Spectral Analysis for Comparing Bitcoin to Currencies and Assets
Abstract
:1. Introduction
- (i)
- In Section 2, we present the rationale for the choice of the reference currency against which all other currencies, Bitcoin and Gold are priced, and the choice of the state-backed currencies studied.
- (ii)
- Next, in Section 3, we detail the ARMA process modelling of the returns of the exchange rates.
- (iii)
- Section 4 introduces the distance between currencies and assets as the distance between Power Spectral Densities (PSD) (associated with currencies by means of ARMA modelling of the returns of the exchange rates against a fixed currency) and computes this distance between all pairs of currencies, Bitcoin and Gold. Next, we introduce a statistical test—based on the observed probability distribution of the returns of exchange rates—that allows, in the particular case chosen, to more precisely and firmly analyse the differences between currencies, Bitcoin and Gold.
- (iv)
- In Section 5, we develop a result on the probability law of the distances of PSDs that justifies the empirical results presented in Section 4. These results encompass the case of asymptotically Gaussian-distributed PSD estimators. This result shows that, when considering observed spectral distances as random variables, the law of the distance of these spectral distances has, under assumptions that are verified in our study, a generalised Gamma distribution.
- (v)
- Finally, in Appendix B, we study a variation of the assumption on the normality of returns of exchange rates of currencies that shows that this assumption may be acceptable in a preliminary study of differences between our chosen currencies.
- The introduction of the distance between Power Spectral Densities to differentiate the variance and auto-covariance behaviours of currencies, Bitcoin and the asset Gold.
- The confirmation that an initial grouping of currencies, Bitcoin and Gold, by broad macro-economic criteria, reflects in the grouping driven by the distance between Power Spectral Densities (PSD).
- The proposal of a statistical test to ascertain the difference of distances between the PSD associated with currencies, Bitcoin and Gold and of a mathematical result that justifies the modelling approaches followed.
- Theorem 1 giving the probability law of the distance of observed spectral densities under assumptions that are general in the sense that these are assumptions verified with the data analysed in this work.
2. Foreign Exchange Markets and the Choice of Currencies and Assets to Study
2.1. On the Choice of the Reference Currency
- United States dollar (Dollar), USD (United States).
- Euro, EUR (Eurozone).
- Pound Sterling, GBP (United Kingdom).
- Australian dollar, AUD (Australia).
- Canadian dollar, CAD (Canada).
- Swiss franc, CHF (Switzerland).
- Japanese yen, JPY (Japan).
2.2. On the Choice of Other Currencies and the Asset Gold
- The Majors: DOL, EUR, GBP, AUD, CAD and JPY.
- The BRICS: BRL, RUB, INR, CNY and ZAR.
- Independent Currencies: ILS, NOK, SEK and PLN.
- Others: BTC and XAU.
3. Time-Series Analysis of the Data
3.1. Stationarity Inspection
3.2. ARMA Modelling of the Returns of the Exchange Rates of Currencies against CHF
4. Comparing Currencies and Assets via the PSDs of Returns of Exchange Rates
4.1. Power Spectral Density for the ARMA Process
4.2. Distance between Power Spectral Densities
- A group of currencies for which distances among the elements of the group has order of magnitude equal to (the Majors, the independent ones, INR and CNY).
- Another group of currencies—disjoint from the first group—for which distances among the elements of the group has order of magnitude of (the remaining BRICS and the asset Gold).
- Bitcoin, which has a distance from the other currencies of around 7.
4.3. A Statistical Test for Distances between PSDs Associated with Currencies and Assets
- (a)
- If normality of returns—derived from the exchange rates against the reference currency CHF—is assumed a priori (see Appendix B), the sample means and the sample variances of the returns of Dollar and Euro, respectively, are computed. With these values, a simulation of a sample of the returns of the two currencies is implemented, using Monte Carlo method. More precisely, an array of 2000 random numbers is generated from the normal distribution and from for Dollar and Euro, respectively. Then, ARMA modelling is executed and spectral density function is calculated for both the simulated returns. Finally, the distance between the computed PSDs is evaluated. This procedure—from the simulation—is repeated 1000 times, obtaining 1000 values of distances. The results are summarised in Figure 5. The red line represents the distance between Dollar and Euro computed using the real returns (row 2, column 1 of the matrix in Figure 4).With those data, it is possible to produce a statistical test with the null hypothesis:H0:The spectral density of a given currency is either Dollars or Euros.Significance levels are used. The corresponding empirical quantiles are:The steps for the test are the following:
- (b)
- In order to avoid making assumptions about the distribution of the returns, the empirical cumulative distribution function is considered. This function is computed for both Dollar and Euro returns and 2000 random numbers are generated from it, for the two currencies. Then, the same steps as in Case (a) are repeated. The resulting histogram is shown below in Figure 6.
- (c)
- Another nonparametric representation of the probability density function of Dollar and Euro returns can be used, namely the kernel distribution. From this, a simulation is performed, and all the calculations are repeated. The new quantiles are given in Formulas (10) and (11), and the new rejection areas are shown in Figure 7.
4.4. A Discussion of the Results of the Statistical Tests
4.5. An Alternative to ARMA Modelling for Comparing Currencies and Assets: The Periodogram
5. On the Law of the Distance of Two Spectral Densities
- 1.
- Assumption A: a Gamma distribution provides a good fit for the random variable given by:
- 2.
- Assumption B: for arbitrarily values close to one another in , the random variables given by:
- 3.
- Assumption C: for , we have that, for some constants ,
6. Conclusions
- The Majors, the independent ones, INR and CNY.
- The remaining BRICS and gold.
- Bitcoin.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A. Power Spectral Densities
Appendix B. Normality of Returns
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DOL | EUR | GBP | AUD | CAD | JPY | |
p | 3 | 3 | 3 | 3 | 4 | 2 |
q | 3 | 4 | 3 | 3 | 3 | 3 |
0.0277 | 0.0140 | 0.0409 | 0.0450 | 0.0343 | 0.0333 | |
BRL | RUB | INR | CNY | ZAR | ||
p | 2 | 4 | 2 | 3 | 3 | |
q | 2 | 4 | 4 | 2 | 4 | |
0.1435 | 0.2514 | 0.0327 | 0.0391 | 0.1339 | ||
ILS | NOK | SEK | PLN | |||
p | 3 | 4 | 1 | 4 | ||
q | 4 | 4 | 1 | 4 | ||
0.0340 | 0.0490 | 0.0290 | 0.0370 | |||
BTC | XAU | |||||
p | 4 | 4 | ||||
q | 4 | 3 | ||||
2.7970 | 0.1085 |
(a) Normal | 0.0287 | 0.0311 | 0.0394 | 0.0419 |
(b) Empirical | 0.0260 | 0.0297 | 0.0413 | 0.0448 |
(c) Kernel | 0.0285 | 0.0313 | 0.0427 | 0.0462 |
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Pocelli, M.C.; Esquível, M.L.; Krasii, N.P. Spectral Analysis for Comparing Bitcoin to Currencies and Assets. Mathematics 2023, 11, 1775. https://doi.org/10.3390/math11081775
Pocelli MC, Esquível ML, Krasii NP. Spectral Analysis for Comparing Bitcoin to Currencies and Assets. Mathematics. 2023; 11(8):1775. https://doi.org/10.3390/math11081775
Chicago/Turabian StylePocelli, Maria Chiara, Manuel L. Esquível, and Nadezhda P. Krasii. 2023. "Spectral Analysis for Comparing Bitcoin to Currencies and Assets" Mathematics 11, no. 8: 1775. https://doi.org/10.3390/math11081775
APA StylePocelli, M. C., Esquível, M. L., & Krasii, N. P. (2023). Spectral Analysis for Comparing Bitcoin to Currencies and Assets. Mathematics, 11(8), 1775. https://doi.org/10.3390/math11081775