Forecasting of P/E Ratio for the Indian Equity Market Stock Index NIFTY 50 Using Neural Networks

R. G. Goud, Prof. M. Krishna Reddy
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Abstract

The ratio of present price of an index to its earnings is known as its price to earnings ratio denoted by P/E ratio. A high P/E means that an index’s price is high relative to earnings and overvalued. Its low value means that price is low relative to earnings and undervalued. A potential investor prefers an index with low P/E ratio. Therefore, the movement of the P/E ratio plays a crucial role in understanding the behaviour of the stock market. In this paper the modelling of the P/E ratio for the Indian equity market stock index NIFTY 50 using NNAR, MLP and ELM neural networks models and the traditional ARIMA model with Box-Jenkin’s method is carried out. It is found that MLP and NNAR neural networks models performed better than that of ARIMA model.
利用神经网络预测印度股票市场股票指数 NIFTY 50 的市盈率
指数的现价与其收益的比率称为市盈率,用 P/E 表示。市盈率高意味着指数价格相对于收益高,价值被高估。市盈率低则表示价格相对于收益较低,价值被低估。潜在投资者更喜欢市盈率低的指数。因此,市盈率的变化对理解股市行为起着至关重要的作用。本文使用 NNAR、MLP 和 ELM 神经网络模型以及使用 Box-Jenkin 方法的传统 ARIMA 模型,对印度股市股指 NIFTY 50 的市盈率进行了建模。结果发现,MLP 和 NNAR 神经网络模型的表现优于 ARIMA 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。
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