Promoting Ensemble Diversity with Interactive Bayesian Distributional Robustness for Fine-tuning Foundation Models
Promoting Ensemble Diversity with Interactive Bayesian Distributional Robustness for Fine-tuning Foundation Models
We introduce Interactive Bayesian Distributional Robustness (IBDR), a novel Bayesian inference framework that allows modeling the interactions between particles, thereby enhancing ensemble quality through increased particle diversity. IBDR is grounded in a generalized theoretical framework that connects the distributional population loss with the approximate posterior, motivating a practical dual optimization procedure that enforces distributional robustness while fostering particle diversity. We evaluate IBDR's performance against various baseline methods using the VTAB-1K benchmark and the common reasoning language task. The results consistently show that IBDR outperforms these baselines, underscoring its effectiveness in real-world applications.
Ngoc-Quan Pham、Tuan Truong、Quyen Tran、Tan Nguyen、Dinh Phung、Trung Le
计算技术、计算机技术
Ngoc-Quan Pham,Tuan Truong,Quyen Tran,Tan Nguyen,Dinh Phung,Trung Le.Promoting Ensemble Diversity with Interactive Bayesian Distributional Robustness for Fine-tuning Foundation Models[EB/OL].(2025-06-08)[2025-07-18].https://arxiv.org/abs/2506.07247.点此复制
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