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Space–Time Tradeoffs for Subset Sum: An ImprovedWorst Case Algorithm

机译:子集总和的时空权力:改进的Worst案例算法

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The technique of Schroeppel and Shamir (SICOMP, 1981) has long been the most efficient way to trade space against time for the SUBSET SUM problem. In the random-instance setting, however, improved tradeoffs exist. In particular, the recently discovered dissection method of Dinur et al. (CRYPTO 2012) yields a significantly improved space–time tradeoff curve for instances with strong randomness properties. Our main result is that these strong randomness assumptions can be removed, obtaining the same space–time tradeoffs in the worst case. We also show that for small space usage the dissection algorithm can be almost fully parallelized. Our strategy for dealing with arbitrary instances is to instead inject the randomness into the dissection process itself by working over a carefully selected but random composite modulus, and to introduce explicit space–time controls into the algorithm by means of a “bailout mechanism”.
机译:Schroeppel和Shamir(Sicomp,1981)的技术长期以来一直是贸易空间的最有效的方式,以便将空间与子集合问题有关。但是,在随机实例设置中,存在改进的权衡。特别是,Dinure等人的最近发现的解剖方法。 (Crypto 2012)产生具有强大随机性属性的实例的显着改进的时空课程曲线。我们的主要结果是可以删除这些强大的随机性假设,从而在最坏情况下获得相同的时空权衡。我们还表明,对于小空间使用,解剖算法可以几乎完全并行化。我们对任意实例的处理策略是通过通过仔细选择但随机复合模量进行处理,并通过“Bailout机制”来将随机性进入解剖过程本身。

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