Thy Neighbor
"Thy Neighbor" research explores how leveraging information from nearby data points (neighbors) improves various machine learning tasks. Current efforts focus on developing algorithms and model architectures that effectively utilize this neighborhood information, including graph neural networks, k-nearest neighbor methods, and contrastive learning approaches, across diverse applications like federated learning, image classification, and graph-based anomaly detection. This research significantly impacts the field by enhancing model accuracy, efficiency, and robustness, particularly in scenarios with limited data, noisy observations, or privacy constraints, leading to improvements in various applications.
Papers
Constrained Mean Shift Using Distant Yet Related Neighbors for Representation Learning
KL Navaneet, Soroush Abbasi Koohpayegani, Ajinkya Tejankar, Kossar Pourahmadi, Akshayvarun Subramanya, Hamed Pirsiavash
SIRfyN: Single Image Relighting from your Neighbors
D. A. Forsyth, Anand Bhattad, Pranav Asthana, Yuanyi Zhong, Yuxiong Wang