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Speed-Up Algorithms for Happiness-Maximizing Representative Databases

机译:幸福最大化代表数据库的加速算法

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Helping user identify the ideal results of a manageable size k from a database, such that each user's ideal results will take a big picture of the whole database. This problem has been studied extensively in recent years under various models, resulting in a large number of interesting consequences. In this paper, we introduce the concept of minimum happiness ratio maximization and show that our objective function exhibits the property of monotonictity. Based on this property, two efficient polynomial-time approximation algorithms called Lazy NWF-Greedy and Lazy Stochastic-Greedy are developed. Both of them are extended to exploit lazy evaluations, yielding significant speedups as to basic RDP-Greedy algorithm. Extensive experiments on both synthetic and real datasets show that our Lazy NWF-Greedy achieves the same minimum happiness ratio as the best-known RDP-Greedy algorithm but can greatly reduce the number of function evaluations and our Lazy Stochastic-Greedy sacrifices a little happiness ratio but significantly decreases the number of function evaluations.
机译:帮助用户从数据库中识别可管理大小k的理想结果,使每个用户的理想结果将占据整个数据库的大图片。近年来在各种型号下进行了广泛研究了这个问题,导致大量有趣的后果。在本文中,我们介绍了最小幸福比率最大化的概念,并表明我们的客观函数展现了单向形式的财产。基于此属性,开发了两个有效的多项式近似算法,称为懒惰的NWF贪婪和懒惰的随机贪婪。它们都扩展到利用速度评估,从而产生了大量的RDP贪婪算法。综合和实际数据集的广泛实验表明,我们的懒惰NWF-贪婪与最佳的RDP-贪婪算法相同,但可以大大减少函数评估的数量,我们的懒惰随机贪婪牺牲一点幸福比例但显着降低了功能评估的数量。

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