Machine Unlearning for Speaker-Agnostic Detection of Gender-Based Violence Condition in Speech
Emma Reyner-Fuentes, Esther Rituerto-Gonzalez, Carmen Pelaez-Moreno

TL;DR
This paper presents a speaker-agnostic speech analysis method using domain-adversarial training to accurately detect gender-based violence victim conditions, reducing speaker bias and correlating with PTSD symptoms.
Contribution
It introduces a novel domain-adversarial training approach to improve speaker-agnostic detection of gender-based violence in speech, enhancing model robustness and clinical relevance.
Findings
26.95% reduction in speaker identification accuracy
6.37% improvement in victim condition classification
Moderate correlation with PTSD symptoms
Abstract
Gender-based violence is a pervasive public health issue that severely impacts women's mental health, often leading to conditions such as in anxiety, depression, post-traumatic stress disorder, and substance abuse. Identifying the combination of these various mental health conditions could then point to someone who is a victim of gender-based violence. And while speech-based artificial intelligence tools show as a promising solution for mental health screening, their performance often deteriorates when encountering speech from previously unseen speakers, a sign that speaker traits may be confounding factors. This study introduces a speaker-agnostic approach to detecting the gender-based violence victim condition from speech, aiming to develop robust artificial intelligence models capable of generalizing across speakers. By employing domain-adversarial training, we reduce the influence…
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Taxonomy
TopicsHate Speech and Cyberbullying Detection
MethodsFocus
