SENSEX Price Fluctuation Forecasting Comparison Between Global Indices and Companies Making It

This article describes how the stock markets form the pivot point in any economy and the health of the economy is depicted by the major indices of that market. These indices tell the overall working of the markets. SENSEX of the sensitivity index of Bombay Stock Exchange (BSE) and is one of the major stock indices traded in India which is impacted by a large number of global and domestic factors. A fall in the stock market of the United States of America or any other global market triggers a change in SENSEX as well. Thus, showcasing the high-end correlation between global markets. In this article, the authors are analyze and forecast the impact of major world indices on the SENSEX using ANN's.

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