方法证据记录
Robust Metric Learning
Robust Metric Learning learns a Mahalanobis distance function from labeled or pairwise-constrained data while actively resisting the distortion caused by noisy labels, corrupted examples, or outliers. By replacing standard hinge or squared losses with robust alternatives and adding regularization, it produces a distance metric that generalises well even when the training set is imperfect — a common situation in real-world scientific and applied tasks.
源记录
引文逐字复制自方法源记录。这些引文不代表任何层级的验证。
Robust Metric Learning (Outlier-Resistant Distance Metric Learning)
分类方法记录 · ml-model / machine-learning
- Shen, C., Kim, J., Wang, L., & van den Hengel, A. (2012). Positive Semidefinite Metric Learning Using Boosting-like Algorithms. Journal of Machine Learning Research, 13, 1007–1036. · URL
- Cao, Q., Guo, Z.-C., & Ying, Y. (2012). Generalization Bounds for Metric and Similarity Learning. Machine Learning, 102(1), 115–132. · URL
精选声明
声明已持久化到证据分类账中,每个声明都有自己的评估。
尚无精选声明
当分类账中没有声明时,此视图不会自行创建声明评估。
相关方法
从方法图中生成,显示为机器建议的关系 — 不推断任何证据声明。