A Survey on Various methods for Stock Prediction using Big Data Analytics

  • Ashish Awate
  • Bhushan Nandwalkar
Keywords: Big Data, Big Data Analytics, Stock Prediction, Data Mining, Machine Learning.

Abstract

this paper is a survey about various methods in
Big Data Analytics implemented to predict future stock trends
or stock price. Initially paper starts with exploring the concepts
of both the Big Data
and Big Data Analytics. The paper surveyed total six different
papers which consist of different technique to predict stock
price. We survey this paper on the basis Theme, Proposed
Method, Experimentation, Results/Advantage, and Limitation.
These papers illustrate different methods to predict future
stock price. The survey concludes with predictive Big Data
Analytics is more suitable technique for stock prediction and
also dataset must be large enough for train and test.

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Published
2019-04-12
How to Cite
Awate, A., & Nandwalkar, B. (2019). A Survey on Various methods for Stock Prediction using Big Data Analytics. Asian Journal For Convergence In Technology (AJCT) ISSN -2350-1146. Retrieved from https://asianssr.org/index.php/ajct/article/view/760
Section
Article

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