Rich Attribute
Rich attribute research focuses on leveraging detailed descriptive features of data to improve various machine learning tasks. Current efforts concentrate on developing models that effectively incorporate these attributes, including graph attention networks, deep generative models, and various adaptations of autoencoders, to enhance performance in areas like image classification, recommendation systems, and explainable AI. This work is significant because it addresses limitations of traditional methods that rely solely on basic features, leading to improved accuracy, robustness, and interpretability in diverse applications. The resulting advancements have implications for fields ranging from healthcare and computer vision to social sciences and data analysis.
Papers
Consistency and Accuracy of CelebA Attribute Values
Haiyu Wu, Grace Bezold, Manuel Günther, Terrance Boult, Michael C. King, Kevin W. Bowyer
Adv-Attribute: Inconspicuous and Transferable Adversarial Attack on Face Recognition
Shuai Jia, Bangjie Yin, Taiping Yao, Shouhong Ding, Chunhua Shen, Xiaokang Yang, Chao Ma
"hasSignification()": une nouvelle fonction de distance pour soutenir la d\'etection de donn\'ees personnelles
Amine Mrabet, Ali Hassan, Patrice Darmon
Disentangled Federated Learning for Tackling Attributes Skew via Invariant Aggregation and Diversity Transferring
Zhengquan Luo, Yunlong Wang, Zilei Wang, Zhenan Sun, Tieniu Tan