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Efficient Learning Algorithms Yield Circuit Lower Bounds

机译:高效的学习算法,产生电路下界

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摘要

We describe a new approach for understanding the difficulty of designing efficient learning algorithms. We prove that the existence of an efficient learning algorithm for a circuit class C in Angluin's model of exact learning from membership and equivalence queries or in Valiant's PAC model yields a lower bound against C. More specifically, we prove that any subexponential time, determinstic exact learning algorithm for C (from membership and equivalence queries) implies the existence of a function f in EXP~(NP) such that f is not an element of C. If C is PAC learnable with membership queries under the uniform distribution or Exact learnable in randomized polynomial time, we prove that there exists a function f ∈ BPEXP (the exponential time analog of BPP) such that f is not an element of C. For C equal to polynomial-size, depth-two threshold circuits (i.e., neural networks with a polynomial number of hidden nodes), our result shows that efficient learning algorithms for this class would solve one of the most challenging open problems in computational complexity theory: proving the existence of a function in EXP~(NP) or BPEXP that cannot be computed by circuits from C. We are not aware of any representation-independent hardness results for learning polynomial-size depth-2 neural networks. Our approach uses the framework of the breakthrough result due to Kabanets and Impagliazzo showing that derandomizing BPP yields non-trivial circuit lower bounds.
机译:我们描述了一种新的方法,用于理解设计高效学习算法的难度。我们证明了在Angluin从成员资格和对等查询的精确学习模型中或在Valiant的PAC模型中,对于电路类C的高效学习算法的存在对C的下界。更具体地说,我们证明了任何次指数时间,确定性精确C的学习算法(从隶属关系和对等查询)意味着EXP_(NP)中存在函数f,使得f不是C的元素。如果C是PAC可通过均匀分布下的隶属关系查询学习的,或者C是完全可学习的随机多项式时间,我们证明存在一个函数f∈BPEXP(BPP的指数时间模拟),使得f不是C的元素。对于C等于多项式大小,深度为2的阈值电路(即神经网络) (具有隐藏节点的多项式数),我们的结果表明,此类的有效学习算法将解决计算复杂性理论中最具挑战性的开放问题之一:证明存在性由于EXP_(NP)或BPEXP中的函数无法通过C的电路进行计算。我们不了解用于学习多项式大小的深度2神经网络的任何与表示无关的硬度结果。我们的方法使用了Kabanets和Impagliazzo所取得的突破性结果的框架,表明突破性的BPP产生了非平凡的电路下限。

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