智能政策框架:自然资源保护、知识和大数据分析

IF 15.6 1区 管理学 Q1 BUSINESS
Nina Xiao, Xianhe Qu
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引用次数: 0

摘要

在环境压力日益加剧的今天,传统的自然资源保护方法面临着诸多挑战。利用大数据分析技术支持环境政策的制定,已成为提高环境政策制定效率和科学性的重要途径。为了提高结果的可靠性,本研究采用了两种算法:贝叶斯推理和基于灰色关联分析的加权支持向量机算法。贝叶斯推理构建了一个条件概率网络,对多因素环境中的复杂关系进行建模和分析,可以动态更新各种因素的影响,为自然资源保护政策提供精确的评估。这种方法综合了先验信息和观测数据,保证了预测的连续性和准确性。基于灰色关联分析的加权支持向量机算法通过识别多维数据中的关键因素并对不同特征分配适当的权重来提高预测模型的准确性,以解决数据不完整或有噪声带来的挑战。通过两种方法的结合,本研究在提高预测精度的同时,有效地处理了复杂的数据和相互作用,为政策的制定和调整提供了可靠的数据支持和科学依据。研究表明,这些方法不仅可以有效地预测和评估政策的影响,还可以为决策者提供实时数据支持,从而实现更精确的决策。尽管在数据处理和政策预测精度方面仍存在不足,但本研究提出的方法为解决这些问题提供了新的思路和工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent policy framework: Natural resource conservation, knowledge and big data analytics
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.
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来源期刊
CiteScore
16.10
自引率
12.70%
发文量
118
审稿时长
37 days
期刊介绍: The Journal of Innovation and Knowledge (JIK) explores how innovation drives knowledge creation and vice versa, emphasizing that not all innovation leads to knowledge, but enduring innovation across diverse fields fosters theory and knowledge. JIK invites papers on innovations enhancing or generating knowledge, covering innovation processes, structures, outcomes, and behaviors at various levels. Articles in JIK examine knowledge-related changes promoting innovation for societal best practices. JIK serves as a platform for high-quality studies undergoing double-blind peer review, ensuring global dissemination to scholars, practitioners, and policymakers who recognize innovation and knowledge as economic drivers. It publishes theoretical articles, empirical studies, case studies, reviews, and other content, addressing current trends and emerging topics in innovation and knowledge. The journal welcomes suggestions for special issues and encourages articles to showcase contextual differences and lessons for a broad audience. In essence, JIK is an interdisciplinary journal dedicated to advancing theoretical and practical innovations and knowledge across multiple fields, including Economics, Business and Management, Engineering, Science, and Education.
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