Wavelet Entropy for Efficiency Assessment of Price, Return, and Volatility of Brent and WTI During Extreme Events
Abstract
:1. Introduction
2. Related Literature
3. Methods
3.1. Wavelet Entropy
- (a)
- The signal y is decomposed by applying the continuous wavelet transform given by the following:
- (b)
- Given the number of translation coefficients N at scale aj, the wavelet coefficients are normalized to obtain the wavelet energy density:
- (c)
- Finally, the wavelet entropy (WE) is then calculated as the Shannon entropy of the wavelet energy density at scale M, as follows:
3.2. EGARCH Model
4. Results
5. Discussion and Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Parameter | Value | t-Statistic | p-Value |
---|---|---|---|
ω | −0.30952 | −4.479 | 7.499 × 10−6 |
β | 0.96644 | 129.19 | 0.0000 |
γ | 0.19674 | 6.793 | 1.098 × 10−11 |
α | −0.085366 | −4.9498 | 7.4271 × 10−7 |
Parameter | Value | t-Statistic | p-Value |
---|---|---|---|
ω | −0.1959 | −3.278 | 0.0010455 |
β | 0.97888 | 152.65 | 0.0000 |
γ | 0.20043 | 7.4821 | 7.3136 × 10−14 |
α | −0.059715 | −3.6685 | 0.00024396 |
Before | Pandemic | War | |
---|---|---|---|
Price | |||
Brent | 0.2719 | 0.2418 | 0.8166 |
WTI | 0.8116 | 0.3144 | 0.2878 |
Return | |||
Brent | 0.8319 | 0.5348 | 0.8625 |
WTI | 0.8053 | 0.6256 | 0.8413 |
Volatility | |||
Brent | 0.1 | 0.2259 | 0.695 |
WTI | 0.7669 | 0.4653 | 0.7003 |
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Lahmiri, S. Wavelet Entropy for Efficiency Assessment of Price, Return, and Volatility of Brent and WTI During Extreme Events. Commodities 2025, 4, 4. https://doi.org/10.3390/commodities4020004
Lahmiri S. Wavelet Entropy for Efficiency Assessment of Price, Return, and Volatility of Brent and WTI During Extreme Events. Commodities. 2025; 4(2):4. https://doi.org/10.3390/commodities4020004
Chicago/Turabian StyleLahmiri, Salim. 2025. "Wavelet Entropy for Efficiency Assessment of Price, Return, and Volatility of Brent and WTI During Extreme Events" Commodities 4, no. 2: 4. https://doi.org/10.3390/commodities4020004
APA StyleLahmiri, S. (2025). Wavelet Entropy for Efficiency Assessment of Price, Return, and Volatility of Brent and WTI During Extreme Events. Commodities, 4(2), 4. https://doi.org/10.3390/commodities4020004