2022
DOI: 10.1088/1674-1056/ac5d2d
|View full text |Cite
|
Sign up to set email alerts
|

Evaluation of performance of machine learning methods in mining structure–property data of halide perovskite materials

Abstract: With the rapid development of artificial intelligence and machine learning (ML) methods, materials science is rapidly entering the era of data-driven materials informatics. ML models serve as the most crucial component, closely bridging material structure and properties. There is a considerable difference in the prediction performance of different ML methods for material systems. Herein, we evaluated models of three categories (linear, kernel, and nonlinear method), with twelve ML algorithms commonly used in t… Show more

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...
1
1
1
1

Citation Types

0
9
0

Year Published

2022
2022
2024
2024

Publication Types

Select...
7

Relationship

1
6

Authors

Journals

citations
Cited by 10 publications
(9 citation statements)
references
References 76 publications
0
9
0
Order By: Relevance
“…, Yb, Ho, Er, etc. ). The introduction of these elements can provide new potential opportunities to design novel functional materials and devices for optoelectronics, spintronics, thermoelectrics, etc.…”
mentioning
confidence: 99%
“…, Yb, Ho, Er, etc. ). The introduction of these elements can provide new potential opportunities to design novel functional materials and devices for optoelectronics, spintronics, thermoelectrics, etc.…”
mentioning
confidence: 99%
“…The results of the average 10-fold CV eliminated the randomization and we used the “random_state” with the closest average effect as the final hyperparameter. 38…”
Section: Methodsmentioning
confidence: 99%
“…The results of the average 10-fold CV eliminated the randomization and we used the ''random_state'' with the closest average effect as the final hyperparameter. 38 After finishing the prediction of phonon cutoff frequency (o), we added the prediction results into the feature set to build the preliminary model for predicting the dielectric breakdown strength of the materials. In order to improve the prediction accuracy and efficiency, we used the traversal method to screen out the best parameters of the model, including the appropriate features, the number of features and the proportion of the training set and test set.…”
Section: Machine Learning Model Constructionmentioning
confidence: 99%
“…ML have also been applied to predict properties thermodynamic properties such as atomization energies [ 96 ] and formation energies. [ 97,98 ] Electronic properties, such as carrier effective mass, [ 99 ] conductivity, [ 100 ] and density of states, [ 101 ] have also been the predicted results of ML. Moreover, ML also plays a crucial role in predicting the ion adsorption energy, [ 102 ] hysteresis and reproducibility, [ 103 ] area‐specific resistance, [ 104 ] etc.…”
Section: Application Of ML In Perovskites Fieldmentioning
confidence: 99%