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MemoryPath: A Deep Reinforcement Learning Framework for Incorporating Memory Component into Knowledge Graph Reasoning
MemoryPath: یک چارچوب یادگیری تقویتی عمیق برای ترکیب مولفه حافظه در استدلال نمودار دانش-2020 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 rein-
forcement 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 mea-
sure 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 automati-
cally find the promising paths for a reasoning task during the training, and shows the effectiveness of
the memory component. Keywords: Knowledge Graph Reasoning | Memory Component | Deep Reinforcement Learning | Link Prediction | Attentional Path | Force Forward |
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