SDAIASJun 24, 2024

AND: Audio Network Dissection for Interpreting Deep Acoustic Models

arXiv:2406.16990v26 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of interpreting deep acoustic models for researchers and practitioners, but it is incremental as it adapts existing network dissection techniques from vision and language domains to audio.

The paper tackles the lack of neuron-level interpretation methods for acoustic models by introducing AND, a framework that automatically generates natural language explanations of acoustic neurons using LLMs, and demonstrates its application in audio machine unlearning and analysis of model behaviors.

Neuron-level interpretations aim to explain network behaviors and properties by investigating neurons responsive to specific perceptual or structural input patterns. Although there is emerging work in the vision and language domains, none is explored for acoustic models. To bridge the gap, we introduce $\textit{AND}$, the first $\textbf{A}$udio $\textbf{N}$etwork $\textbf{D}$issection framework that automatically establishes natural language explanations of acoustic neurons based on highly-responsive audio. $\textit{AND}$ features the use of LLMs to summarize mutual acoustic features and identities among audio. Extensive experiments are conducted to verify $\textit{AND}$'s precise and informative descriptions. In addition, we demonstrate a potential use of $\textit{AND}$ for audio machine unlearning by conducting concept-specific pruning based on the generated descriptions. Finally, we highlight two acoustic model behaviors with analysis by $\textit{AND}$: (i) models discriminate audio with a combination of basic acoustic features rather than high-level abstract concepts; (ii) training strategies affect model behaviors and neuron interpretability -- supervised training guides neurons to gradually narrow their attention, while self-supervised learning encourages neurons to be polysemantic for exploring high-level features.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes