The ability for a machine learning model to cope with differences in training and deployment conditions--e.g. in the presence of distribution shift or the generalization to new classes altogether--is crucial for real-world use cases. However, most empirical work in this area has focused on the image domain with artificial benchmarks constructed to measure individual aspects of generalization. We present BIRB, a complex benchmark centered on the retrieval of bird vocalizations from passively-recorded datasets given focal recordings from a large citizen science corpus available for training. We propose a baseline system for this collection of tasks using representation learning and a nearest-centroid search. Our thorough empirical evaluation and analysis surfaces open research directions, suggesting that BIRB fills the need for a more realistic and complex benchmark to drive progress on robustness to distribution shifts and generalization of ML models.
BIRB: A Generalization Benchmark for Information Retrieval in Bioacoustics
BIRB, a complex benchmark for bird vocalization retrieval, highlights the need for realistic and detailed testing of ML models' robustness and generalization across distribution shifts.
- Year
- 2023
- Venue
- arXiv 2023
- Authors
- 7
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- Abstract onlyARXIV-DEFAULT
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- Abstract & full text
- arxiv.org/abs/2312.07439v2ARXIV-DEFAULT
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