Treffer: Clustering and Artificial Intelligence-based Prediction of Ecologically Sustainable Species Introductions.

Title:
Clustering and Artificial Intelligence-based Prediction of Ecologically Sustainable Species Introductions.
Authors:
Shuqiao Liu1 liushuqiao@qq.com, Zhao Zhang2 zhangzhao333@hotmail.com, Hongyan Zhou3 zhou321yan@163.com, Xue-Bo Chen4 xuebochen@126.com
Source:
IAENG International Journal of Computer Science. Apr2025, Vol. 52 Issue 4, p1159-1168. 10p.
Database:
Supplemental Index

Weitere Informationen

There is a growing interest in sustainable ecosystem development, which includes methods such as scientific modeling, environmental assessment, and development forecasting and planning. However, due to insufficient survey data in many current development areas, development progress is delayed and stagnant. To address this situation, this paper proposes a SWOT-TOPSIS-K-Means (STK) data analysis and evaluation model to analyze ecological factors, which can realize a comprehensive and complete data analysis with fewer samples. Decision tree (DT), random forest (RF), and multilayer perceptron (MLP) neural network models were constructed from the results of this analysis, and statistical tests such as r-squared, mean absolute error, and cross-validation are used to further confirm the performance efficiency of the computational prediction models to provide real-time prediction research solutions. For this purpose, data from research scholars on species introduction in ecosystem development were selected for testing. The results show that the proposed assessment model and modeling results satisfy all accuracy-related acceptance requirements. Among them, MLP is better than DT and RF. In summary, the STK assessment model and the MLP prediction model can provide a basis for the selection and development of ecological factors. [ABSTRACT FROM AUTHOR]