结合机器学习和统计模型预测的超越 LASSO 函数

IF 2 4区 社会学 Q1 SOCIAL SCIENCES, INTERDISCIPLINARY Sage Open Pub Date : 2024-08-12 DOI:10.1177/21582440241262695
Uğur Şener, Salvatore Joseph Terregrossa
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引用次数: 0

摘要

本研究的目的是开发准确估算电动汽车需求的方法,这对企业决策的各个方面都至关重要,如最优价格、生产水平、相应的资本和劳动力数量,以及供应链、库存控制、资本融资和运营费用管理。所使用的预测方法包括统计技术(自回归综合移动平均[ARIMA]和多项式回归)、机器学习(非线性自回归神经网络[NAR])、深度学习(长短期记忆[LSTM])、混合预测和组合预测。关于后一种方法,我们的研究尝试了四种不同的组合模型方法,包括引入一种使用超越 LASSO 函数的原始、新颖的组合方法,该方法用于形成由 NAR、ARIMA 和多项式回归模型生成的预测组合。就大多数预测误差统计而言,基于 LASSO 的组合模型优于所有其他模型;其中均方根误差 (RMSE) 和平均绝对百分比误差 (MAPE) 值分别比组成模型预测的平均水平低 4.5% 和 8%。我们的实证研究结果的主要意义在于,采用组合模型方法,而不是依赖任何特定的单一模型,可以提高需求预测的准确性。此外,鉴于该研究基于 LASSO 的组合模型性能优越,采用该模型预测电动汽车需求可能会在一系列组织层面上优化企业决策,而这些决策的前提是准确的需求函数估计。
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A Transcendental LASSO Function for Combining Machine Learning and Statistical Model Forecasts
The aim of the study is the development of methodology for accurate estimation of electric vehicle demand; which is paramount regarding various aspects of the firms decision-making such as optimal price, production level, and corresponding amounts of capital and labor; as well as supply chain, inventory control, capital financing, and operational expenses management. The forecasting methods utilized include statistical techniques (autoregressive integrated moving average [ARIMA], and polynomial regression), machine learning (nonlinear autoregressive neural network [NAR]), deep learning (long short-term memory [LSTM]), hybrid and combination forecasting. With regard to the latter method, our study experiments with four different combining model approaches, including the introduction of an original, novel combining method with the employment of a transcendental LASSO function, which is used to form combinations of forecasts generated by the NAR, ARIMA, and polynomial regression models. The LASSO-based combining model proved superior to all other models, for the majority of forecast error statistics; where the root mean square error (RMSE) and mean absolute percentage error (MAPE) values are 4.5% and 8% respectively lower than the average level of the component model forecasts. The major implications of our empirical findings are that greater accuracy in demand forecasting can be achieved with a combining model approach, rather than reliance on any particular, singular model. Furthermore, given its superior performance, the employment of the studys LASSO-based combining model to forecast electric vehicle demand may lead to optimal firm decision-making over a range of organizational facets, which is predicated on accurate demand function estimation.
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来源期刊
Sage Open
Sage Open SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
3.40
自引率
5.00%
发文量
721
审稿时长
12 weeks
期刊最新文献
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