ArXiv TLDR

Ecologically-Constrained Task Arithmetic for Multi-Taxa Bioacoustic Classifiers Without Shared Data

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2605.03914

Ragib Amin Nihal, Benjamin Yen, Runwu Shi, Takeshi Ashizawa, Kazuhiro Nakadai

cs.SDcs.LG

TLDR

A new method combines independently trained bioacoustic classifiers for 661 species using task vector arithmetic, enabling multi-taxa classification without sharing data.

Key contributions

  • Composes a 661-species bioacoustic classifier via task vector arithmetic, preserving data privacy.
  • Discovers bioacoustic task vectors are near-orthogonal, aligning with spectral distribution distance.
  • Shows simple averaging is optimal for composition, outperforming sign-conflict methods.
  • Reveals composition benefits underrepresented taxa, aiding equitable biodiversity monitoring.

Why it matters

This work enables a new collaborative paradigm for bioacoustics, allowing institutions to combine classifiers for diverse species without sharing sensitive training data. It addresses the challenge of scattered bioacoustic data, promoting data privacy and more equitable biodiversity monitoring.

Original Abstract

Training data for bioacoustics is scattered across taxa, regions, and institutions. Centralizing it all is often infeasible. We show that independently fine-tuned BEATs encoders can be composed into a unified 661-species classifier via task vector arithmetic without sharing data. We find that bioacoustic task vectors are near-orthogonal (cosine 0.01-0.09). Their separation aligns closely with spectral distribution distance, a gradient consistent with the acoustic niche hypothesis. This geometry makes simple averaging optimal while sign-conflict methods reduce accuracy by one to six percentage points. Composition also creates an asymmetric gap: species-rich groups lose accuracy relative to joint training while underrepresented taxa gain, a redistribution useful for equitable biodiversity monitoring. We verify linear mode connectivity across all taxonomic pairs, demonstrate zero-shot transfer to new regions, and identify domain negation as a boundary condition where composition fails. These results enable a collaborative paradigm for bioacoustics where institutions share only task vectors to assemble multi-taxa classifiers, preserving data privacy.

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