Automation of machine learning model development is increasingly becoming an established research area. While automated model selection and automated data pre-processing have been studied in depth, there is, however, a gap concerning automated model adaptation strategies when multiple strategies are available. Manually developing an adaptation strategy can be time consuming and costly. In this paper we address this issue by proposing the use of flexible adaptive mechanism deployment for automated development of adaptation strategies. Experimental results after using the proposed strategies with five adaptive algorithms on 36 datasets confirm their viability. These strategies achieve better or comparable performance to the custom adaptation strategies and the repeated deployment of any single adaptive mechanism.
翻译:机械学习模式开发自动化正在日益成为一个固定的研究领域,虽然已经深入研究了自动模式选择和自动数据预处理,但在有多种战略时,在自动模式适应战略方面存在差距。手工制定适应战略可能耗时费钱。在本文件中,我们建议采用灵活适应机制部署,以自动开发适应战略。在使用36个数据集的5种适应算法后,实验结果证实了其可行性。这些战略取得与定制适应战略和反复部署任何单一适应机制相比更好或可比的业绩。