首页> 外文会议>International colloquium on automata, languages and programming >On Learning, Lower Bounds and (un)Keeping Promises
【24h】

On Learning, Lower Bounds and (un)Keeping Promises

机译:关于学习,下界和(未)保持承诺

获取原文

摘要

We extend the line of research initiated by Fortnow and Kli-vans that studies the relationship between efficient learning algorithms and circuit lower bounds. In, it was shown that if a Boolean circuit class C has an efficient deterministic exact learning algorithm, (i.e. an algorithm that uses membership and equivalence queries) then EXP~(NP) (Z) P/poly[C]. Recently, in EXP~(NP) was replaced by DTIME(n~(ω(1))). Yet for the models of randomized exact learning or Valiant's PAC learning, the best result so far is a lower bound against BPEXP (the exponential-time analogue of BPP). In this paper, we derive stronger lower bounds as well as some other consequences from randomized exact learning and PAC learning algorithms, answering an open question posed in and. In particular, we show that 1. If a Boolean circuit class C has an efficient randomized exact learning algorithm or an efficient PAC learning algorithm then BPTIME(n~(ω(1)))/1 (Z) P/poly[C]. 2. If a Boolean circuit class C has an efficient randomized exact learning algorithm then no strong pseudo-random generators exist in P/poly[C]. We note that in both cases the learning algorithms need not be proper. The extra bit of advice comes to accommodate the need to keep the promise of bounded away probabilities of acceptance and rejection. The exact same problem arises when trying to prove lower bounds for BPTIME or MA. It has been an open problem to remove this bit. We suggest an approach to settle this problem in our case. Finally, we slightly improve the result of [5] by showing a subclass of MAEXP that requires super-polynomial circuits. Our results combine and extend some of the techniques previously used in and.
机译:我们扩展了由Fortnow和Kli-vans发起的研究范围,以研究有效学习算法与电路下限之间的关系。在图中,示出了如果布尔电路类别C具有有效的确定性精确学习算法(即,使用隶属和对等查询的算法),则EXP_(NP)(Z)P / poly [C]。最近,在EXP_(NP)中被DTIME(n〜(ω(1)))取代。然而,对于随机精确学习或Valiant的PAC学习的模型,到目前为止,最好的结果是BPEXP(BPP的指数时间类似物)的下限。在本文中,我们从随机精确学习和PAC学习算法中得出了更强的下界以及其他一些结果,回答了and中提出的一个开放性问题。特别地,我们表明1.如果布尔电路C类具有有效的随机精确学习算法或有效的PAC学习算法,则BPTIME(n〜(ω(1)))/ 1(Z)P / poly [C] 。 2.如果布尔电路C类具有有效的随机精确学习算法,则P / poly [C]中不存在强大的伪随机生成器。我们注意到,在两种情况下,学习算法都不一定正确。额外的建议是为了满足保持承诺的接受和拒绝概率的需要。当试图证明BPTIME或MA的下限时,会出现完全相同的问题。删除该位一直是一个悬而未决的问题。我们建议一种解决此问题的方法。最后,通过显示需要超多项式电路的MAEXP的子类,我们略微改善了[5]的结果。我们的结果结合并扩展了先前在和中使用的一些技术。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号