Visualization of Knowledge Graphs with Embeddings: an Essay on Recent Trends and Methods
- URL: http://arxiv.org/abs/2412.05289v1
- Date: Thu, 21 Nov 2024 16:32:27 GMT
- Title: Visualization of Knowledge Graphs with Embeddings: an Essay on Recent Trends and Methods
- Authors: Davide Riva, Cristina Rossetti,
- Abstract summary: We present an overview of the current state of visualization techniques and frameworks for Knowledge Graphs.
The challenges in visualizing Knowledge Graphs include the need for intuitive and modular interfaces, performance in handling big data, and difficulties for users in understanding and using query languages.
In the context of Knowledge Graph Embeddings, we divide the approaches that use embeddings to facilitate exploration of Knowledge Graphs from those that aim at the explanation of the embeddings themselves.
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- Abstract: In this essay we discuss the recent trends in visual analysis and exploration of Knowledge Graphs, particularly in conjunction with Knowledge Graph Embedding techniques. We present an overview of the current state of visualization techniques and frameworks for KGs, in relation to four identified challenges. The challenges in visualizing Knowledge Graphs include the need for intuitive and modular interfaces, performance in handling big data, and difficulties for users in understanding and using query languages. We find frameworks that generally satisfy the intuitive UI, performance, and query support requirements, but few satisfying the modularity requirement. In the context of Knowledge Graph Embeddings, we divide the approaches that use embeddings to facilitate exploration of Knowledge Graphs from those that aim at the explanation of the embeddings themselves. We find significant differences between the two perspectives. Finally, we highlight some possible directions for future work, including diffusion of the unmet requirements, implementation of new visual features, and experimentation with relation visualization as a peculiar element of Knowledge Graphs.
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