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Flow Motifs in Interaction Networks

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abstract

Many real-world phenomena are best represented as interaction networks with dynamic structures (e.g., transaction networks, social networks, traffic networks). Interaction networks capture flow of data which is transferred between their vertices along a timeline. Analyzing such networks is crucial toward comprehend- ing processes in them. A typical analysis task is the finding of motifs, which are small subgraph patterns that repeat themselves in the network. In this paper, we introduce network flow motifs, a novel type of motifs that model significant flow transfer among a set of vertices within a constrained time window. We design an algorithm for identifying flow motif instances in a large graph. Our algorithm can be easily adapted to find the top-k instances of maximal flow. In addition, we design a dynamic programming module that finds the instance with the maximum flow. We evaluate the performance of the algorithm on three real datasets and identify flow motifs which are significant for these graphs. Our results show that our algorithm is scalable and that the real networks indeed include interesting motifs, which appear much more frequently than in randomly generated networks having similar characteristics.

fields

cs.DB 1

years

2026 1

verdicts

UNVERDICTED 1

representative citing papers

Toward Temporal Attribution Analytics in Dataflows

cs.DB · 2026-01-08 · unverdicted · novelty 7.0

Temporal attribution is defined as a new lightweight provenance method using Temporal Interaction Networks to enable time-focused quantitative analysis of dataflows without tuple-level metadata.

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Showing 1 of 1 citing paper.

  • Toward Temporal Attribution Analytics in Dataflows cs.DB · 2026-01-08 · unverdicted · none · ref 34 · internal anchor

    Temporal attribution is defined as a new lightweight provenance method using Temporal Interaction Networks to enable time-focused quantitative analysis of dataflows without tuple-level metadata.