning, such as path-based or reinforcement learning-based methods, are too reliant on the pre-training, where the paths from the head entity and the target entity must be given to pre-train the model, which would easily lead the model to overfit on the given paths seen in the pre-training. To address this issue, we propose a novel reasoning model named MemoryPath with a deep reinforcement learning framework, which incorporates Long Short Term Memory (LSTM) and graph attention mechanism to form the memory component. The well-designed memory component can get rid of the pre-training so that the model doesn't depend on the given target entity for training. A tailored mechanism of reinforcement learning is presented in this proposed deep reinforcement framework to optimize the training procedure, where two metrics, Mean Selection Rate (MSR) and Mean Alternative Rate (MAR), are defined to quantitatively measure the complexities of the query relations. Meanwhile, three different training mechanisms, Action Dropout, Reward Shaping and Force Forward, are proposed to optimize the training process of the proposed MemoryPath. The proposed MemoryPath is validated on two datasets from FB15K-237 and NELL-995 on different tasks including fact prediction, link prediction and success rate in finding paths. The experimental results demonstrate that the tailored mechanism of reinforcement learning make the MemoryPath achieves state-of-the-art performance comparing with the other models. Also, the qualitative analysis indicates that the MemoryPath can store the learning process and automatically find the promising paths for a reasoning task during the training, and shows the effectiveness of the memory component. (c) 2020 Elsevier B.V. All rights reserved.
机译:知识图(kg)被识别为人工智能的主要区域,用于许多真正的Wore -World应用程序。知识图形推理的任务已被广泛使用和证明是有效的,这旨在为各种关系找到这些合理的路径来解决KGS中不完整性问题。然而,许多以前的kg推理工作,例如基于路径或基于加强学习的方法,在预训练上太依赖,其中必须给出来自头部实体和目标实体的路径以预先培训模型,这将在预训练中看到的给定路径上很容易地引导模型。为了解决这个问题,我们提出了一种名为MemintPath的新推理模型,具有深入的加强学习框架,它包含长的短期内存(LSTM)和图形注意机制来形成存储器组件。精心设计的内存组件可以摆脱预训练,使模型不依赖于给定的目标实体进行培训。在这一提出的深度加强框架中提出了一种定制的强化学习机制,以优化培训过程,其中两个度量,平均选择率(MSR)和均值速率(MAR)被定义为定量测量查询关系的复杂性。同时,提出了三种不同的培训机制,动作辍学,奖励和武力前进,以优化所提出的存储路径的培训过程。所提出的存储路径在FB15K-237和NELL-995上的两个数据集上验证,不同任务包括事实预测,链路预测和查找路径的成功率。实验结果表明,钢筋学习的量身定制机制使得存储路径实现与其他模型相比的最先进的性能。此外,定性分析表明,存储路径可以存储学习过程,并在培训期间自动查找有希望的途径,并显示内存组件的有效性。 (c)2020 Elsevier B.v.保留所有权利。

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