Analysis and Prediction of forex has gained immense value in today's economy. The stock price prediction is a difficult process owing to the irregularities in stock prices. Every trader wants to know if the pattern has been repeated in past to know what the possible output of the current situation will be. The primary objective is to propose a methodology that will use a historical dataset and provide a more accurate prediction on stock price. In this paper, we will be using machine learning pattern recognition algorithm on forex tick dataset. The learned model then will produce pattern from the given dataset and on the pattern of increasing or decreasing, the buyer will initiate a buy or sell the stock respectively. We will use python coding to execute the algorithm in jupyter notebook. Matplot library will help us to perform graphing in the process and Numpy will be helpful in doing statistical analysis of data.
CITATION STYLE
Sadhasivam, J., Arun, M., Deepa, R., Muthukumaran, V., Lokesh Kumar, R., & Prasanna Kumar, R. B. (2021). Forex exchange using big data analytics. In Journal of Physics: Conference Series (Vol. 1964). IOP Publishing Ltd. https://doi.org/10.1088/1742-6596/1964/4/042060
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