2023
DOI: 10.1109/access.2023.3316602
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Top-k Distance Queries on Large Time-Evolving Graphs

Andrea D’ascenzo,
Mattia D’emidio

Abstract: Fast extraction of top-k distances from graph data is a primitive of paramount importance in the fields of data mining, network analytics and machine learning, where ranked distances are exploited for several purposes (e.g. link prediction or network classification). While investigation on computational methods to address this retrieval task for regularly sized, static inputs has been extensive, much less is known when managed graphs are massive, i.e. having millions of vertices/edges, and time-evolving, i.e. … Show more

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