报告题目: Towards better robustness and generalisation of metric learning methods
报告人:杨笑尘(英国格拉斯哥大学)
报告时间:2023年4月14日17:45-18:30
报告地点:文波楼201
摘要: Many statistical and machine learning methods, such as K-nearest neighbo urs and K-means, heavily depend on the distance measure between data points. As each task has its own notion of distance, metric learning has been proposed, w hich formulates an optimisation problem to learn a distance metric such that sem antically similar samples are pulled together while dissimilar samples are pushed away. In this presentation, I will present two algorithms to learn the distance met ric, which can be applied to continuous data and categorical data respectively. M ore specifically, the first one is motivated to improve robustness of metric learnin g algorithms against adversarial examples, and the second one takes advantage o f adversarial training, a widely used strategy to improve adversarial robustness, t o mitigate feature ambiguity. In addition, I will give a brief overview of recent dev elopment in deep metric learning and an application of metric learning in renewa ble systems.
报告人简介:杨笑尘,英国格拉斯哥大学数学与统计学院的讲师。于2020年获得伦敦大学学院统计科学博士学位,主要研究方向:静态机器学习和图像分析。目前,致力于距离度量研究,是《神经计算》编辑委员。