TY - JOUR
T1 - CopDDB
T2 - a descriptor database for copolymers and its applications to machine learning
AU - Yoshimura, Takayoshi
AU - Kato, Hiromoto
AU - Oikawa, Shunto
AU - Inagaki, Taichi
AU - Asano, Shigehito
AU - Sugawara, Tetsunori
AU - Miyao, Tomoyuki
AU - Matsubara, Takamitsu
AU - Ajiro, Hiroharu
AU - Fujii, Mikiya
AU - Ohnishi, Yu Ya
AU - Hatanaka, Miho
N1 - Publisher Copyright:
© 2025 RSC.
PY - 2024
Y1 - 2024
N2 - Polymer informatics, which involves applying data-driven science to polymers, has attracted considerable research interest. However, developing adequate descriptors for polymers, particularly copolymers, to facilitate machine learning (ML) models with limited datasets remains a challenge. To address this issue, we computed sets of parameters, including reaction energies and activation barriers of elementary reactions in the early stage of radical polymerization, for 2500 radical-monomer pairs derived from 50 commercially available monomers and constructed an open database named “Copolymer Descriptor Database”. Furthermore, we built ML models using our descriptors as explanatory variables and physical properties such as the reactivity ratio, monomer conversion, monomer composition ratio, and molecular weight as objective variables. These models achieved high predictive accuracy, demonstrating the potential of our descriptors to advance the field of polymer informatics.
AB - Polymer informatics, which involves applying data-driven science to polymers, has attracted considerable research interest. However, developing adequate descriptors for polymers, particularly copolymers, to facilitate machine learning (ML) models with limited datasets remains a challenge. To address this issue, we computed sets of parameters, including reaction energies and activation barriers of elementary reactions in the early stage of radical polymerization, for 2500 radical-monomer pairs derived from 50 commercially available monomers and constructed an open database named “Copolymer Descriptor Database”. Furthermore, we built ML models using our descriptors as explanatory variables and physical properties such as the reactivity ratio, monomer conversion, monomer composition ratio, and molecular weight as objective variables. These models achieved high predictive accuracy, demonstrating the potential of our descriptors to advance the field of polymer informatics.
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U2 - 10.1039/d4dd00266k
DO - 10.1039/d4dd00266k
M3 - Article
AN - SCOPUS:85211072645
SN - 2635-098X
JO - Digital Discovery
JF - Digital Discovery
ER -