首页> 外文会议>Dragon 3 Final Results amp; Dragon 4 Kick-Off Symposium >BOOSTED REGRESSION TREES OUTPERFORMS SUPPORT VECTOR MACHINES IN PREDICTING (REGIONAL) YIELDS OFWINTER WHEAT FROM SINGLE AND CUMULATED DEKADAL SPOT-VGT DERIVED NORMALIZED DIFFERENCE VEGETATION INDICES
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BOOSTED REGRESSION TREES OUTPERFORMS SUPPORT VECTOR MACHINES IN PREDICTING (REGIONAL) YIELDS OFWINTER WHEAT FROM SINGLE AND CUMULATED DEKADAL SPOT-VGT DERIVED NORMALIZED DIFFERENCE VEGETATION INDICES

机译:从单一和累积的十点积分-VGT归一化归一化差异植被指数预测冬小麦(区域)产量时,有底的回归树优于支持向量机

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摘要

This paper compares two machine learning techniques to predict regional winter wheat yields. The models, based on Boosted Regression Trees (BRT) and Support Vector Machines (SVM), are constructed of Normalized Difference Vegetation Indices (NDVI) derived from low resolution SPOT VEGETATION satellite imagery. Three types of NDVI-related predictors were used: Single NDVI, Incremental NDVI and Targeted NDVI.rnBRT and SVM were first used to select features with high relevance for predicting the yield. Although the exact selections differed between the prefectures, certain periods with high influence scores for multiple prefectures could be identified. The same period of high influence stretching from March to June was detected by both machine learning methods. After feature selection, BRT and SVM models were applied to the subset of selected features for actual yield forecasting. Whereas both machine learning methods returned very low prediction errors, BRT seems to slightly but consistently outperform SVM.
机译:本文比较了两种机器学习技术来预测区域冬小麦产量。这些模型基于增强回归树(BRT)和支持向量机(SVM),由源自低分辨率SPOT植被卫星图像的归一化植被指数(NDVI)构成。使用了三种与NDVI相关的预测因子:单一NDVI,增量NDVI和目标NDVI。首先使用rnBRT和SVM选择具有高相关性的特征来预测产量。尽管各县之间的确切选择有所不同,但可以确定多个县具有较高影响力分数的某些时期。两种机器学习方法都检测到了从3月到6月的同一段高影响力时期。选择特征后,将BRT和SVM模型应用于所选特征的子集,以进行实际的产量预测。尽管两种机器学习方法均返回非常低的预测误差,但BRT似乎略胜一筹,但始终优于SVM。

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  • 会议地点 Wuhan(CN)
  • 作者单位

    KU Leuven (University of Leuven), Department of Earth and Environmental Sciences, Celestijnenlaan 200E, 3001 Leuven, Belgium Tel.: +32 16 32 07 75, email: michiel.stas@kuleuven.be;

    Flemish Institute of Technological Research (VITO), Department of Remote Sensing, Boeretang 200, 2400 Mol, Belgium;

    Institute for Nature and Forest Research (INBO), Kliniekstraat 11, BE-1000 Brussels, Belgium;

    Anhui Institution for Economic Research, Hefei 230001, China;

    KU Leuven (University of Leuven), Department of Earth and Environmental Sciences, Celestijnenlaan 200E, 3001 Leuven, Belgium;

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