评价改造项目的价值的机器学习:跨国神学

Eka Sudarmaji, Sri Ambarwati, Herlan Herlan
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引用次数: 0

摘要

信用评估是最早将机器学习技术应用于经济学的领域之一。改造保护的信誉对ESCO在确定信用评分时至关重要。本研究旨在开发一个改造评估模型,以利用机器学习与多项逻辑(MNL)和生命周期成本分析(LCCA)。本研究旨在从印尼能源效率产业融资选择的评估中,提供一个信用评估模型。目标是减少预测误差的总和,包括偏差、方差和基本误差。研究结果表明,机器学习方法可能会产生更高的预测准确性。此外,机器学习还有望自动捕获输入特征与选择结果之间的非线性关系。这项研究还有望借鉴机器学习的思想,开发一种改进信誉研究的增强模型,并提出新的研究方向。
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PEMBELAJARAN MESIN UNTUK MENILAI KELAYAKAN KREDIT PROYEK RETROFIT: MULTINOMIAL LOGIT
Creditworthiness assessment was one of the first areas to apply machine learning techniques in economics. The creditworthiness of retrofit protection was vital for ESCO in determining the credit scoring. This study aimed to develop a retrofitting assessment model to utilize machine learning with multinomial logistic (MNL) and life cycle cost analysis (LCCA). This study aims to provide an evaluation of creditworthiness models from the evaluation of financing alternative in Indonesia's energy efficiency industry. The goal was to reduce the total of prediction error, which comprised bias, variance, and fundamental error. The findings demonstrated that machine learning approaches might yield significantly greater prediction accuracy. In addition, machine learning is also expected to automatically capture the nonlinear relationship between input features and selected results. This study is also expected to draw on ideas from machine learning to develop an enhanced model for retrofitting creditworthiness research and suggest new research directions.
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