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A Method for Inferring Polymers Based on Linear Regression and Integer Programming

24 August 2021
Ryota Ido
Shengjuan Cao
Jianshen Zhu
Naveed Ahmed Azam
Kazuya Haraguchi
Liang Zhao
H. Nagamochi
Tatsuya Akutsu
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Abstract

A novel framework has recently been proposed for designing the molecular structure of chemical compounds with a desired chemical property using both artificial neural networks and mixed integer linear programming. In this paper, we design a new method for inferring a polymer based on the framework. For this, we introduce a new way of representing a polymer as a form of monomer and define new descriptors that feature the structure of polymers. We also use linear regression as a building block of constructing a prediction function in the framework. The results of our computational experiments reveal a set of chemical properties on polymers to which a prediction function constructed with linear regression performs well. We also observe that the proposed method can infer polymers with up to 50 non-hydrogen atoms in a monomer form.

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