论文标题

部分可观测时空混沌系统的无模型预测

A Review of Speech-centric Trustworthy Machine Learning: Privacy, Safety, and Fairness

论文作者

Feng, Tiantian, Hebbar, Rajat, Mehlman, Nicholas, Shi, Xuan, Kommineni, Aditya, Narayanan, and Shrikanth

论文摘要

以语音为中心的机器学习系统彻底改变了许多领域,从运输和医疗保健到教育和防御,深刻地改变了人们的生活,工作和互动的方式。但是,最近的研究表明,许多以语音为中心的ML系统可能需要被认为是更广泛的部署。具体而言,在ML研究领域发现了对隐私漏洞,歧视性能和对抗攻击的脆弱性的担忧。为了应对上述挑战和风险,已经做出了许多努力,以确保这些ML系统值得信赖,尤其是私人,安全和公平。在本文中,我们就与隐私,安全性和公平性有关的以语音为中心的ML主题进行了首次全面调查。除了作为研究界的摘要报告外,我们还指出了一些有希望的未来研究指示,以激发希望在这一领域进一步探索的研究人员。

Speech-centric machine learning systems have revolutionized many leading domains ranging from transportation and healthcare to education and defense, profoundly changing how people live, work, and interact with each other. However, recent studies have demonstrated that many speech-centric ML systems may need to be considered more trustworthy for broader deployment. Specifically, concerns over privacy breaches, discriminating performance, and vulnerability to adversarial attacks have all been discovered in ML research fields. In order to address the above challenges and risks, a significant number of efforts have been made to ensure these ML systems are trustworthy, especially private, safe, and fair. In this paper, we conduct the first comprehensive survey on speech-centric trustworthy ML topics related to privacy, safety, and fairness. In addition to serving as a summary report for the research community, we point out several promising future research directions to inspire the researchers who wish to explore further in this area.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源