Data-Driven Techniques to Predict Formation Energy of Binary Materials
ORAL
Abstract
In this project the goal was to develop a machine learning model to predict the thermodynamic stability of a material material given simple atom properties. Descriptors for the model were created using the Mendeleev package on data from the AFLOW materials database. The resulting model achieved approximately a .66 accuracy score using a Random Forest regression model.
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Authors
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Johari Dramiga
Texas Lutheran University