How Hard is it to Find (Honest) Witnesses?
June 19, 2017 Β· Declared Dead Β· π Embedded Systems and Applications
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Authors
Isaac Goldstein, Tsvi Kopelowitz, Moshe Lewenstein, Ely Porat
arXiv ID
1706.05815
Category
cs.DS: Data Structures & Algorithms
Citations
23
Venue
Embedded Systems and Applications
Last Checked
3 months ago
Abstract
In recent years much effort was put into developing polynomial-time conditional lower bounds for algorithms and data structures in both static and dynamic settings. Along these lines we suggest a framework for proving conditional lower bounds based on the well-known 3SUM conjecture. Our framework creates a \emph{compact representation} of an instance of the 3SUM problem using hashing and domain specific encoding. This compact representation admits false solutions to the original 3SUM problem instance which we reveal and eliminate until we find a true solution. In other words, from all \emph{witnesses} (candidate solutions) we figure out if an \emph{honest} one (a true solution) exists. This enumeration of witnesses is used to prove conditional lower bound on \emph{reporting} problems that generate all witnesses. In turn, these reporting problems are reduced to various decision problems. These help to enumerate the witnesses by constructing appropriate search data structures. Hence, 3SUM-hardness of the decision problems is deduced. We utilize this framework to show conditional lower bounds for several variants of convolutions, matrix multiplication and string problems. Our framework uses a strong connection between all of these problems and the ability to find \emph{witnesses}. While these specific applications are used to demonstrate the techniques of our framework, we believe that this novel framework is useful for many other problems as well.
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