Scalable graph exploration and visualization: Sensemaking challenges and opportunities

Big Data and Smart Computing(2015)

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摘要
Making sense of large graph datasets is a fundamental and challenging process that advances science, education and technology. We survey research on graph exploration and visualization approaches aimed at addressing this challenge. Different from existing surveys, our investigation highlights approaches that have strong potential in handling large graphs, algorithmically, visually, or interactively; we also explicitly connect relevant works from multiple research fields - data mining, machine learning, human-computer ineraction, information visualization, information retrieval, and recommender systems - to underline their parallel and complementary contributions to graph sensemaking. We ground our discussion in sensemaking research; we propose a new graph sensemaking hierarchy that categorizes tools and techniques based on how they operate on the graph data (e.g., local vs global). We summarize and compare their strengths and weaknesses, and highlight open challenges. We conclude with future research directions for graph sensemaking.
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关键词
data visualisation,graph theory,mathematics computing,data mining,graph datasets,graph handling,graph sensemaking hierarchy,human-computer ineraction,information retrieval,information visualization,machine learning,recommender systems,scalable graph exploration approach,scalable graph visualization approach,scalability,visualization,pattern matching,algorithm design and analysis,data visualization
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