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A method of assessing near-view scenic beauty models: A comparison of neural networks and multiple linear regression

机译:一种评估近景景区模型的方法:神经网络和多元线性回归的比较

摘要

With recent advances in artificial intelligence, new methods are being developed that provide faster, and more consistent predictions for data in complex environments. In the field of landscape assessment, where an array of physical variables effect environmental perception, natural resource managers need tools to assist them in isolating the significant predictors critical for the protection and management of these resources. Recent studies that have utilized neural networks to assist in developing predictive models of scenic beauty that have typically utilized linear regression techniques have found limited success. The goal of this research is to compare NN's with linear regression models to determine their efficiency predictive capability for assessing near view scenic beauty in the Cedar City District of the Dixie National forest (DNF). Results of this study strongly conclude that neural networks are consistently better predictors of near view scenic beauty in spruce/fir dominated forests than hierarchical linear regression models.
机译:随着人工智能的最新进展,正在开发新的方法,这些方法可为复杂环境中的数据提供更快,更一致的预测。在景观评估领域中,一系列物理变量会影响环境感知,自然资源管理者需要工具来帮助他们隔离对于保护和管理这些资源至关重要的重要预测因子。利用神经网络来协助开发风景秀丽的预测模型的最近研究(通常利用线性回归技术)取得了有限的成功。这项研究的目的是将NN与线性回归模型进行比较,以确定它们的效率预测能力,以评估Dixie国家森林(DNF)锡达市区的近景风景名胜。这项研究的结果有力地得出结论,与分层线性回归模型相比,在以云杉/冷杉为主的森林中,神经网络始终是更好的近景美景预测指标。

著录项

  • 作者

    Flynn Myles M. 1966-;

  • 作者单位
  • 年度 1997
  • 总页数
  • 原文格式 PDF
  • 正文语种 en_US
  • 中图分类

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