PACKENUM

PArameterized Complexity and Kernelization for ENUMeration

Grant period2024-09-01 - 2026-08-31
Funding bodyEuropean Union
Call numberHORIZON-MSCA-2022-PF-01
Grant number101109317
IdentifierG:(EU-Grant)101109317

Note: Algorithms play crucial roles in many aspects of the lives of billions of people worldwide. Many of the problems we wish to solve, in industry and academia, are NP-hard and it is expected that no polynomial-time algorithm exists to obtain an optimal solution for them. Nevertheless, they are solved millions of times on a daily basis. Solving them would be unfeasible without the use of preprocessing techniques, which significantly reduce running times and are often necessary to solve a problem. Explaining why these methods work in practice and designing new ones that come with performance guarantees is a great challenge in Theoretical Computer Science. In the framework of Parameterized Complexity, they are modeled through kernelization, which uses an additional measurement of the problem's structure (the parameter) to output a small equivalent instance that can be quickly solved. However, there will usually exist several optimal solutions, regardless of the optimality criterion, and drawing conclusions from a single one may be misleading. Knowing more about the set of optimal solutions is thus necessary in many scenarios and can be formalized through enumeration problems. Unlike decision problems, very little is known about preprocessing for enumeration problems. In the recently defined enumeration kernel, solutions to the reduced instance are used to partition and efficiently list the solution set of the input. Through this project, the researcher will design and implement novel parameterized algorithms and kernels for enumeration problems, and build the lower-bound theory required to separate problems between those that admit polynomial enumeration kernels and those that do not. The designed kernels will be some of the earliest enumeration kernels, while the lower-bound theory will be a fundamental part of Parameterized Complexity, allowing researcher's to identify problems that do not admit efficient preprocessing and focus their efforts on problems that do.
   

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 Record created 2023-08-27, last modified 2023-08-27