Temporal Connectivity: Coping with Foreseen and Unforeseen Delays
January 13, 2022 Β· Declared Dead Β· π Symposium on Algorithmic Foundations of Dynamic Networks
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Authors
Eugen FΓΌchsle, Hendrik Molter, Rolf Niedermeier, Malte Renken
arXiv ID
2201.05011
Category
cs.DS: Data Structures & Algorithms
Citations
12
Venue
Symposium on Algorithmic Foundations of Dynamic Networks
Last Checked
4 months ago
Abstract
Consider planning a trip in a train network. In contrast to, say, a road network, the edges are temporal, i.e., they are only available at certain times. Another important difficulty is that trains, unfortunately, sometimes get delayed. This is especially bad if it causes one to miss subsequent trains. The best way to prepare against this is to have a connection that is robust to some number of (small) delays. An important factor in determining the robustness of a connection is how far in advance delays are announced. We give polynomial-time algorithms for the two extreme cases: delays known before departure and delays occurring without prior warning (the latter leading to a two-player game scenario). Interestingly, in the latter case, we show that the problem becomes PSPACE-complete if the itinerary is demanded to be a path.
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