High Similarity
High similarity research focuses on developing methods to effectively measure and leverage similarities between data points, whether they are images, text, or neural network representations. Current research emphasizes the use of transformer models, graph neural networks, and various similarity metrics (e.g., cosine similarity, embedding similarity) to achieve this, often within the context of specific applications like image retrieval, anomaly detection, and multi-task learning. This work is significant because improved similarity assessment enhances the efficiency and accuracy of numerous machine learning tasks, impacting fields ranging from computer vision and natural language processing to copyright protection and personalized recommendations.
Papers
CoLe and LYS at BioASQ MESINESP8 Task: similarity based descriptor assignment in Spanish
Francisco J. Ribadas-Pena, Shuyuan Cao, Elmurod Kuriyozov
Efficient Prompt Caching via Embedding Similarity
Hanlin Zhu, Banghua Zhu, Jiantao Jiao
Few-Shot Scenario Testing for Autonomous Vehicles Based on Neighborhood Coverage and Similarity
Shu Li, Jingxuan Yang, Honglin He, Yi Zhang, Jianming Hu, Shuo Feng