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Addressing Forest Management Challenges by Refining Tree Cover Type Classification with Machine Learning Models

机译:通过使用机器学习模型完善树木覆盖类型分类来应对森林管理挑战

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The goals of this paper were twofold: to continue and refine previous research in the topic of tree cover type classification by harnessing modern machine learning models, and to extend the conclusions of that work to demonstrate that results gained from such models can be used to assist U.S. land management agencies in current challenges they face. Using the same dataset as the past study, an artificial neural network was constructed and compared with three baseline traditional machine learning models: Naïve Bayes, Decision Tree, and K-Nearest Neighbor. The artificial neural network achieved 97.01% ac-curacy while the best-performing traditional classifier, K-Nearest Neighbor, managed 74.61%. This mirrored the earlier results, but with higher overall accuracy on both counts. Specifically, the neural network performed 26.43% better than before, showing not only advances in machine learning algorithms over the past 18 years, but also that accuracy is now high enough to apply practically to land management issues where natural resource inventory is time-consuming and expensive.
机译:本文的目标是双重的:通过利用现代机器学习模型来继续和完善先前在树木覆盖类型分类方面的研究,并扩展该工作的结论以证明从这种模型中获得的结果可用于辅助美国土地管理机构面临的当前挑战。使用与过去研究相同的数据集,构建了一个人工神经网络,并将其与三种基线传统机器学习模型进行比较:朴素贝叶斯,决策树和K最近邻居。人工神经网络的准确率达到97.01%,而表现最佳的传统分类器K-最近邻则达到74.61%。这反映了较早的结果,但在两个方面都具有较高的总体准确性。具体来说,神经网络的性能比以前提高了26.43%,这不仅表明了过去18年机器学习算法的进步,而且该精度现在已经足够高,可以实际应用于耗时自然资源清点的土地管理问题和昂贵。

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