Intelligent policy framework : natural resource conservation, knowledge and big data analytics
Nina Xiao, Xianhe Qu
In today's context of escalating environmental pressure, traditional methods of natural resource conservation face numerous challenges. The use of big data analytics to support the formulation of environmental policies has become a crucial approach for enhancing the efficiency and scientific basis of these policies. To enhance the reliability of the results, this study employed two algorithms: Bayesian inference and a weighted Support Vector Machine (SVM) algorithm based on the grey relational analysis. Bayesian inference constructs a conditional probability network to model and analyze complex relationships in a multi-factor environment, allowing for dynamic updates of the influences of various factors and providing precise evaluations of natural resource protection policies. This approach integrates prior information and observational data to ensure the continuity and accuracy of predictions. The weighted SVM algorithm based on grey relational analysis improves the accuracy of the predictive model by identifying key factors within multi-dimensional data and assigning appropriate weights to different features to address the challenges posed by incomplete or noisy data. By combining these two methods, this study effectively handled complex data and interactions while enhancing prediction accuracy, thereby providing reliable data support and a scientific basis for policy formulation and adjustment. The study revealed that these methods not only effectively predict and assess the impact of policies, but also provide policymakers with real-time data support, enabling more precise decision-making. Although shortcomings remain in data processing and policy prediction accuracy, the methods proposed in this study offer new ideas and tools for addressing these issues.
Year of publication: |
2025
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Authors: | Xiao, Nina ; Qu, Xianhe |
Published in: |
Journal of innovation & knowledge : JIK. - Amsterdam : Elsevier, ISSN 2444-569X, ZDB-ID 2885454-8. - Vol. 10.2025, 2, Art.-No. 100662, p. 1-10
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Subject: | Big data analytics | Natural resource conservation | Intelligent policy framework | Bayesian inference | Grey relational degree (GRD) | Support vector machine (SVM) | Big Data | Big data | Data Mining | Data mining | Mustererkennung | Pattern recognition |
Saved in:
freely available
Type of publication: | Article |
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Type of publication (narrower categories): | Aufsatz in Zeitschrift ; Article in journal |
Language: | English |
Other identifiers: | 10.1016/j.jik.2025.100662 [DOI] |
Classification: | Q28 - Government Policy ; C63 - Computational Techniques ; C53 - Forecasting and Other Model Applications |
Source: | ECONIS - Online Catalogue of the ZBW |
Persistent link: https://www.econbiz.de/10015331637
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