预测印度银行漂亮指数-时间序列方法

Rajveer S. Rawlin, Priyanjali Das
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引用次数: 0

摘要

预测股票市场指数和个股是投资领域的一个新兴领域。基本面分析和技术分析被投资者广泛用于分析和预测未来的股票收益。研究人员利用隐马尔可夫模型、遗传算法、神经网络等多种方法预测股价。时间序列分析在预测资产价格方面也很流行。过去十年,印度银行股是印度证券交易所表现最好的股票之一。银行漂亮指数包含了印度最大的银行,过去10年的表现好于大多数其他行业指数。ARIMA是一种单变量时间序列方法,可用于预测股票和股票指数价格。本研究旨在评估ARIMA模型预测银行漂亮指数的有效性。预测价值与实际价格不同,表明市场可能是有效的。此外,研究中未考虑的其他变量也可能被证明对银行漂亮指数的预测有影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting India's Bank Nifty Index - A Time Series Approach
Forecasting stock market indices and individual stocks has been an emerging area in the investing landscape. Fundamental and technical analysis are widely used by investors in analysing and predicting future stock returns. Researchers have used various methods to forecast stock prices such as Hidden Markov models, genetic algorithms, and neural networks. Time series analysis is also popular in forecasting asset prices. Indian banks are among the best-performing stocks on the Indian stock exchanges over the last decade. The bank nifty index contains India's largest banks and has outperformed most other sector indices over the past decade. ARIMA is a univariate time series approach that can be used to forecast stock and stock index prices. This study aimed to evaluate the effectiveness of the ARIMA model in forecasting the bank nifty index. Forecasted values differed from actual prices, suggesting markets may be efficient. Additionally other variables not considered in the study may also prove to be influential in forecasting the bank nifty index.
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