Abstract

In this talk we propose a new framework for analyzing the performance of preprocessing algorithms. Our framework builds on the notion of kernelization from parametierized com-plexity. However, as opposed to the original notion of kernelization, our definitions combine nicely with approximation algorithms and heuristics. The key new definition is that of a polynomial size a-approximate kernel. 

During the talk we will put up the framework and exemplify its utility via several examples.  
 
 
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