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Efficiently Embedding Dynamic Knowledge Graphs
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Table 4: Evaluation results of QA using DKGE 
Table 1: Details of our datasets. 
Figure 5: The AGCN model. The input is initial vertex features and adjacency information of the given subgraph. Hidden layers conduct convolutional operations to generate new vertex features. The attention layer computes the weight of each vertex. The output contextual subgraph embedding is the weighted sum of all vertices’ features. 
Figure 7: The comparison results on efficiency. 
Figure 8: The robustness analysis for repeated online learning. ![Figure 1: (a) A KG G does not have the relation r1 between entities e1 and e2 at time step T , and we add a triple (e1, r1, e2) at time step T + 1. (b) An illustration of using puTransE [31] on G.](/figures/figure1-1-4mpag6wo0sk5.png)
Figure 1: (a) A KG G does not have the relation r1 between entities e1 and e2 at time step T , and we add a triple (e1, r1, e2) at time step T + 1. (b) An illustration of using puTransE [31] on G.
Citations
Generative Transformer with Knowledge-Guided Decoding for Academic Knowledge Graph Completion
TL;DR: In this article , a generative transformer with knowledge-guided decoding for academic knowledge graph completion is proposed, which leverages relevant knowledge in the training corpus as guidance for help, and the experimental results show that the proposed approach can achieve performance gains of 30 units of the MRR score over the baselines.
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TL;DR: This study proposes a holistic approach to Automatic Compliance Checking in Building Information Modelling, integrating Finite Element Analysis and Semantic Web-based systems, utilizing a top-level ontology (Building Compliance Ontology) to model building regulations and check structural engineering design codes.
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KSGAN: Knowledge-aware subgraph attention network for scholarly community recommendation
TL;DR: This paper proposes KSGAN, a knowledge-aware subgraph attention network for scholarly community recommendation, leveraging a scholarly knowledge graph to capture rich information and relational patterns, and outperforming state-of-the-art baselines on two real-world datasets.
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On a Generalized Framework for Time-Aware Knowledge Graphs
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- 20 Jul 2022
TL;DR: This paper aims to provide a short but well-defined overview of time-aware knowledge graph extensions and thus faciliate future research in this area as well as provide a distinction needs to be made between the validity period and the traceability of facts as objectives ofTime-related knowledge graph Extensions.
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A Survey on Embedding Dynamic Graphs
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