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On Comparing the Influences of Exogenous Information on Bitcoin Prices and Stock Index Values

In: Mathematical Research for Blockchain Economy

Author

Listed:
  • Luis Montesdeoca

    (University of Southampton)

  • Mahesan Niranjan

    (University of Southampton)

Abstract

We consider time series analysis on cryptocurrencies such as Bitcoin. The traded values of any financial instrument could be seen as being influenced by market forces as well as underlying fundamentals relating to the performance of the asset. Bitcoin is somewhat different in this respect because there isn’t an underlying asset upon which its value may depend on. Here, by constructing a simple linear time series model, and by attempting to explain the variation in the residual signal by means of macroeconomic and currency exchange variables, we illustrate that the influencing variables are vastly different for cryptocurrencies from a stock indices (S&P 500) in both timescales analysed (daily and monthly values). We use a sequential estimation scheme (Kalman filter) to estimate the autoregressive model and a sparsity inducing linear regression with lags (LagLasso) to select relevant subsets of influencing variables to compare.

Suggested Citation

  • Luis Montesdeoca & Mahesan Niranjan, 2020. "On Comparing the Influences of Exogenous Information on Bitcoin Prices and Stock Index Values," Springer Proceedings in Business and Economics, in: Panos Pardalos & Ilias Kotsireas & Yike Guo & William Knottenbelt (ed.), Mathematical Research for Blockchain Economy, pages 93-100, Springer.
  • Handle: RePEc:spr:prbchp:978-3-030-37110-4_7
    DOI: 10.1007/978-3-030-37110-4_7
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    Cited by:

    1. Manuel Nunes & Enrico Gerding & Frank McGroarty & Mahesan Niranjan, 2020. "Long short-term memory networks and laglasso for bond yield forecasting: Peeping inside the black box," Papers 2005.02217, arXiv.org.

    More about this item

    Keywords

    Bitcoin; Kalman filter; LagLasso;
    All these keywords.

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