Active Learning of Multiple Source Multiple Destination Topologies
Pegah Sattari, Maciej Kurant, Animashree Anandkumar, Athina, Markopoulou, Michael Rabbat

TL;DR
This paper addresses the problem of efficiently inferring the topology of a network with multiple sources and receivers by proposing active learning algorithms that optimize the number of queries needed to accurately identify the network structure.
Contribution
The paper introduces two greedy algorithms for merging 2-by-2 network components with a given 1-by-N topology, improving efficiency in network topology inference.
Findings
Both algorithms correctly identify the 2-by-N topology.
The Receiver Elimination Algorithm (REA) requires only N-1 steps.
Both algorithms are near-optimal in terms of query efficiency.
Abstract
We consider the problem of inferring the topology of a network with sources and receivers (hereafter referred to as an -by- network), by sending probes between the sources and receivers. Prior work has shown that this problem can be decomposed into two parts: first, infer smaller subnetwork components (i.e., -by-'s or -by-'s) and then merge these components to identify the -by- topology. In this paper, we focus on the second part, which had previously received less attention in the literature. In particular, we assume that a -by- topology is given and that all -by- components can be queried and learned using end-to-end probes. The problem is which -by-'s to query and how to merge them with the given -by-, so as to exactly identify the -by- topology, and optimize a number of performance metrics, including the number of queries…
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