Kernelization - Theory of Parameterized Preprocessing - Grand Format

Edition en anglais

Fedor V. Fomin

,

Daniel Lokshtanov

,

Saket Saurabh

,

Meirav Zehavi

Note moyenne 
Preprocessing, or data reduction, is a standard technique for simplifying and speeding up computation. Written by a team of experts in the field, this... Lire la suite
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Résumé

Preprocessing, or data reduction, is a standard technique for simplifying and speeding up computation. Written by a team of experts in the field, this book introduces a rapidly developing area of preprocessing analysis known as kernelization. The authors provide an overview of basic methods and important results, with accessible explanations of the most recent advances in the area, such as meta-kernelization, representative sets, polynomial lower bounds, and lossy kernelization.
The text is divided into four parts, which cover the different theoretical aspects of the area : upper bounds, meta-theorems, lower bounds, and beyond kernelization. The methods are demonstrated through extensive examples using a single data set. Written to be self-contained, the book only requires a basic background in algorithmics and will be of use to professionals, researchers and graduate students in theoretical computer science, optimization, combinatorics, and related fields.

Caractéristiques

  • Date de parution
    01/01/2019
  • Editeur
  • ISBN
    978-1-107-05776-0
  • EAN
    9781107057760
  • Format
    Grand Format
  • Présentation
    Relié
  • Nb. de pages
    544 pages
  • Poids
    0.885 Kg
  • Dimensions
    16,0 cm × 23,6 cm × 3,1 cm

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