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On the Performance-Complexity Tradeoff in Stochastic Greedy Weak Submodular Optimization

机译:在随机贪婪弱子模块优化中的性能复杂性权衡

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Weak submodular optimization underpins many problems in signal processing and machine learning. For such problems, under a cardinality constraint, a simple greedy algorithm is guaranteed to find a solution with a value no worse than 1 − e−γ of the optimal. Given the high cost of queries to large-scale signal processing models, the complexity of GREEDY becomes prohibitive in modern applications. In this work, we study the tradeoff between performance and complexity when one resorts to random sampling strategies to reduce the query complexity of GREEDY. Specifically, we quantify the effect of uniform sampling strategies on the performance through two criteria: (i) the probability of identifying an optimal subset, and (ii) the suboptimality of the solution’s value with respect to the optimal. Building upon this insight, we propose a simple progressive stochastic greedy algorithm, study its approximation guarantees, and consider its applications to dimensionality reduction and feature selection tasks.
机译:弱子图算优化支撑信号处理和机器学习中的许多问题。对于此类问题,在基数约束下,保证了一种简单的贪婪算法,可以找到一个值,该解决方案没有比1 - e更差 最佳。鉴于大规模信号处理模型的疑问成本很高,贪婪的复杂性在现代应用中变得令人望而却步。在这项工作中,我们在随机采样策略方面的诉诸贪婪的复杂性时,我们研究性能和复杂性之间的权衡。具体而言,我们通过两个标准量化了统一采样策略对性能的影响:(i)识别最佳子集的概率,以及(ii)解决方案的值相对于最佳状态的差价。在此洞察力上建立一个简单的渐进式随机贪婪算法,研究其近似保证,并将其应用于维数减少和特征选择任务。

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