The emerging availability of trained machine learning models has put forward the novel concept of Machine Learning Model Market in which one can harness the collective intelligence of multiple well-trained models to improve the performance of the resultant model through one-shot federated learning and ensemble learning in a data-free manner. However, picking the models available in the market for ensemble learning is time-consuming, as using all the models is not always the best approach. It is thus crucial to have an effective ensemble selection strategy that can find a good subset of the base models for the ensemble. Conventional ensemble selection techniques are not applicable, as we do not have access to the local datasets of the parties in the federated learning setting. In this paper, we present a novel Data-Free Diversity-Based method called DeDES to address the ensemble selection problem for models generated by one-shot federated learning in practical applications such as model markets. Experiments showed that our method can achieve both better performance and higher efficiency over 5 datasets and 4 different model structures under the different data-partition strategies.
翻译:新兴的经过培训的机器学习模式提出了新颖的机器学习模式市场概念,在这个概念中,人们能够利用经过良好训练的多种模式的集体智慧,通过一次性联合学习和以无数据方式共同学习来改进所产生模式的性能;然而,选择市场上现有的共同学习模式是耗时的,因为使用所有模式并非始终是最佳的办法;因此,至关重要的是,要有一个有效的共同选择战略,为共同点找到一个良好的基础模型子集。常规共同选择技术不适用,因为我们无法利用在联合学习环境中的各方的地方数据集。在本文件中,我们提出了一个新的无数据多样性基于数据的方法,称为DES,以解决在模拟市场等实际应用中由一手联合学习产生的模型的共性选择问题。 实验表明,我们的方法可以在5个数据集和不同数据分割战略下的4个不同的模型结构上取得更好的性能和效率。