Finding Structure in Entropy: Improved Approximation Algorithms for TSP and other Graph Problems
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Klein, Nathan
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Abstract
This dissertation demonstrates that there is an approximation algorithm for the metric traveling salesperson problem (TSP) with approximation ratio below 3/2. This represents the first improvement in nearly half a century, answering a long-standing open problem in combinatorial optimization. The algorithm we analyze, a variant of Christofides' 3/2 approximation from the 1970s, exploits a distribution over spanning trees that has as much entropy as possible subject to obeying certain marginal constraints. A key component of this work is to show that despite the inherent unpredictability of such a distribution, the trees it produces nevertheless exhibit surprisingly robust structural properties. To show these properties, we use that the generating polynomials of these distributions have a zero-free region in the complex plane, allowing us to employ a suite of tools coming from work on the geometry of polynomials. As a byproduct of our analysis, we prove several new statements that sharply characterize the behavior of such distributions. We also discuss several other results in network design, including a lower bound for this algorithm, an optimal rounding algorithm for a special case of TSP, and improved algorithms for the $k$-edge-connected multi-subgraph problem and the laminar thin tree problem.
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Thesis (Ph.D.)--University of Washington, 2023
