LGAICVApr 11, 2025

Task-conditioned Ensemble of Expert Models for Continuous Learning

arXiv:2504.08626v2h-index: 2Has Code2025 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW)
Originality Synthesis-oriented
AI Analysis

This addresses the challenge of continuous learning for deployed models, though it appears incremental as it builds on ensemble and outlier-based methods.

The paper tackles the problem of maintaining model accuracy in non-stationary environments with distribution shifts by proposing a task-conditioned ensemble of expert models, achieving benefits in experiments on datasets like LivDet-Iris-2017, LivDet-Iris-2020, and Split MNIST.

One of the major challenges in machine learning is maintaining the accuracy of the deployed model (e.g., a classifier) in a non-stationary environment. The non-stationary environment results in distribution shifts and, consequently, a degradation in accuracy. Continuous learning of the deployed model with new data could be one remedy. However, the question arises as to how we should update the model with new training data so that it retains its accuracy on the old data while adapting to the new data. In this work, we propose a task-conditioned ensemble of models to maintain the performance of the existing model. The method involves an ensemble of expert models based on task membership information. The in-domain models-based on the local outlier concept (different from the expert models) provide task membership information dynamically at run-time to each probe sample. To evaluate the proposed method, we experiment with three setups: the first represents distribution shift between tasks (LivDet-Iris-2017), the second represents distribution shift both between and within tasks (LivDet-Iris-2020), and the third represents disjoint distribution between tasks (Split MNIST). The experiments highlight the benefits of the proposed method. The source code is available at https://github.com/iPRoBe-lab/Continuous_Learning_FE_DM.

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