Input Variable Selection for Oil Palm Plantation Productivity Prediction Model

A. P. Suryotomo, A. Harjoko
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引用次数: 0

Abstract

Purpose: This study aims to implement and improve a wrapper-type Input Variable Selection (IVS) to the prediction model of oil palm production utilizing oil palm expert knowledge criteria and distance-based data sensitivity criteria in order to measure cost-saving in laboratory leaf and soil sample testing.Methodology: The proposed approach consists of IVS process, searching the best prediction model based on the selected variables, and analyzing the cost-saving in laboratory leaf and soil sample testing.Findings/result: The proposed method managed to effectively choose 7 from 19 variables and achieve 81.47% saving from total laboratory sample testing cost.Value: This result has the potential to help small stakeholder oil palm planter to reduce the cost of laboratory testing without losing important information from their plantation.
油棕种植园生产力预测模型的输入变量选择
目的:本研究旨在利用油棕专家知识标准和基于距离的数据敏感性标准,实现并改进油棕产量预测模型的包装型输入变量选择(IVS),以衡量实验室叶片和土壤样品检测的成本节约。方法:该方法包括IVS过程,根据所选变量搜索最佳预测模型,并分析实验室叶片和土壤样品检测的成本节约。发现/结果:该方法从19个变量中有效选择了7个变量,节约实验室样品检测总成本81.47%。价值:这一结果有可能帮助小利益相关者油棕种植者减少实验室测试的成本,而不会丢失他们种植园的重要信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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发文量
7
审稿时长
24 weeks
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