Poster
in
Workshop: Machine Learning for Audio
Synthia's Melody: A Benchmark Framework for Unsupervised \\Domain Adaptation in Audio
Harry Coppock · Chia-Hsin Lin
Despite significant advancements in deep learning for vision and natural language, unsupervised domain adaptation in audio remains relatively unexplored. We, in part, attribute this to the lack of an appropriate benchmark dataset. To address this gap, we present Synthia’s melody, a novel audio data generation framework capable of simulating an infinite variety of 4-second melodies with user-specified confounding structures characterised by musical keys, timbre, and loudness. Unlike existing datasets collected under observational settings, Synthia’s melody is free of unobserved biases, ensuring the reproducibility and comparability of experiments. To showcase its utility, we generate two types of distribution shifts—domain shift and sample selection bias—and evaluate the performance of acoustic deep learning models under these shifts. Our evaluations reveal that Synthia’s melody provides a robust testbed for examining the susceptibility of these models to varying levels of distribution shift.