Modelling Australian Dollar Volatility at Multiple Horizons with High-Frequency Data
Abstract
:1. Introduction
2. Related Literature
3. Methodology
3.1. Wavelet Multi-Scale Decomposition
3.2. Testing for Structural Breaks in the Presence of Long Memory
4. Results
4.1. A Multi-Resolution Analysis
4.2. Horizon-Based Power Decomposition
4.3. Sources of Long Memory: Structural Breaks
5. Discussions, Conclusions and Implications
5.1. Discussions
5.2. Conclusions and Implications
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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1 | The scope for the development of a wavelet-based application on volatility modelling is expected to present significant potential for financial, economic research. As discussed in Section 3, wavelet-based methodology in the field of volatility modelling has been on the rise as a means of filling the gap between short- and long-run analyses. |
2 | These methodologies include a least-squares approach whereby the OHR is given by the slope coefficient of the regression line of spot exchange-rate returns against futures returns. Other alternatives such as the error-correction model and the generalised autoregressive conditional heteroscedasticity model can be used to estimate time-varying OHRs. |
3 | Note that when , the FIGARCH (1,d,1) model collapses to the standard GARCH(1,1), while when , it collapses to iGARCH(1,1). |
4 | On the other hand, “detail” components reflect the fluctuations (or differences) of volatility series and thus are not representative of the long-range dependent behaviour. |
5 | Additionally, the behaviour of exchange rates can be related to the dynamic long-memory properties of other economic variables, such as the aggregated price levels (via the purchasing power parity relationship) or the interest rates (via the uncovered interest parity relationship). |
6 | The computation is done this time with a continuous Morlet wavelet transform, rather than a DWT. Due to some issues with this operator, certain information outside the region outlined by the parabolic curve (the “cone of influence”) should be ignored. (e.g., (Daubechies 1992) for details.) |
7 | The exact time periods when the breaks are detected are not presented here to conserve space but are available upon request. |
8 | Nevertheless, in a recent study (Vo and Vo 2019b) have applied wavelet-based estimators on daily data of six heavily traded currencies, including AUD, and have shown cross-currency results that are similar to ours. |
Decomposition Level (j) | Frequency Band | Period Band | |
---|---|---|---|
In minutes | In days | ||
(1) | (2) | (3) | (4) |
0 (original) | - | - | |
1 | 5 to 10 | 0.017 | |
2 | 10 to 20 | 0.014 | |
3 | 20 to 40 | 0.03 | |
4 | 40 to 80 | 0.06 | |
5 | 80 to 160 | 0.11 | |
6 | 160 to 320 | 0.22 | |
7 | 320 to 640 | 0.44 | |
8 | 640 to 1280 | 0.89 | |
9 | 1280 to 2560 | 1.78 | |
10 | 2560 to 5120 | 3.56 | |
11 | 5120 to 10,240 | 7.11 | |
12 | 10,240 to 20,480 | 14.22 | |
13 | 20,480 to 40,960 | 28.44 |
Mean | Median | Variance | Skewness | Kurtosis | JB | LB(21) | |
Returns | 0.000001 | 0.00 | 0.00 | 0.72 | 422.12 | 3881823130.38 (0.00) | 9022.43 (0.00) |
Volatilities | 0.000412 | 0.000393 | 0.00 | 3.70 | 33.17 | 25166002.26 (0.00) | 10405779.70 (0.00) |
Smooth Level | R/S | aggVar | diffVar | absVal | Higuchi |
---|---|---|---|---|---|
Original | 1.101 | 0.966 | 1.620 | 0.980 | 0.966 |
(0.062) | (0.064) | (0.179) | (0.047) | (0.030) | |
1 | 1.146 | 0.966 | 1.618 | 0.980 | 0.966 |
(0.085) | (0.064) | (0.166) | (0.047) | (0.030) | |
2 | 1.056 | 0.966 | 1.747 | 0.980 | 0.966 |
(0.063) | (0.064) | (0.184) | (0.047) | (0.030) | |
3 | 0.994 | 0.966 | 1.663 | 0.980 | 0.966 |
(0.044) | (0.064) | (0.142) | (0.047) | (0.030) | |
4 | 0.988 | 0.967 | 1.833 | 0.980 | 0.966 |
(0.033) | (0.064) | (0.164) | (0.047) | (0.030) | |
5 | 1.005 | 0.968 | 1.965 | 0.981 | 0.966 |
(0.034) | (0.064) | (0.187) | (0.047) | (0.030) | |
6 | 1.008 | 0.972 | 2.174 | 0.984 | 0.966 |
(0.034) | (0.065) | (0.236) | (0.047) | (0.030) | |
7 | 1.003 | 0.978 | 1.756 | 0.986 | 0.965 |
(0.027) | (0.066) | (0.196) | (0.048) | (0.030) | |
8 | 0.990 | 0.988 | 1.803 | 0.992 | 0.965 |
(0.017) | (0.063) | (0.168) | (0.047) | (0.030) | |
9 | 0.993 | 0.997 | 1.932 | 0.999 | 0.966 |
(0.014) | (0.050) | (0.127) | (0.037) | (0.030) | |
10 | 1.000 | 1.003 | 1.669 | 1.007 | 0.966 |
(0.008) | (0.027) | (0.154) | (0.019) | (0.030) | |
11 | 0.999 | 1.001 | 1.364 | 1.005 | 0.966 |
(0.007) | (0.003) | (0.240) | (0.010) | (0.030) | |
12 | 0.999 | 1.002 | 1.468 | 1.005 | 0.966 |
(0.006) | (0.004) | (0.152) | (0.008) | (0.030) |
GARCH | eGARCH | GJRGARCH | fiGARCH | |||||
---|---|---|---|---|---|---|---|---|
0.00 | (0.00) | 0.00 | (0.33) | 0.00 | (0.00) | 0.00 | (0.00) | |
−0.07 | (0.07) | 0.13 | (0.02) | −0.06 | (0.70) | −0.10 | (0.05) | |
−0.15 | (0.07) | −0.35 | (0.00) | −0.13 | (0.40) | −0.16 | (0.00) | |
0.00 | (0.00) | −2.85 | (0.00) | 0.00 | (1.00) | 0.00 | (0.98) | |
0.07 | (0.03) | 0.03 | (0.00) | 0.05 | (0.00) | 0.06 | (0.00) | |
0.90 | (0.02) | 0.82 | (0.00) | 0.90 | (0.00) | 0.86 | (0.00) | |
- | - | 0.32 | (0.00) | 0.05 | (0.00) | 0.85 | (0.00) | |
Log-likelihood | 54,649.75 | 54,767.86 | 54,228.44 | 54,358.09 | ||||
Information Criteria | ||||||||
Akaike | −13.34 | −13.37 | −13.24 | −13.27 | ||||
Bayes | −13.33 | −13.36 | −13.23 | −13.26 | ||||
Shibata | −13.34 | −13.37 | −13.24 | −13.27 | ||||
Hannan–Quinn | −13.34 | −13.37 | −13.23 | −13.27 |
Test Type | Test For | GARCH | eGARCH | GJRGARCH | fiGARCH |
---|---|---|---|---|---|
Student | Mean changes | 102 | 113 | 93 | 112 |
Bartlett | Variance changes | 181 | 177 | 191 | 181 |
GLR | Mean and variance changes | 155 | 154 | 163 | 146 |
B. Tests in a (possibly unknown) non-Gaussian process | |||||
MW | Location shifts | 115 | 115 | 112 | 113 |
M | Scale shifts | 48 | 54 | 44 | 57 |
KS | Arbitrary changes | 61 | 71 | 53 | 65 |
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Vo, L.H.; Vo, D.H. Modelling Australian Dollar Volatility at Multiple Horizons with High-Frequency Data. Risks 2020, 8, 89. https://doi.org/10.3390/risks8030089
Vo LH, Vo DH. Modelling Australian Dollar Volatility at Multiple Horizons with High-Frequency Data. Risks. 2020; 8(3):89. https://doi.org/10.3390/risks8030089
Chicago/Turabian StyleVo, Long Hai, and Duc Hong Vo. 2020. "Modelling Australian Dollar Volatility at Multiple Horizons with High-Frequency Data" Risks 8, no. 3: 89. https://doi.org/10.3390/risks8030089
APA StyleVo, L. H., & Vo, D. H. (2020). Modelling Australian Dollar Volatility at Multiple Horizons with High-Frequency Data. Risks, 8(3), 89. https://doi.org/10.3390/risks8030089