- Online Minimum Spanning Trees with Weight Predictions.
- Magnus Berg, Joan Boyar, Lene M. Favrholdt, and Kim S. Larsen.
In 18th International Algorithms and Data Structures Symposium (WADS), volume 14079 of Lecture Notes in Computer Science, pages 136-148. Springer, 2023.
We consider the minimum spanning tree problem with predictions,
using the weight-arrival model, i.e., the graph is given, together
with predictions for the weights of all edges. Then the actual
weights arrive one at a time and an irrevocable decision must be
made regarding whether or not the edge should be included into the
spanning tree.
In order to assess the quality of our algorithms, we
define an appropriate error measure and analyze the performance of
the algorithms as a function of the error.
We prove that, according to competitive analysis, the simplest
algorithm, Follow-the-Predictions, is optimal. However,
intuitively, one should be able to do better, and we present a
greedy variant of Follow-the-Predictions. In analyzing that
algorithm, we believe we present the first random order analysis of
a non-trivial online algorithm with predictions, by which we obtain
an algorithmic separation. This may be useful for distinguishing
between algorithms for other problems when Follow-the-Predictions is
optimal according to competitive analysis.
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