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Graph-based Semi-Supervised & Active Learning for Edge Flows

About

We present a graph-based semi-supervised learning (SSL) method for learning edge flows defined on a graph. Specifically, given flow measurements on a subset of edges, we want to predict the flows on the remaining edges. To this end, we develop a computational framework that imposes certain constraints on the overall flows, such as (approximate) flow conservation. These constraints render our approach different from classical graph-based SSL for vertex labels, which posits that tightly connected nodes share similar labels and leverages the graph structure accordingly to extrapolate from a few vertex labels to the unlabeled vertices. We derive bounds for our method's reconstruction error and demonstrate its strong performance on synthetic and real-world flow networks from transportation, physical infrastructure, and the Web. Furthermore, we provide two active learning algorithms for selecting informative edges on which to measure flow, which has applications for optimal sensor deployment. The first strategy selects edges to minimize the reconstruction error bound and works well on flows that are approximately divergence-free. The second approach clusters the graph and selects bottleneck edges that cross cluster-boundaries, which works well on flows with global trends.

Junteng Jia, Michael T. Schaub, Santiago Segarra, Austin R. Benson• 2019

Related benchmarks

TaskDatasetResultRank
Edge flow predictionPOWER (test)
RMSE0.036
10
Edge flow predictionbike (test)
RMSE0.039
10
Edge flow predictionTraffic (test)
RMSE0.071
10
Physical Consistency AnalysisTraffic (test)
Final Divergence Residual2.94
5
Physical Consistency AnalysisPOWER (test)
Final Divergence Residual2.45
5
Physical Consistency Analysisbike (test)
Final Divergence Residual2.4
5
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