TY - GEN
T1 - Sub-optimal Recall in Visual Cluster Retrieval: When Clusters Look Like Bridges
AU - Jacomy, Mathieu
AU - Ficozzi, Matilde
AU - Munk, Anders K.
PY - 2024
Y1 - 2024
N2 - Force-directed node placement algorithms, a popular technique to visualise networks, are known to optimize “cluster separability”: when sets of densely connected nodes get represented as well-separated groups of dots. Using these techniques leads us to conceive networks as sets of clusters connected by bridges. This is also how we tend to think of the “community structure” model embedded in clustering techniques like modularity maximization. Yet this mental model has flaws. We specifically address the notion that clusters (“communities”) necessarily look like groups of dots, through the mediation of a node placement algorithm. Although often true, we provide a reproducible counterexample: topological clusters that look like bridges. First, we present an empirical case that we encountered in a real world situation, while mapping the academic landscape of AI and algorithms. Second, we show how to generate a network of arbitrary size where a cluster looks like a bridge. In conclusion, we open a discussion about layout algorithms as a visual mediation of a network’s community structure. We contend that when it comes to the accuracy of retrieving clusters visually, node placement algorithms have an imperfect recall despite an excellent precision.
AB - Force-directed node placement algorithms, a popular technique to visualise networks, are known to optimize “cluster separability”: when sets of densely connected nodes get represented as well-separated groups of dots. Using these techniques leads us to conceive networks as sets of clusters connected by bridges. This is also how we tend to think of the “community structure” model embedded in clustering techniques like modularity maximization. Yet this mental model has flaws. We specifically address the notion that clusters (“communities”) necessarily look like groups of dots, through the mediation of a node placement algorithm. Although often true, we provide a reproducible counterexample: topological clusters that look like bridges. First, we present an empirical case that we encountered in a real world situation, while mapping the academic landscape of AI and algorithms. Second, we show how to generate a network of arbitrary size where a cluster looks like a bridge. In conclusion, we open a discussion about layout algorithms as a visual mediation of a network’s community structure. We contend that when it comes to the accuracy of retrieving clusters visually, node placement algorithms have an imperfect recall despite an excellent precision.
KW - Community detection
KW - Graph drawing
KW - Human-centered computing
KW - Network visualization
KW - Visual cluster retrieval
KW - Visual network analysis
M3 - Article in proceedings
VL - 3834
T3 - CEUR Workshop Proceedings
SP - 1075
EP - 1085
BT - Proceeding of the 2024 Computational Humanities Research Conference
ER -