Comparing Machine Learning Models and Hybrid Geostatistical Methods Using Environmental and Soil Covariates for Soil pH Prediction
出版年份 2020 全文链接
标题
Comparing Machine Learning Models and Hybrid Geostatistical Methods Using Environmental and Soil Covariates for Soil pH Prediction
作者
关键词
-
出版物
ISPRS International Journal of Geo-Information
Volume 9, Issue 4, Pages 276
出版商
MDPI AG
发表日期
2020-04-23
DOI
10.3390/ijgi9040276
参考文献
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