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An Evolutionary Model to Mine High Expected Utility Patterns From Uncertain Databases

机译:从不确定数据库中挖掘高预期实用模式的进化模型

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摘要

In recent decades, mobile or the Internet of Thing (IoT) devices are dramatically increasing in many domains and applications. Thus, a massive amount of data is generated and produced. Those collected data contain a large amount of interesting information (i.e., interestingness, weight, frequency, or uncertainty), and most of the existing and generic algorithms in pattern mining only consider the single object and precise data to discover the required information. Meanwhile, since the collected information is huge, and it is necessary to discover meaningful and up-to-date information in a limit and particular time. In this paper, we consider both utility and uncertainty as the majority objects to efficiently mine the interesting high expected utility patterns (HEUPs) in a limit time based on the multi-objective evolutionary framework. The benefits of the designed model (called MOEA-HEUPM) can discover the valuable HEUPs without pre-defined threshold values (i.e., minimum utility and minimum uncertainty) in the uncertain environment. Two encoding methodologies are also considered in the developed MOEA-HEUPM to show its effectiveness. Based on the developed MOEA-HEUPM model, the set of non-dominated HEUPs can be discovered in a limit time for decision-making. Experiments are then conducted to show the effectiveness and efficiency of the designed MOEA-HEUPM model in terms of convergence, hypervolume and number of the discovered patterns compared to the generic approaches.
机译:近几十年来,移动或物联网(物联网)设备在许多域和应用程序中显着增加。因此,产生和产生大量数据。这些收集的数据包含大量有趣的信息(即,有趣,重量,频率或不确定性),并且模式挖掘中的大多数现有和通用算法仅考虑单个对象和精确数据以发现所需信息。同时,由于收集的信息是巨大的,因此有必要在极限和特定时间发现有意义和最新的信息。在本文中,我们认为实用性和不确定性作为大多数物体,以在基于多目标进化框架的限制时间内有效地挖掘有趣的高预期实用模式(Heups)。设计模型(称为Moea-Heupm)的好处可以在不确定环境中发现无需预定义的阈值(即最低效用和最小不确定性)的有价值的Heups。发达的Moea-Heapm也考虑了两种编码方法,以表达其有效性。基于发达的MoA-Heapm模型,可以在决策的限制时间内发现该组非主导的Heaps。然后进行实验以表明设计的MoA-Heapm模型在与通用方法相比的收敛性,超凡和数量的数量方面的有效性和效率。

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