IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Data Mining for Economic Efficiency of Ecological Environment Based on Machine Learning Algorithms

Data Mining for Economic Efficiency of Ecological Environment Based on Machine Learning Algorithms
View Sample PDF
Author(s): Tingting Guo (Shaanxi Fashion Engineering University, China)
Copyright: 2025
Volume: 21
Issue: 1
Pages: 15
Source title: International Journal of Intelligent Information Technologies (IJIIT)
Editor(s)-in-Chief: Vijayan Sugumaran (Oakland University, Rochester, USA)
DOI: 10.4018/IJIIT.368838

Purchase

View Data Mining for Economic Efficiency of Ecological Environment Based on Machine Learning Algorithms on the publisher's website for pricing and purchasing information.

Abstract

This can help people better understand and grasp the laws of economic changes in the ecological environment and tap the tremendous value contained in the information, thereby promoting the research process of ecological environmental economics. This paper tentatively introduced ML algorithms and conducted in-depth research on innovative models for evaluating the economic efficiency of the ecological environment. Combining artificial neural networks and highly integrated sensor systems, a model for evaluating the economic efficiency of innovative ecological environments was proposed. Through comparative analysis of application experiments in two cities in a certain region, it can be concluded that the innovative ecological environmental economic efficiency evaluation model proposed in this article had an average improvement of about 20.3% in four evaluation indicators compared to the traditional ecological environmental economic efficiency evaluation model.

Related Content

Tingting Guo. © 2025. 15 pages.
Ran Hu, Xi Lin. © 2025. 18 pages.
Tiffanie Turner-Henderson. © 2025. 16 pages.
Anshu Saxena Arora, Luisa Saboia, Amit Arora, John R. McIntyre. © 2025. 13 pages.
Yuanlong Ye, Hui Zhang. © 2025. 17 pages.
Xin Gao, Yansong Wang, Fang Wang, Baoqun Zhang, Caie Hu, Jian Wang, Longfei Ma. © 2025. 19 pages.
Sidra Zaheer, Congzhi Ma, Yimeng Zhu, Sheri Vasinda. © 2025. 34 pages.
Body Bottom