AI RESEARCH
Multi-layer attentive probing improves transfer of audio representations for bioacoustics
arXiv CS.AI
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ArXi:2605.10494v1 Announce Type: cross Probing heads map the representations learned from audio by a machine learning model to downstream task labels and are a key component in evaluating representation learning. Most bioacoustic benchmarks use a fixed, low-capacity probe, such as a linear layer on the final encoder layer. While this standardization enables model comparisons, it may bias results by overlooking the interaction between encoder features and probe design. In this work, we systematically study different probing strategies across two bioacoustic benchmarks, BEANs and BirdSet.