Analyzing Stock Market Trends with Time Series Analysis

Authors

  • Vansh Aggarwal

DOI:

https://doi.org/10.36676/jrps.2023-v14i4-010

Keywords:

underlying drivers of stock, influenced, investors, analysts forecast

Abstract

The stock market is a vital component of modern economies, serving as a mechanism for companies to raise capital and for investors to participate in the growth of those companies. It is a place where investors can buy and sell ownership shares in publicly traded companies. Companies issue shares of their stock to raise capital for growth and expansion, and investors can buy and sell these shares to earn a return on their investment. The stock market serves several important functions in the economy. It provides a mechanism for companies to raise capital by issuing shares of their stock to fund growth and expansion. Investors can buy shares of stock and earn a return on their investment through dividends and/or capital gains. The stock market provides investors with a liquid market where they can buy and sell shares of stock quickly and easily. The stock market helps to determine the price of a company's stock based on supply and demand.
Predicting the trend of the stock market is important for investors, traders, and policymakers. It helps investors and traders make informed decisions about buying, selling, or holding stocks, which helps them maximize their returns and minimize their risks. (Source: Investopedia). Predicting the trend of the stock market can help investors and traders identify potential risks and take measures to mitigate them. This can help them avoid losses and protect their investments. The stock market is often seen as a barometer of the economy. Predicting the trend of the stock market can help policymakers monitor the health of the economy and take measures to address any issues. The stock market is influenced by a wide range of factors, including investor sentiment, economic data, and geopolitical events. Predicting the trend of the stock market can provide insights into market sentiment and help investors and traders understand the underlying drivers of stock prices. The stock market is also often used as a proxy for corporate earnings. Predicting the trend of the stock market can help investors and analysts forecast future corporate earnings and make more accurate valuations of individual stocks.

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Published

30-09-2023

How to Cite

Vansh Aggarwal. (2023). Analyzing Stock Market Trends with Time Series Analysis. International Journal for Research Publication and Seminar, 14(4), 76–83. https://doi.org/10.36676/jrps.2023-v14i4-010