利用深度学习进行多步骤商品预测

IF 1.5 Q3 AGRICULTURAL ECONOMICS & POLICY Agricultural Finance Review Pub Date : 2024-09-02 DOI:10.1108/afr-08-2023-0105
Siddhartha S. Bora, Ani L. Katchova
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引用次数: 0

摘要

目的有关商品市场指标的长期预测在为政府和市场参与者的政策和投资决策提供信息方面发挥着重要作用。我们首先提出了一个监督学习问题,并使用传统计量经济学模型设定了预测准确性基准。结果我们发现,虽然美国农业部(USDA)的基线预测在较短的预测范围内表现较好,但深度神经网络在较长预测范围内的表现则有所改善。本研究展示了深度学习方法在农业商品多视角预测中的应用,这与目前用于制作此类预测的方法有所不同。
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Multi-step commodity forecasts using deep learning

Purpose

Long-term forecasts about commodity market indicators play an important role in informing policy and investment decisions by governments and market participants. Our study examines whether the accuracy of the multi-step forecasts can be improved using deep learning methods.

Design/methodology/approach

We first formulate a supervised learning problem and set benchmarks for forecast accuracy using traditional econometric models. We then train a set of deep neural networks and measure their performance against the benchmark.

Findings

We find that while the United States Department of Agriculture (USDA) baseline projections perform better for shorter forecast horizons, the performance of the deep neural networks improves for longer horizons. The findings may inform future revisions of the forecasting process.

Originality/value

This study demonstrates an application of deep learning methods to multi-horizon forecasts of agri-cultural commodities, which is a departure from the current methods used in producing these types of forecasts.

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来源期刊
Agricultural Finance Review
Agricultural Finance Review AGRICULTURAL ECONOMICS & POLICY-
CiteScore
3.70
自引率
18.80%
发文量
24
期刊介绍: Agricultural Finance Review provides a rigorous forum for the publication of theory and empirical work related solely to issues in agricultural and agribusiness finance. Contributions come from academic and industry experts across the world and address a wide range of topics including: Agricultural finance, Agricultural policy related to agricultural finance and risk issues, Agricultural lending and credit issues, Farm credit, Businesses and financial risks affecting agriculture and agribusiness, Agricultural policies affecting farm or agribusiness risks and profitability, Risk management strategies including the use of futures and options, Rural credit in developing economies, Microfinance and microcredit applied to agriculture and rural development, Financial efficiency, Agriculture insurance and reinsurance. Agricultural Finance Review is committed to research addressing (1) factors affecting or influencing the financing of agriculture and agribusiness in both developed and developing nations; (2) the broadest aspect of risk assessment and risk management strategies affecting agriculture; and (3) government policies affecting farm profitability, liquidity, and access to credit.
期刊最新文献
Multi-step commodity forecasts using deep learning Regional analysis of agricultural bank liquidity Data-driven determination of plant growth stages for improved weather index insurance design Utilizing FSA conservation loan programs to support farm conservation activities Evaluation of alternative farm safety net program combination strategies
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