A Review on Stock Prediction Using Machine Learning Algorithms

Authors

  • Siddharth Meghwal  PG Scholar, Department of Computer Science & Engineering, Shekhawati Institute of Engineering and Technology, Sikar, Rajasthan, India
  • Irfan Khan  Assistant Professor, Department of Computer Science & Engineering, Shekhawati Institute of Engineering and Technology, Sikar, Rajasthan, India

DOI:

https://doi.org//10.32628/CSEIT1228115

Keywords:

Stock, Cloud, Computing, Infrastructure, Parameter Selection, Machine Learning, Azure, Fast Forest Quantile Regression.

Abstract

The flightiness and unpredictability of the financial exchange render it trying to make a significant benefit utilizing any summed up conspire. This paper means to talk about our AI model, which can create a lot of gain in the US financial exchange by performing live exchanging in the Quantopian stage while utilizing assets liberated from cost. Our top methodology was to utilize outfit learning with four classifiers: Gaussian Naive Bayes, Decision Tree, Logistic Regression with L1 regularization and Stochastic Gradient Descent, to choose whether to go long or short on a specific stock. As indicated by various examinations, stocks produce more noteworthy returns than different resources. Stock returns mostly come from capital increases and profits. Capital increases are the point at which you sell a specific stock at a more exorbitant cost than at which you bought it. Profits are a portion of the benefit that the organization whose stocks you bought makes, and disseminates it to its investors. As indicated by S&P Dow Jones Indices, beginning around 1926, profits have added to 33% of speculation returns while the other 66% have been contributed by capital increases. The possibility of purchasing shares from generally effective organizations like Apple, Amazon, Facebook, Google, and Netflix, together meant by the renowned abbreviation FAANG, during the beginning phases of stock exchanging can appear to be enticing. Financial backers with a high capacity to bear hazard would incline more towards capital additions for acquiring benefit rather than profits. Other people who lean toward a more safe methodology might decide to stay with stocks which have generally been known to give steady and huge profits.

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Published

2022-02-28

Issue

Section

Research Articles

How to Cite

[1]
Siddharth Meghwal, Irfan Khan, " A Review on Stock Prediction Using Machine Learning Algorithms, IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 8, Issue 1, pp.250-255, January-February-2022. Available at doi : https://doi.org/10.32628/CSEIT1228115