深度学习模型能提高农产品价格预测的准确性吗?来自印度的启示

Q1 Economics, Econometrics and Finance
Ranjit Kumar Paul, Md Yeasin, C. Tamilselvi, A. K. Paul, Purushottam Sharma, Pratap S. Birthal
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引用次数: 0

摘要

预测农产品价格一直是研究人员和政策制定者面临的一个长期挑战。不同商品的价格表现出不同的行为,从蔬菜的高波动性、非线性和复杂性到谷物的低波动性和线性模式。这种不同的模式需要使用数据驱动的模型来更精确地捕获这种复杂的行为。本研究旨在检验深度学习模型在处理各种类型价格数据集方面的效率。采用了门控循环单元(GRU)、长短期记忆(LSTM)和循环神经网络(RNN)三种深度学习模型,并与随机游走漂移、自回归综合移动平均(ARIMA)、人工神经网络(ANN)和支持向量回归(SVR)等基准模型进行了比较。本文利用印度143个市场19种农产品2010年1月至2022年12月的月度批发价格数据来说明模型的性能。采用不同的精度度量进行了实证比较。对于谷物和豆类等波动性较小的作物,预测精度最高,而对于蔬菜等波动性较大的作物,预测精度相对较低。利用Diebold Mariano检验及其多元检验,考察了不同模型预测精度的显著差异。该研究得出结论,深度学习技术在广泛的商品中优于机器学习和随机模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Can Deep Learning Models Enhance the Accuracy of Agricultural Price Forecasting? Insights From India

Forecasting agricultural commodity prices has been a long-standing challenge for researchers and policymakers. The diverse behaviors exhibited by price of different commodities, ranging from the high volatility, nonlinearity, and complexity of vegetables to the lower volatility and linear patterns of cereals. This different pattern necessitates the use of data-driven models to more precisely capture this complex behavior. This study aims to examine the efficiency of deep learning models in handling various types of price datasets. Three deep learning models, namely, gated recurrent unit (GRU), long short-term memory (LSTM), and recurrent neural network (RNN), are employed and compared against benchmark models including random walk with drift, autoregressive integrated moving average (ARIMA), artificial neural networks (ANN), and support vector regression (SVR). The monthly wholesale price data during January 2010 to December 2022 for 19 agricultural commodities across 143 markets in India have been utilized to illustrate the performance of models. Empirical comparison has been carried out by using different accuracy measures. The predictive accuracy is the highest for less-volatile crops such as cereals and pulses, while it is comparatively lower for crops with high-volatility like vegetables. The significant difference in prediction accuracy of different models has also been investigated with the help of Diebold Mariano test and its multivariate version. The study concluded that deep learning techniques outperformed machine learning and stochastic models across a wide range of commodities.

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来源期刊
Intelligent Systems in Accounting, Finance and Management
Intelligent Systems in Accounting, Finance and Management Economics, Econometrics and Finance-Finance
CiteScore
6.00
自引率
0.00%
发文量
0
期刊介绍: Intelligent Systems in Accounting, Finance and Management is a quarterly international journal which publishes original, high quality material dealing with all aspects of intelligent systems as they relate to the fields of accounting, economics, finance, marketing and management. In addition, the journal also is concerned with related emerging technologies, including big data, business intelligence, social media and other technologies. It encourages the development of novel technologies, and the embedding of new and existing technologies into applications of real, practical value. Therefore, implementation issues are of as much concern as development issues. The journal is designed to appeal to academics in the intelligent systems, emerging technologies and business fields, as well as to advanced practitioners who wish to improve the effectiveness, efficiency, or economy of their working practices. A special feature of the journal is the use of two groups of reviewers, those who specialize in intelligent systems work, and also those who specialize in applications areas. Reviewers are asked to address issues of originality and actual or potential impact on research, teaching, or practice in the accounting, finance, or management fields. Authors working on conceptual developments or on laboratory-based explorations of data sets therefore need to address the issue of potential impact at some level in submissions to the journal.
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