Approximate modularity revisited

U. Feige, M. Feldman, Inbal Talgam-Cohen
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引用次数: 4

Abstract

Set functions with convenient properties (such as submodularity) appear in application areas of current interest, such as algorithmic game theory, and allow for improved optimization algorithms. It is natural to ask (e.g., in the context of data driven optimization) how robust such properties are, and whether small deviations from them can be tolerated. We consider two such questions in the important special case of linear set functions. One question that we address is whether any set function that approximately satisfies the modularity equation (linear functions satisfy the modularity equation exactly) is close to a linear function. The answer to this is positive (in a precise formal sense) as shown by Kalton and Roberts [1983] (and further improved by Bondarenko, Prymak, and Radchenko [2013]). We revisit their proof idea that is based on expander graphs, and provide significantly stronger upper bounds by combining it with new techniques. Furthermore, we provide improved lower bounds for this problem. Another question that we address is that of how to learn a linear function h that is close to an approximately linear function f, while querying the value of f on only a small number of sets. We present a deterministic algorithm that makes only linearly many (in the number of items) nonadaptive queries, by this improving over a previous algorithm of Chierichetti, Das, Dasgupta and Kumar [2015] that is randomized and makes more than a quadratic number of queries. Our learning algorithm is based on a Hadamard transform.
近似模块化
具有方便属性(如子模块化)的集合函数出现在当前感兴趣的应用领域,如算法博弈论,并允许改进优化算法。很自然地会问(例如,在数据驱动优化的上下文中)这些属性有多健壮,以及是否可以容忍对它们的小偏差。我们在线性集合函数的重要特例中考虑两个这样的问题。我们要解决的一个问题是,近似满足模块化方程(线性函数完全满足模块化方程)的任何集合函数是否接近于线性函数。Kalton和Roberts[1983]给出的答案是肯定的(在精确的形式意义上)(Bondarenko、Prymak和Radchenko[2013]进一步完善了这一结论)。我们重新审视了他们基于展开图的证明思想,并通过将其与新技术相结合,提供了明显更强的上界。此外,我们给出了改进的下界。我们要解决的另一个问题是如何学习一个接近近似线性函数f的线性函数h,同时只在少数集合上查询f的值。我们提出了一种确定性算法,通过改进Chierichetti, Das, Dasgupta和Kumar[2015]的先前算法,该算法只进行线性多(项目数量)的非自适应查询,该算法是随机的,并且查询次数超过二次。我们的学习算法是基于阿达玛变换的。
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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