宏观经济冲击、市场不确定性和投机泡沫:基于分解的印度股市预测模型

IF 9 1区 经济学 Q1 BUSINESS, FINANCE China Finance Review International Pub Date : 2024-05-31 DOI:10.1108/cfri-09-2023-0237
Indranil Ghosh, Tamal Datta Chaudhuri, Sunita Sarkar, Somnath Mukhopadhyay, Anol Roy
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引用次数: 0

摘要

目的 股票市场对家庭创造财富和公司筹集资金以扩大产能和实现增长至关重要。因此,市场参与者需要了解股票价格的走势。股市指数和个股价格反映了宏观经济环境,并受到外部和内部冲击的影响。必须将宏观经济冲击、市场不确定性和投机因素的影响区分开来,并分别加以研究,以便进行预测。为了帮助家庭、企业和政策制定者,本文针对印度不同时期的不同市场状态和不同程度的不确定性,提出了一个基于细粒度分解的预测框架。 设计/方法/途径使用集合经验模式分解(EEMD)和模糊均值聚类(FCM)算法将股票价格分解为短期、中期和长期成分。多元宇宙优化(MVO)用于结合极端梯度提升回归(XGBR)、Facebook 先知和支持向量回归(SVR)进行预测。研究结果我们发现,历史波动率、预期市场不确定性、振荡器和宏观经济变量可以解释股票价格的不同组成部分,它们的影响因行业和市场状态而异。即使在 COVID-19 大流行和俄乌战争期间,所提出的框架也能进行有效预测。效率指标表明了该方法的稳健性。研究结果表明,大盘股的可预测性相对更高。实际意义本文提出的方法对交易员、基金经理和财务顾问有实际用途。政策制定者可能会发现它有助于评估宏观经济冲击的影响和降低市场波动性。原创性/价值开发了基于细粒度分解的预测框架,并分离了不同时间尺度和宏观经济时期的解释变量的影响。
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Macroeconomic shocks, market uncertainty and speculative bubbles: a decomposition-based predictive model of Indian stock markets

Purpose

Stock markets are essential for households for wealth creation and for firms for raising financial resources for capacity expansion and growth. Market participants, therefore, need an understanding of stock price movements. Stock market indices and individual stock prices reflect the macroeconomic environment and are subject to external and internal shocks. It is important to disentangle the impact of macroeconomic shocks, market uncertainty and speculative elements and examine them separately for prediction. To aid households, firms and policymakers, the paper proposes a granular decomposition-based prediction framework for different time periods in India, characterized by different market states with varying degrees of uncertainty.

Design/methodology/approach

Ensemble empirical mode decomposition (EEMD) and fuzzy-C-means (FCM) clustering algorithms are used to decompose stock prices into short, medium and long-run components. Multiverse optimization (MVO) is used to combine extreme gradient boosting regression (XGBR), Facebook Prophet and support vector regression (SVR) for forecasting. Application of explainable artificial intelligence (XAI) helps identify feature contributions.

Findings

We find that historic volatility, expected market uncertainty, oscillators and macroeconomic variables explain different components of stock prices and their impact varies with the industry and the market state. The proposed framework yields efficient predictions even during the COVID-19 pandemic and the Russia–Ukraine war period. Efficiency measures indicate the robustness of the approach. Findings suggest that large-cap stocks are relatively more predictable.

Research limitations/implications

The paper is on Indian stock markets. Future work will extend it to other stock markets and other financial products.

Practical implications

The proposed methodology will be of practical use for traders, fund managers and financial advisors. Policymakers may find it useful for assessing the impact of macroeconomic shocks and reducing market volatility.

Originality/value

Development of a granular decomposition-based forecasting framework and separating the effects of explanatory variables in different time scales and macroeconomic periods.

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来源期刊
CiteScore
12.40
自引率
1.20%
发文量
112
期刊介绍: China Finance Review International publishes original and high-quality theoretical and empirical articles focusing on financial and economic issues arising from China's reform, opening-up, economic development, and system transformation. The journal serves as a platform for exchange between Chinese finance scholars and international financial economists, covering a wide range of topics including monetary policy, banking, international trade and finance, corporate finance, asset pricing, market microstructure, corporate governance, incentive studies, fiscal policy, public management, and state-owned enterprise reform.
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