Probabilistic Active Meta-Learning
About
Data-efficient learning algorithms are essential in many practical applications where data collection is expensive, e.g., in robotics due to the wear and tear. To address this problem, meta-learning algorithms use prior experience about tasks to learn new, related tasks efficiently. Typically, a set of training tasks is assumed given or randomly chosen. However, this setting does not take into account the sequential nature that naturally arises when training a model from scratch in real-life: how do we collect a set of training tasks in a data-efficient manner? In this work, we introduce task selection based on prior experience into a meta-learning algorithm by conceptualizing the learner and the active meta-learning setting using a probabilistic latent variable model. We provide empirical evidence that our approach improves data-efficiency when compared to strong baselines on simulated robotic experiments.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Geospatial Discovery | Land Cover (LC) (test) | Accuracy91 | 7 | |
| Geospatial Discovery | PFAS 2021 (test) | Accuracy0.84 | 7 | |
| Geospatial Discovery | PFAS 2019 (test) | Accuracy57 | 7 |