Leonid A. Levin: Difference between revisions

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Title: Leonid A. Levin


Link to Article: https://arxiv.org/abs/0112001v8
Research Question: Can random instances of a graph coloring problem be hard on average?
 
Methodology: The researchers used a random graph problem and introduced randomizing reductions to show the intractability of random instances of a graph coloring problem.
 
Results: The researchers proved that the graph problem is hard on average unless all NP problems under all samplable distributions are easy. This poses significant technical difficulties.
 
Implications: This work provides a strong hardness result related to "typical" or "average" instances of a problem, which is crucial for understanding the efficiency of algorithms and the P=NP question. It also shows that average case completeness of a random graph problem is unlikely without introducing randomizing reductions.
 
Link to Article: https://arxiv.org/abs/0112001v9
Authors:  
Authors:  
arXiv ID: 0112001v8
arXiv ID: 0112001v9


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[[Category:Random]]
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Latest revision as of 03:43, 24 December 2023

Title: Leonid A. Levin

Research Question: Can random instances of a graph coloring problem be hard on average?

Methodology: The researchers used a random graph problem and introduced randomizing reductions to show the intractability of random instances of a graph coloring problem.

Results: The researchers proved that the graph problem is hard on average unless all NP problems under all samplable distributions are easy. This poses significant technical difficulties.

Implications: This work provides a strong hardness result related to "typical" or "average" instances of a problem, which is crucial for understanding the efficiency of algorithms and the P=NP question. It also shows that average case completeness of a random graph problem is unlikely without introducing randomizing reductions.

Link to Article: https://arxiv.org/abs/0112001v9 Authors: arXiv ID: 0112001v9