Local Level
"Local level" research encompasses analyzing and modeling processes at a granular, localized scale, contrasting with broader global perspectives. Current research focuses on improving the accuracy and efficiency of localized models across diverse applications, employing techniques like graph neural networks, 1D CNN + Transformer architectures, and Bayesian networks to capture complex relationships within localized data. This work is significant for enhancing the precision of predictions and decision-making in areas such as public service delivery, scientific document summarization, and climate modeling, ultimately leading to more effective and targeted interventions.
Papers
March 23, 2022
February 23, 2022
November 23, 2021
November 16, 2021