PRIVACY SENSITIVE SPEECH ANALYSIS USING FEDERATED LEARNING TO ASSESS DEPRESSION

被引:13
|
作者
Suhas, B. N. [1 ]
Abdullah, Saeed [1 ]
机构
[1] Penn State Univ, Coll Informat Sci & Technol, University Pk, PA 16802 USA
关键词
speech classification; depression; privacy; paralinguistics; mHealth;
D O I
10.1109/ICASSP43922.2022.9746827
中图分类号
O42 [声学];
学科分类号
070206 ; 082403 ;
摘要
Recent studies have used speech signals to assess depression. However, speech features can lead to serious privacy concerns. To address these concerns, prior work has used privacy-preserving speech features. However, using a subset of features can lead to information loss and, consequently, non-optimal model performance. Furthermore, prior work relies on a centralized approach to support continuous model updates, posing privacy risks. This paper proposes to use Federated Learning (FL) to enable decentralized, privacy-preserving speech analysis to assess depression. Using an existing dataset (DAIC-WOZ), we show that FL models enable a robust assessment of depression with only 4-6% accuracy loss compared to a centralized approach. These models also outperform prior work using the same dataset. Furthermore, the FL models have short inference latency and small memory footprints while being energy-efficient. These models, thus, can be deployed on mobile devices for real-time, continuous, and privacy-preserving depression assessment at scale.
引用
收藏
页码:6272 / 6276
页数:5
相关论文
共 50 条
  • [1] A Privacy Preserving Sentiment Analysis using Federated Learning
    Kamoji, Supriya
    Mathew, Rohan
    Abreo, Justin
    Dsa, Jaden
    Pendhari, Heenakausar
    Lokhande, Unik
    2024 SECOND INTERNATIONAL CONFERENCE ON INVENTIVE COMPUTING AND INFORMATICS, ICICI 2024, 2024, : 510 - 515
  • [2] Federated Learning and Privacy
    Bonawitz, Kallista
    Kairouz, Peter
    Mcmahan, Brendan
    Ramage, Daniel
    COMMUNICATIONS OF THE ACM, 2022, 65 (04) : 90 - 97
  • [3] Federated Learning and Privacy
    Bonawitz K.
    Kairouz P.
    McMahan B.
    Ramage D.
    Queue, 2021, 19 (05): : 87 - 114
  • [4] Privacy-Preserving Heterogeneous Federated Learning for Sensitive Healthcare Data
    Xu, Yukai
    Zhang, Jingfeng
    Gu, Yujie
    2024 IEEE CONFERENCE ON ARTIFICIAL INTELLIGENCE, CAI 2024, 2024, : 1142 - 1147
  • [5] SensFL: Privacy-Preserving Vertical Federated Learning with Sensitive Regularization
    Zhang, Chongzhen
    Liu, Zhichen
    Xu, Xiangrui
    Hu, Fuqiang
    Dai, Jiao
    Cai, Baigen
    Wang, Wei
    CMES-COMPUTER MODELING IN ENGINEERING & SCIENCES, 2024, : 385 - 404
  • [6] Privacy enabled driver behavior analysis in heterogeneous IoV using federated learning
    Chhabra, Rishu
    Singh, Saravjeet
    Khullar, Vikas
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2023, 120
  • [7] FORECASTING WITH VISIBILITY USING PRIVACY PRESERVING FEDERATED LEARNING
    Zhang, Bo
    Tan, Wen Jun
    Cai, Wentong
    Zhang, Allan N.
    2022 WINTER SIMULATION CONFERENCE (WSC), 2022, : 2687 - 2698
  • [8] PRIVACY-PRESERVING SERVICES USING FEDERATED LEARNING
    Taylor, Paul
    Kiss, Stephanie
    Gullon, Lucy
    Yearling, David
    Journal of the Institute of Telecommunications Professionals, 2022, 16 : 16 - 22
  • [9] Privacy Analysis of Federated Learning via Dishonest Servers
    Jeter, Tre' R.
    Thai, My T.
    2023 IEEE 9TH INTL CONFERENCE ON BIG DATA SECURITY ON CLOUD, BIGDATASECURITY, IEEE INTL CONFERENCE ON HIGH PERFORMANCE AND SMART COMPUTING, HPSC AND IEEE INTL CONFERENCE ON INTELLIGENT DATA AND SECURITY, IDS, 2023, : 24 - 29
  • [10] Federated learning and differential privacy for medical image analysis
    Adnan, Mohammed
    Kalra, Shivam
    Cresswell, Jesse C.
    Taylor, Graham W.
    Tizhoosh, Hamid R.
    SCIENTIFIC REPORTS, 2022, 12 (01)