Algorithmic Trading on Trading Systems

Authors

  • Vikram Khandelwal
  • Shashank Tak

Keywords:

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Abstract

Stock market analysis is a platform for evaluating Indian enterprises on the National Stock Exchange of India which has over 5000 listed companies. The benefits of algorithmic trading are numerous. With a hybrid model based on LS-SVM (Least Squares Support Vector Machines), we can make more money. To avoid overfitting, use a square support vector machine (SVM) combining different modules such as analysis, prediction, and stock guru analysis, search, developer, automated trading, financial reports, trend analysis, and so on. The support vector machine (LS-SVM) is a machine that is used to maximize the daily stock prices, predict them with PSO. The PSO method aids in the selection of the most suitable free parameters. To avoid overfitting, use a combination of LS-SVM and local minima to solve problems and increase forecast accuracy. The algorithmic trading generates market profits in the equities sector structured in such a way that it outperforms bank savings of an annual deposit of around 7% in India.

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Published

2022-10-15

How to Cite

Khandelwal, V. ., & Shashank Tak. (2022). Algorithmic Trading on Trading Systems. NOLEGEIN-Journal of Global Marketing, 5(1). Retrieved from https://mbajournals.in/index.php/JoGM/article/view/955