Multiple Source
Multiple source data integration focuses on leveraging information from diverse and often heterogeneous sources to improve the accuracy and robustness of various machine learning tasks. Current research emphasizes ensemble methods combining traditional deep learning models (like RNNs) with large language models (LLMs), exploring techniques like retrieval-augmented generation and prompt engineering to effectively integrate knowledge from different sources. This approach is proving valuable across numerous applications, including biomedical natural language processing, urban travel modeling, and carbon accounting, by enhancing model performance and addressing limitations of single-source data.
Papers
February 22, 2023
January 6, 2023
December 15, 2022
October 14, 2022
October 5, 2022
September 28, 2022
August 24, 2022
August 10, 2022
July 28, 2022
July 7, 2022
April 14, 2022
February 14, 2022
February 4, 2022
January 19, 2022
January 4, 2022
December 17, 2021
December 3, 2021