核心概念
Tie strength, which captures the intensity of a relationship between two individuals, is associated with the position of the tie in the broader social structure. This work introduces three structural measures based on algebraic topology to characterize the network context and influence of an edge, and shows that these measures outperform standard network proxies in estimating tie strength. The measures also explain a puzzle wherein certain bridging ties are surprisingly strong.
摘要
The content explores the relationship between tie strength and network structure, with a focus on modeling social structure using higher-order networks. The key points are:
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The authors introduce three structural measures based on algebraic topology (gradient, curl, and harmonic components) to characterize the network position of an edge. These measures outperform standard network baselines in estimating tie strength across 15 large-scale datasets.
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The gradient component is related to an edge's ability to disconnect the graph, the curl component is related to an edge's proximity to higher-order interactions, and the harmonic component is related to an edge's closeness to topological obstructions (holes) in the network. These theoretical characterizations help explain a puzzle in the literature where certain bridging ties can be surprisingly strong.
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The authors analyze a single centrality measure, Edge PageRank, which combines the three initial measures and is highly inversely related to tie strength. This measure can be interpreted through an information exchange process, highlighting ties that have access to useful information. This reconciles Granovetter's original intuition that weak ties are in a good structural position to transfer information.
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Overall, the results suggest the importance of incorporating higher-order interactions in social network analysis, as this additional data captures distinct sociological insights compared to traditional models.
统计
"Tie strength is highly inversely correlated with the Edge PageRank measure, with a correlation coefficient of -0.291 (p < 10^-16) across all edges in all datasets."
"The gradient component of an edge's indicator vector increases with the tie range of the edge, while the curl component is only non-trivial for edges with a tie range of 2."
"Edges with a finite tie range of at least 3 have a non-zero harmonic component of their indicator vector."
引用
"Tie strength, which captures the intensity of a relationship between two individuals and can include dimensions such as frequency of interaction, intimacy, emotional intensity, and reciprocity, has been shown at length to impact substantive outcomes such as job outcomes, creativity, political success, and knowledge transfer in organizations."
"Granovetter's original intuition still holds: our interpretation of the Edge PageRank measure and experiments on tie strength reveal that weak ties are often in a good structural position to transfer useful information. However, because Edge PageRank does not emphasize long ties, this suggests an amendment to Granovetter's theory in that while long ties may provide novel information, the utility of this information may decrease as tie range increases."