MDFD: STUDY OF DISTRIBUTED NON-IID SCENARIOS AND FRECHET DISTANCE-BASED EVALUATION
Wei Wang, Mingwei Zhang, Ziwen Wu, Qianxi Chen, Yue Li
-
SPS
IEEE Members: $11.00
Non-members: $15.00
With the development of distributed machine learning and federated learning, the solution to the data island problem is promoted. People use computer clusters to train machine learning models on data distributed in different regions. In the early stage of research, researchers usually assume that the data sets of each node are independent identically distribution (IID), but this is a strong assumption, which is challenging to meet in practical applications. Therefore, research on non-IID has become a hot spot in recent years. However, there is no uniform standard for designing and evaluating non-IID scenarios. This paper proposes a Frechet distance-independent non-IID distribution dataset metric MDFD. And we conducted experiments on different types of distributed machine-learning methods in different non-IID scenarios to verify the effectiveness of MDFD.