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Lazier Than Lazy Greedy

机译:比懒惰的贪婪更懒散

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摘要

Is it possible to maximize a monotone submodular function faster than the widely used lazy greedy algorithm (also known as accelerated greedy), both in theory and practice? In this paper, we develop the first linear-time algorithm for maximizing a general monotone submodular function subject to a cardinality constraint. We show that our randomized algorithm, STOCHASTIC-GREEDY, can achieve a (1 – 1/e -ε)approximation guarantee, in expectation, to the optimum solution in time linear in the size of the data and independent of the cardinality constraint. We empirically demonstrate the effectiveness of our algorithm on submodular functions arising in data summarization, including training large-scale kernel methods, exemplar-based clustering, and sensor placement. We observe that STOCHASTIC-GREEDY practically achieves the same utility value as lazy greedy but runs much faster. More surprisingly, we observe that in many practical scenarios STOCHASTIC-GREEDY does not evaluate the whole fraction of data points even once and still achieves indistinguishable results compared to lazy greedy.
机译:是否有可能比理论和实践中的广泛使用的懒惰贪婪算法(也称为加速贪婪)更快地提高单调子模块函数?在本文中,我们开发了第一种线性时间算法,用于最大化对基数约束的一般单调子模块功能。我们表明,我们的随机算法随机贪婪,可以实现(1 - 1 / E-ε)近似保证,期望,在数据的大小和与基数约束无关的时间线性中的最佳解。我们经验证明了我们在数据摘要中产生的子模块函数算法的有效性,包括培训大型内核方法,示例基础的聚类和传感器放置。我们观察到随机贪婪实际上实现了与懒惰贪婪相同的实用价值,但运行得更快。更令人惊讶的是,我们观察到,在许多实践方案中,随机贪婪不会评估甚至一度的数据点的整个分数,而且仍然达到无法区分的结果,而懒惰的贪婪相比。

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