Demand forecasting: an alternative approach based on technical indicator Pbands

IF 7.6 1区 经济学 Q1 ECONOMICS Oeconomia Copernicana Pub Date : 2021-12-21 DOI:10.24136/oc.2021.035
A. Kolková, A. Ključnikov
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引用次数: 22

Abstract

Research background: Demand forecasting helps companies to anticipate purchases and plan the delivery or production. In order to face this complex problem, many statistical methods, artificial intelligence-based methods, and hybrid methods are currently being developed. However, all these methods have similar problematic issues, including the complexity, long computing time, and the need for high computing performance of the IT infrastructure. Purpose of the article: This study aims to verify and evaluate the possibility of using Google Trends data for poetry book demand forecasting and compare the results of the application of the statistical methods, neural networks, and a hybrid model versus the alternative possibility of using technical analysis methods to achieve immediate and accessible forecasting. Specifically, it aims to verify the possibility of immediate demand forecasting based on an alternative approach using Pbands technical indicator for poetry books in the European Quartet countries. Methods: The study performs the demand forecasting based on the technical analysis of the Google Trends data search in case of the keyword poetry in the European Quartet countries by several statistical methods, including the commonly used ETS statistical methods, ARIMA method, ARFIMA method, BATS method based on the combination of the Cox-Box transformation model and ARMA, artificial neural networks, the Theta model, a hybrid model, and an alternative approach of forecasting using Pbands indicator.  The study uses MAPE and RMSE approaches to measure the accuracy. Findings & value added: Although most currently available demand prediction models are either slow or complex, the entrepreneurial practice requires fast, simple, and accurate ones. The study results show that the alternative Pbands approach is easily applicable and can predict short-term demand changes. Due to its simplicity, the Pbands method is suitable and convenient to monitor short-term data describing the demand. Demand prediction methods based on technical indicators represent a new approach for demand forecasting. The application of these technical indicators could be a further forecasting models research direction. The future of theoretical research in forecasting should be devoted mainly to simplifying and speeding up. Creating an automated model based on primary data parameters and easily interpretable results is a challenge for further research.
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需求预测:一种基于技术指标频带的替代方法
研究背景:需求预测有助于公司预测采购并计划交付或生产。为了应对这一复杂问题,目前正在开发许多统计方法、基于人工智能的方法和混合方法。然而,所有这些方法都存在类似的问题,包括复杂性、计算时间长以及对IT基础设施的高计算性能的需求。文章目的:本研究旨在验证和评估使用谷歌趋势数据进行诗集需求预测的可能性,并比较统计方法、神经网络和混合模型的应用结果与使用技术分析方法实现即时和可访问预测的替代可能性。具体而言,它旨在验证基于使用Pbands技术指标的替代方法对欧洲四方国家的诗集进行即时需求预测的可能性。方法:本研究采用几种统计方法,包括常用的ETS统计方法、ARIMA方法、ARFIMA方法、基于Cox Box变换模型和ARMA相结合的BATS方法,在对欧洲四方国家关键词诗歌的谷歌趋势数据搜索技术分析的基础上,进行需求预测,人工神经网络、Theta模型、混合模型以及使用Pbands指标进行预测的替代方法。该研究使用MAPE和RMSE方法来测量准确性。发现和增值:尽管目前大多数可用的需求预测模型要么缓慢要么复杂,但创业实践需要快速、简单和准确的模型。研究结果表明,替代Pbands方法易于应用,可以预测短期需求变化。由于其简单性,Pbands方法适用于监测描述需求的短期数据。基于技术指标的需求预测方法是需求预测的一种新方法。这些技术指标的应用可以成为预测模型进一步研究的方向。预测理论研究的未来应该主要致力于简化和加速。基于主要数据参数和易于解释的结果创建自动化模型是进一步研究的挑战。
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来源期刊
CiteScore
13.70
自引率
5.90%
发文量
26
审稿时长
24 weeks
期刊介绍: The Oeconomia Copernicana is an academic quarterly journal aimed at academicians, economic policymakers, and students studying finance, accounting, management, and economics. It publishes academic articles on contemporary issues in economics, finance, banking, accounting, and management from various research perspectives. The journal's mission is to publish advanced theoretical and empirical research that contributes to the development of these disciplines and has practical relevance. The journal encourages the use of various research methods, including falsification of conventional understanding, theory building through inductive or qualitative research, first empirical testing of theories, meta-analysis with theoretical implications, constructive replication, and a combination of qualitative, quantitative, field, laboratory, and meta-analytic approaches. While the journal prioritizes comprehensive manuscripts that include methodological-based theoretical and empirical research with implications for policymaking, it also welcomes submissions focused solely on theory or methodology.
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