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44th Annual IEEE Symposium on Foundations of Computer Science (FOCS'03)   p. 126
List-Decoding Using The XOR Lemma

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DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/SFCS.2003.1238187
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Abstract
We show that Yao’s XOR Lemma, and its essentially equivalent rephrasing as a Direct Product Lemma, can be re-interpreted as a way of obtaining error-correcting codes with good list-decoding algorithms from error-correcting codes having weak unique-decoding algorithms. To get codes with good rate and efficient list decoding algorithms one needs a proof of the Direct Product Lemma that, respectively, is strongly derandomized, and uses very small advice. We show how to reduce advice in Impagliazzo’s proof of the Direct Product Lemma for pairwise independent inputs, which leads to error-correcting codes with O(n2) encoding length, \bar 0(n^2 ) encoding time, and probabilistic \bar 0(n) list-decoding time. (Note that the decoding time is sub-linear in the length of the encoding.) Back to complexity theory, our advice-efficient proof of Impagliazzo’s "hard-core set" results yields a (weak) uniform version of O’Donnell results on amplification of hardness in NP. We show that if there is a problem in NP that cannot be solved by BPP algorithms on more than a 1 - 1/(log n)c fraction of inputs, then there is a problem in NP that cannot be solved by BPP algorithms on more than a 3/4+1/(logn)c fraction of inputs, where c > 0 is an absolute constant.
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Citation:  Luca Trevisan, "List-Decoding Using The XOR Lemma," focs, p. 126,  44th Annual IEEE Symposium on Foundations of Computer Science (FOCS'03),  2003

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