2022
DOI: 10.1016/j.apcatb.2022.121530
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A generalized machine learning framework to predict the space-time yield of methanol from thermocatalytic CO2 hydrogenation

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Cited by 73 publications
(48 citation statements)
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“…Such endeavors, which ensure that the predictions are explainable and in alignment with the existing domain knowledge, will instill a greater sense of trust and acceptability within the community, specifically from an experimentalist point of view. For this purpose, the agnostic ML explainer, SHAP, was coupled with the random forest algorithm to determine the impact of the input features on the prediction of STY HA . , The overall influence of each feature was calculated by normalized SHAP values (Figure ).…”
Section: Resultsmentioning
confidence: 99%
See 3 more Smart Citations
“…Such endeavors, which ensure that the predictions are explainable and in alignment with the existing domain knowledge, will instill a greater sense of trust and acceptability within the community, specifically from an experimentalist point of view. For this purpose, the agnostic ML explainer, SHAP, was coupled with the random forest algorithm to determine the impact of the input features on the prediction of STY HA . , The overall influence of each feature was calculated by normalized SHAP values (Figure ).…”
Section: Resultsmentioning
confidence: 99%
“…Furthermore, all of the input features used in the study were checked for correlation among themselves. Correlated variables tend to increase the model complexity without adding significance to its prediction capabilities . The correlation among the input features was calculated by Pearson’s correlation coefficient (PCC) given in eq . PCC = ( x i x mean ) ( y i y mean ) false( x i x mean false) 2 ( y i y mean ) 2 where PCC is the Pearson’s correlation coefficient; x i and x mean are the sample and mean values of the x variable, respectively; and y i and y mean are the sample and mean values of the y variable, respectively.…”
Section: Methodsmentioning
confidence: 99%
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“…179 On the other hand, data mining algorithms can also be used to extract data from existing published papers, and these data come from real materials and real test conditions. 180 Of course, we still need to explore how to integrate "real data" from different data sources, which places high demands on data preprocessing and standardization procedures.…”
Section: Databasementioning
confidence: 99%