Kaizhi Qian, Yang Zhang, et al.
ICML 2020
We propose a method to fuse posterior distributions learned from heterogeneous datasets. Our algorithm relies on a mean field assumption for both the fused model and the individual dataset posteriors and proceeds using a simple assign-and-average approach. The components of the dataset posteriors are assigned to the proposed global model components by solving a regularized variant of the assignment problem. The global components are then updated based on these assignments by their mean under a KL divergence. For exponential family variational distributions, our formulation leads to an efficient non-parametric algorithm for computing the fused model. Our algorithm is easy to describe and implement, efficient, and competitive with state-of-the-art on motion capture analysis, topic modeling, and federated learning of Bayesian neural networks.
Kaizhi Qian, Yang Zhang, et al.
ICML 2020
Akhilan Boopathy, Sijia Liu, et al.
ICML 2020
Gosia Lazuka, Andreea Simona Anghel, et al.
SC 2024
Kristen A. Severson, Soumya Ghosh, et al.
AAAI 2019