Profit Forecast Accuracy of Time Series Model - A Case Study of Associated British Foods

IF 2.8 3区 经济学 Q2 BUSINESS, FINANCE International Journal of Finance & Economics Pub Date : 2023-10-21 DOI:10.61173/czn50w46
None Yunfan Sun
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Abstract

Accurate earnings per share (EPS) forecasting is crucial for financial decision-making. This study explores the potential of improving EPS forecasting accuracy by integrating economic lead indicators into time-series models. By incorporating macroeconomic factors like GDP growth and interest rates, the models capture the influence of the broader economic environment on a company’s financial performance. Results demonstrate that including economic lead indicators significantly enhances EPS predictability beyond traditional time-series models. This integration offers a forward-looking perspective, comprehensive analysis, and context to the forecasting process, enabling stakeholders to make more informed investment decisions and develop better strategies. Further research can investigate additional lead indicators, assess their impact in different industries, and develop hybrid forecasting models for refined EPS predictions.
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时间序列模型的利润预测准确性——以英国联合食品公司为例
准确的每股收益(EPS)预测对财务决策至关重要。本研究探讨将经济先行指标纳入时间序列模型,以提高EPS预测准确度的潜力。通过纳入GDP增长和利率等宏观经济因素,这些模型捕捉到更广泛的经济环境对公司财务业绩的影响。结果表明,与传统的时间序列模型相比,包含经济先行指标显著提高了EPS的可预测性。这种整合为预测过程提供了前瞻性的视角、全面的分析和背景,使利益相关者能够做出更明智的投资决策并制定更好的战略。进一步的研究可以调查更多的领先指标,评估它们在不同行业的影响,并开发混合预测模型来改进EPS预测。
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CiteScore
5.70
自引率
6.90%
发文量
143
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Issue Information Issue Information Issue Information Correction to “Outward foreign direct investment and economic growth in Romania: Evidence from non-linear ARDL approach” Banks, financial markets, and income inequality
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