The problem of matching two sets of multiple elements, namely set-to-set matching, has received a great deal of attention in recent years. In particular, it has been reported that good experimental results can be obtained by preparing a neural network as a matching function, especially in complex cases where, for example, each element of the set is an image. However, theoretical analysis of set-to-set matching with such black-box functions is lacking. This paper aims to perform a generalization error analysis in set-to-set matching to reveal the behavior of the model in that task.
翻译:匹配两组多个元素的问题,即设置到设置的匹配,近年来引起了人们的极大关注。特别是,据报告,通过准备神经网络作为匹配功能,可以取得良好的实验结果,特别是在复杂的情况下,例如,每组元素都是图像。然而,缺乏对与此类黑盒功能匹配的设置到设置的理论分析。本文件旨在对设置到设置匹配进行一般错误分析,以显示该任务中模型的行为。</s>