Attribute-efficient evolvability of linear functions

E. Angelino, Varun Kanade
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引用次数: 9

Abstract

In a seminal paper, Valiant (2006) introduced a computational model for evolution to address the question of complexity that can arise through Darwinian mechanisms. Valiant views evolution as a restricted form of computational learning, where the goal is to evolve a hypothesis that is close to the ideal function. Feldman (2008) showed that (correlational) statistical query learning algorithms could be framed as evolutionary mechanisms in Valiant's model. P. Valiant (2012) considered evolvability of real-valued functions and also showed that weak-optimization algorithms that use weak-evaluation oracles could be converted to evolutionary mechanisms. In this work, we focus on the complexity of representations of evolutionary mechanisms. In general, the reductions of Feldman and P. Valiant may result in intermediate representations that are arbitrarily complex polynomial-sized circuits). We argue that biological constraints often dictate that the representations have low complexity, such as constant depth and fan-in circuits. We give mechanisms for evolving sparse linear functions under a large class of smooth distributions. These evolutionary algorithms are attribute-efficient in the sense that the size of the representations and the number of generations required depend only on the sparsity of the target function and the accuracy parameter, but have no dependence on the total number of attributes.
线性函数的属性有效演化性
在一篇开创性的论文中,Valiant(2006)引入了一个进化的计算模型,以解决达尔文机制可能产生的复杂性问题。Valiant认为进化是一种有限形式的计算学习,其目标是进化出一个接近理想函数的假设。Feldman(2008)表明(相关的)统计查询学习算法可以作为Valiant模型中的进化机制。P. Valiant(2012)考虑了实值函数的可进化性,并表明使用弱评估神谕的弱优化算法可以转换为进化机制。在这项工作中,我们关注进化机制表征的复杂性。一般来说,Feldman和P. Valiant的约简可能会导致中间表示(任意复杂的多项式大小的电路)。我们认为,生物限制通常决定了表征具有低复杂性,例如恒定深度和风扇电路。给出了一类光滑分布下稀疏线性函数的演化机制。这些进化算法是属性高效的,因为表示的大小和所需的代数仅取决于目标函数的稀疏性和精度参数,而不依赖于属性的总数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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