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  <title>The shortest vector problem is NP-hard to approximate to
  within some constant</title>

  <author>Daniele Micciancio</author>
  
  <reference>
    <link>http://epubs.siam.org/sam-bin/dbq/toclist/SICOMP</link>
    <journal>SIAM J. on Computing</journal>
    <volume>30</volume>
    <number>6</number>
    <pages>2008-2035</pages>
    <year month="3">2001</year>
    <note>Invited paper</note>
    <note>Preliminary version in FOCS 1998</note>
    <doi>10.1137/S0097539700373039</doi>
  </reference>

  <abstract> 
    <p xmlns="http://www.w3.org/1999/xhtml">
      We show that approximating the <em>shortest vector problem</em> (in
      any <em>L<sub>p</sub></em> norm) to within any constant factor less than
      <em>2<sup>1/p</sup></em> is hard for NP under <em>reverse unfaithful
      random</em> reductions with inverse polynomial error probability. In
      particular, approximating the <em>shortest vector problem</em> is not
      in RP (random polynomial time), unless NP equals RP. We also prove a
      proper NP-hardness result (i.e., hardness under deterministic many-one
      reductions) under a reasonable number theoretic conjecture on the
      distribution of square-free smooth numbers. As part of our proof, we
      give an alternative construction of Ajtai's constructive variant of
      Sauer's lemma, that greatly simplifies Ajtai's original proof.</p>
    </abstract>

  <note>Preliminary versions 
   <link href="http://www.lcs.mit.edu/publications/specpub.php?id=547">MIT/LCS/TM-574</link>, 
  <eccc year="1998" number="TR98-016"/>, and 
  <link doi="10.1109/SFCS.1998.743432">FOCS 1998</link>
  </note>
  <note>
    Machtey Award for best student paper at FOCS 1998
  </note>
</paper>

