Many Property
Research on "many property" problems focuses on predicting or explaining multiple properties simultaneously, moving beyond single-property analyses. Current efforts concentrate on developing and improving multimodal deep learning models, such as transformer-based architectures and diffusion models, along with refining explanation methods like Shapley values and investigating the properties of various kernel-based approaches. This research is significant because it addresses the limitations of single-property models and enables more comprehensive understanding and prediction in diverse fields, including materials science, drug discovery, and climate modeling.
Papers
April 3, 2023
March 29, 2023
From axioms over graphs to vectors, and back again: evaluating the properties of graph-based ontology embeddings
Fernando Zhapa-Camacho, Robert Hoehndorf
A Comprehensive and Versatile Multimodal Deep Learning Approach for Predicting Diverse Properties of Advanced Materials
Shun Muroga, Yasuaki Miki, Kenji Hata
March 22, 2023
February 2, 2023
December 29, 2022
December 8, 2022
December 1, 2022
November 28, 2022
November 19, 2022
November 10, 2022
November 6, 2022
October 26, 2022
September 16, 2022
September 15, 2022
September 6, 2022
July 18, 2022