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BIMSA Topology Seminar
Persistent magnitude for the quantitative analysis of the structure and stability of Carboranes
Persistent magnitude for the quantitative analysis of the structure and stability of Carboranes
演讲者
时间
2024年09月26日 14:00 至 16:00
地点
A3-2a-302
线上
Zoom 482 240 1589
(BIMSA)
摘要
Magnitude, similar to concepts like volume, cardinality, or Euler characteristic, has become a key focus in combinatorics and topology. Recent advancements in topological data analysis and persistent homology have emphasized its importance. Persistent magnitude, a newly highlighted invariant introduced by Govc and Hepworth, has emerged as a notable subject of interest. In this talk, we apply persistent magnitude to analyze and predict the stability of closo-carborane structures.
Firstly, we assess the stability of carboranes by employing cross-validation with different magnitude features. The Pearson correlation coefficients for stability predictions using three distinct magnitude features are 0.900, 0.882, and 0.883, respectively. These results are comparable to the Pearson correlation coefficient of 0.881 obtained when using a single feature based on persistent homology.
Secondly, the utilization of magnitude features to predict the HOMO, LUMO, and HOMO-LUMO gaps of carboranes involves conducting eight gradient-boosting regressions for each scenario. The lowest correlation coefficients observed are 0.9056, 0.9385, and 0.9427, respectively. These findings highlight the promising performance of persistent magnitude features in the analysis of material structure and stability.
Firstly, we assess the stability of carboranes by employing cross-validation with different magnitude features. The Pearson correlation coefficients for stability predictions using three distinct magnitude features are 0.900, 0.882, and 0.883, respectively. These results are comparable to the Pearson correlation coefficient of 0.881 obtained when using a single feature based on persistent homology.
Secondly, the utilization of magnitude features to predict the HOMO, LUMO, and HOMO-LUMO gaps of carboranes involves conducting eight gradient-boosting regressions for each scenario. The lowest correlation coefficients observed are 0.9056, 0.9385, and 0.9427, respectively. These findings highlight the promising performance of persistent magnitude features in the analysis of material structure and stability.