General or Specific? Investigating Effective Privacy Protection in Federated Learning for Speech Emotion Recognition

ICASSP 2023 - 2023 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)(2023)

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摘要
Federated Learning (FL) is considered a new paradigm of privacy-preserving machine learning since the server trains a machine learning model in a distributed way without collecting clients’ raw data but only local models. However, recent studies show that FL suffers inference attacks. Sensitive information can still be inferred from the shared local models. In this work, we investigate the effectiveness of existing rigorous privacy-enhancing techniques, i.e., user-level differential privacy (UDP) and Voice-Indistinguishability (Voice-Ind), for enhancing FL in the scenario of Speech Emotion Recognition (SER), against gender inference attacks. UDP is a general-purpose privacy notion, whereas Voice-Ind is proposed for protecting voiceprint. In addition, we propose a new privacy notion Gender-Indistinguishability (Gender-Ind), which is specifically designed for protecting gender information in speech data, and test its privacy-utility tradeoff compared with the above two privacy notions. The experiments reveal that our specifically designed privacy notion, Gender-Ind, can achieve better utility while preventing the same level of attacks. This finding sheds some light on how to design privacy protection methods in speech data processing.
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关键词
Privacy Protection,Federated Learning,Speech Emotion Recognition
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