BITCOIN-USD TRADING USING SVM TO DETECT THE CURRENT DAY’S TREND IN THE MARKET

BITCOIN-USD TRADING MENGGUNAKAN SVM UNTUK MENDETEKSI TREN SAAT INI DI PASARAN

  • Ferdiansyah Ferdiansyah Universitas Bina Darma
  • Edi Surya Negara Bina Darma University
  • Yeni Widyanti Bina Darma University
Keywords: Cyrptocurrency, Prediction Bitcoin, SVM

Abstract

Cryptocurrency trade is now a popular type of investment. Cryptocurrency market has been treated similar to foreign exchange and stock market. The Characteristics of Bitcoin have made Bitcoin keep rising In the last few years. Bitcoin exchange rate to American Dollar (USD) is $3990 USD on November 2018, with daily pice fluctuations could reach 4.55%2. It is important to able to predict value to ensure profitable investment. However, because of its volatility, there’s a need for a prediction tool for investors to help them consider investment decisions for cryptocurrency trade. Nowadays, computing based tools are commonly used in stock and foreign exchange market predictions. There has been much research about SVM prediction on stocks and foreign exchange as case studies but none on cryptocurrency. Therefore, this research studied method to predict the market value of one of the most used cryptocurrency, Bitcoin. The preditct methods will be used on this research is regime prediction to develop model to predict the close value of Bitcoin and use Support vector classifier algorithm to predict the current day’s trend at the opening of the market

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Published
2019-03-05
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How to Cite
Ferdiansyah, F., Negara, E., & Widyanti, Y. (2019). BITCOIN-USD TRADING USING SVM TO DETECT THE CURRENT DAY’S TREND IN THE MARKET. Journal of Information Systems and Informatics, 1(1), 70-77. https://doi.org/10.33557/journalisi.v1i1.7