( Meta ) Kernelization 1

نویسندگان

  • Hans L. Bodlaender
  • Fedor V. Fomin
  • Daniel Lokshtanov
  • Eelko Penninkx
  • Saket Saurabh
  • Dimitrios M. Thilikos
چکیده

In a parameterized problem, every instance I comes with a positive integer k. The problem is said to admit a polynomial kernel if, in polynomial time, one can reduce the size of the instance I to a polynomial in k, while preserving the answer. In this work we give two meta-theorems on kernelzation. The first theorem says that all problems expressible in Counting Monadic Second Order Logic and satisfying a coverability property admit a polynomial kernel on graphs of bounded genus. Our second result is that all problems that have finite integer index and satisfy a weaker coverability property admit a linear kernel on graphs of bounded genus. These theorems unify and extend all previously known kernelization results for planar graph problems.

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تاریخ انتشار 2014