In this paper we propose an extension of the notion of deviation-based aggregation function tailored to aggregate multidimensional data. Our objective is both to improve the results obtained by other methods that try to select the best aggregation function for a particular set of data, such as penalty functions, and to reduce the temporal complexity required by such approaches. We discuss how this notion can be defined and present three illustrative examples of the applicability of our new proposal in areas where temporal constraints can be strict, such as image processing, deep learning and decision making, obtaining favourable results in the process.
翻译:在本文件中,我们建议扩大偏差汇总功能的概念,使之适合综合多层面数据,我们的目标是改进其他方法取得的结果,这些方法试图为特定数据集选择最佳汇总功能,例如惩罚功能,并减少这类方法所要求的时间复杂性,我们讨论如何界定这一概念,并举三个实例说明我们的新提案在时间限制可能严格的领域的适用性,如图像处理、深层学习和决策,在过程中取得有利结果。