Low Rank Tensor
Low-rank tensor methods aim to efficiently represent and analyze high-dimensional data by exploiting underlying low-dimensional structures within multi-way arrays (tensors). Current research focuses on developing efficient algorithms, such as those based on tensor decompositions (e.g., CP, Tucker, TT), for tasks like tensor completion, denoising, and dimensionality reduction, often incorporating techniques like parameter-efficient fine-tuning and rank-adaptive optimization. These advancements are significantly impacting diverse fields, improving the efficiency and accuracy of applications ranging from natural language processing and medical image analysis to hyperspectral imaging and traffic flow prediction.
Papers
June 22, 2022
June 18, 2022
June 2, 2022
May 30, 2022
May 6, 2022
May 1, 2022
March 25, 2022
March 17, 2022