Submitted:
12 June 2026
Posted:
17 June 2026
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Related Literature
3. Empirical Framework
3.1. The Factor Model
3.2. ARMA Dynamics and Structural Shifts
3.3. Asymmetric Volatility and Volatility Spillovers
3.4. Empirical Implementation
3.5. Sample and Data
4. Results and Discussion
4.1. Summary Statistics
4.2. Regression Results
5. Summary and Conclusion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| Year | Market cap. (USD bn) |
Listed firms |
Trading volume (mn) |
Trading value (USD mn) |
Market cap./GDP (%) |
|---|---|---|---|---|---|
| 2011 | 29.89 | 34 | 419.8 | 281.9 | 7.9 |
| 2012 | 30.39 | 34 | 218.1 | 54.2 | – |
| 2013 | 28.29 | 34 | 313.0 | 211.0 | – |
| 2014 | 20.11 | 34 | 207.5 | 108.1 | – |
| 2015 | 15.05 | 35 | 246.4 | 65.3 | – |
| 2016 | 12.54 | 37 | 252.8 | 57.6 | – |
| 2017 | 14.25 | 36 | 322.7 | 117.4 | – |
| 2018 | 12.68 | 34 | 200.6 | 136.8 | – |
| 2019 | 10.26 | 33 | 3,817.0 | 112.8 | 14.6 |
| 2020 | 9.44 | 31 | 695.4 | 99.9 | 13.2 |
| 2021 | 10.74 | 30 | 486.6 | 88.8 | 13.2 |
| 2022 | 7.52 | 30 | 1,335.3 | 191.2 | 8.7 |
| 2023 | 6.22 | 29 | 579.7 | 68.9 | 7.7 |
| 2024 | 7.58 | 30 | 992.2 | 146.5 | 9.2 |
| 2025 | 16.46 | 31 | 771.6 | 358.0 | – |
| Series | Refinitiv Symbol |
|---|---|
| Ghana Stock Exchange Composite Index | .GSECI |
| Ghana Stock Exchange Financial Sector Index | .GSEFSI |
| World equity-market index | .TRXFLDGLPU |
| U.S. equity-market index | .SPXTR |
| European equity-market index | dMIEC00000PUS |
| Gold price | XAU= |
| Brent crude oil price | BRT- |
| Cocoa price | CCUSD-DLY-ICCO |
| Statistic | RWD | RUS | REU | RGSECI | RGSEFSI | RGOLD | RBRENT | RCOCOA |
|---|---|---|---|---|---|---|---|---|
| Mean | 0.0304 | 0.0539 | 0.0157 | 0.0062 | -0.0112 | 0.0262 | 0.0016 | 0.0114 |
| Median | 0.0689 | 0.0540 | 0.0562 | 0.0098 | 0.0000 | 0.0399 | 0.0623 | 0.0000 |
| Maximum | 7.9068 | 9.0908 | 8.1906 | 17.5727 | 17.3486 | 4.6928 | 22.4283 | 14.9788 |
| Minimum | -9.8130 | -12.7604 | -14.8233 | -16.1198 | -16.2618 | -8.8756 | -35.6602 | -21.6084 |
| Std. Dev. | 0.8789 | 1.0779 | 1.2504 | 1.4314 | 1.4609 | 0.9759 | 2.4751 | 1.8368 |
| Skewness | -1.0558 | -0.6700 | -0.7818 | 0.2387 | 0.2369 | -0.5447 | -0.9921 | -0.6544 |
| Kurtosis | 18.1327 | 18.8176 | 13.1249 | 20.9057 | 21.6298 | 7.9878 | 27.6884 | 15.2983 |
| Observations | 3592 | 3592 | 3592 | 3592 | 3592 | 3592 | 3592 | 3592 |
| (1) | (2) | (3) | (4) | (5) | (6) | (7) | |
|---|---|---|---|---|---|---|---|
| Mean equation | |||||||
| 0.0219 | 0.0253 | 0.0072 | 0.0006 | 0.0085 | 0.0030 | -0.0007 | |
| (0.0237) | (0.0258) | (0.0259) | (0.0266) | (0.0258) | (0.0275) | (0.0273) | |
| 0.7652*** | 0.7691*** | 0.7704*** | 0.7740*** | 0.7707*** | 0.7766*** | 0.7762*** | |
| (0.0273) | (0.0248) | (0.0255) | (0.0259) | (0.0262) | (0.0248) | (0.0254) | |
| 0.1581*** | 0.1657*** | 0.1633*** | 0.1609*** | 0.1617*** | 0.1623*** | 0.1623*** | |
| (0.0173) | (0.0174) | (0.0173) | (0.0175) | (0.0176) | (0.0176) | (0.0181) | |
| -0.8791*** | -0.8855*** | -0.8902*** | -0.8902*** | -0.8888*** | -0.8931*** | -0.8936*** | |
| (0.0211) | (0.0184) | (0.0188) | (0.0194) | (0.0194) | (0.0176) | (0.0183) | |
| 0.0255** | 0.0266** | 0.0263** | 0.0249** | 0.0331*** | 0.0290** | ||
| (0.0109) | (0.0108) | (0.0112) | (0.0117) | (0.0111) | (0.0117) | ||
| 0.0053 | 0.0011 | ||||||
| (0.0120) | (0.0129) | ||||||
| 0.0035 | 0.0038 | ||||||
| (0.0067) | (0.0066) | ||||||
| -0.0272*** | -0.0274*** | ||||||
| (0.0063) | (0.0062) | ||||||
| 0.1139 | 0.1223* | 0.1118 | 0.1379* | 0.1457** | |||
| (0.0742) | (0.0730) | (0.0737) | (0.0745) | (0.0725) | |||
| 0.5805** | 0.6115** | 0.5848** | 0.5946** | 0.6149** | |||
| (0.2948) | (0.3034) | (0.2938) | (0.2950) | (0.3020) | |||
| Variance equation | |||||||
| -0.2041*** | -0.2124*** | -0.2156*** | -0.2287*** | -0.2158*** | -0.2191*** | -0.2303*** | |
| (0.0067) | (0.0070) | (0.0071) | (0.0077) | (0.0073) | (0.0076) | (0.0083) | |
| 0.3159*** | 0.3111*** | 0.3156*** | 0.3209*** | 0.3160*** | 0.3186*** | 0.3234*** | |
| (0.0108) | (0.0109) | (0.0111) | (0.0112) | (0.0111) | (0.0113) | (0.0115) | |
| 0.0213*** | 0.0278*** | 0.0265*** | 0.0255*** | 0.0265*** | 0.0244*** | 0.0241*** | |
| (0.0067) | (0.0078) | (0.0077) | (0.0080) | (0.0077) | (0.0080) | (0.0083) | |
| 0.9572*** | 0.9573*** | 0.9569*** | 0.9573*** | 0.9567*** | 0.9569*** | 0.9567*** | |
| (0.0024) | (0.0025) | (0.0025) | (0.0025) | (0.0025) | (0.0025) | (0.0026) | |
| 0.0070*** | 0.0070*** | 0.0035* | 0.0069*** | 0.0066*** | 0.0030 | ||
| (0.0009) | (0.0009) | (0.0020) | (0.0010) | (0.0010) | (0.0022) | ||
| 0.0152*** | 0.0140*** | ||||||
| (0.0041) | (0.0044) | ||||||
| 0.00004 | 0.0002 | ||||||
| (0.0004) | (0.0004) | ||||||
| 0.0004 | 0.0001 | ||||||
| (0.0005) | (0.0005) | ||||||
| Log likelihood | -5543.69 | -5536.73 | -5535.15 | -5532.91 | -5535.07 | -5528.64 | -5526.64 |
| Adjusted R-squared | 0.0209 | 0.0190 | 0.0194 | 0.0193 | 0.0195 | 0.0208 | 0.0202 |
| S.E. of regression | 1.4167 | 1.4181 | 1.4178 | 1.4178 | 1.4177 | 1.4168 | 1.4172 |
| (1) | (2) | (3) | (4) | (5) | (6) | (7) | |
|---|---|---|---|---|---|---|---|
| Mean equation | |||||||
| -0.0786*** | -0.0613** | -0.0754*** | -0.0750*** | -0.0657** | -0.0603** | -0.0052* | |
| (0.0244) | (0.0256) | (0.0273) | (0.0274) | (0.0286) | (0.0279) | (0.0281) | |
| 0.7033*** | 0.7073*** | 0.7137*** | 0.7172*** | 0.7055*** | 0.6918*** | 0.7003*** | |
| (0.0298) | (0.0308) | (0.0308) | (0.0317) | (0.0316) | (0.0331) | (0.0327) | |
| 0.1959*** | 0.1944*** | 0.1947*** | 0.1915*** | 0.1997*** | 0.1995*** | 0.1992*** | |
| (0.0187) | (0.0191) | (0.0193) | (0.0197) | (0.0197) | (0.0201) | (0.0204) | |
| -0.8328*** | -0.8325*** | -0.8392*** | -0.8391*** | -0.8320*** | -0.8204*** | -0.8263*** | |
| (0.0247) | (0.0256) | (0.0249) | (0.0253) | (0.0257) | (0.0276) | (0.0265) | |
| 0.0428*** | 0.0415*** | 0.0325*** | 0.0494*** | 0.0489*** | 0.0421*** | ||
| (0.0105) | (0.0105) | (0.0111) | (0.0116) | (0.0112) | (0.0126) | ||
| 0.0384*** | 0.0387*** | ||||||
| (0.0107) | (0.0109) | ||||||
| -0.0133** | -0.0134** | ||||||
| (0.0068) | (0.0066) | ||||||
| -0.0183*** | -0.0100** | ||||||
| (0.0040) | (0.0049) | ||||||
| 0.1111 | 0.1435* | 0.1165 | 0.1111 | 0.1048 | |||
| (0.0815) | (0.0836) | (0.0829) | (0.0814) | (0.0846) | |||
| 0.7895*** | 0.8016*** | 0.7839*** | 0.6519*** | 0.7745*** | |||
| (0.1947) | (0.1979) | (0.1961) | (0.1844) | (0.1784) | |||
| Variance equation | |||||||
| -0.1710*** | -0.1732*** | -0.1799*** | -0.1771*** | -0.1767*** | -0.1694*** | -0.1723*** | |
| (0.0053) | (0.0053) | (0.0058) | (0.0058) | (0.0059) | (0.0059) | (0.0067) | |
| 0.2849*** | 0.2710*** | 0.2817*** | 0.2814*** | 0.2770*** | 0.3059*** | 0.3105*** | |
| (0.0092) | (0.0088) | (0.0095) | (0.0095) | (0.0094) | (0.0109) | (0.0112) | |
| 0.0237*** | 0.0220*** | 0.0222*** | 0.0221*** | 0.0231*** | 0.0332*** | 0.0348*** | |
| (0.0062) | (0.0060) | (0.0062) | (0.0065) | (0.0062) | (0.0077) | (0.0081) | |
| 0.9459*** | 0.9497*** | 0.9467*** | 0.9491*** | 0.9495*** | 0.9279*** | 0.9293*** | |
| (0.0024) | (0.0024) | (0.0025) | (0.0027) | (0.0026) | (0.0034) | (0.0035) | |
| 0.0063*** | 0.0065*** | 0.0073*** | 0.0088*** | 0.0077*** | 0.0101*** | ||
| (0.0013) | (0.0014) | (0.0017) | (0.0015) | (0.0018) | (0.0023) | ||
| -0.0054 | 0.0015 | ||||||
| (0.0041) | (0.0053) | ||||||
| -0.0008*** | -0.0009*** | ||||||
| (0.0003) | (0.0003) | ||||||
| -0.0073*** | -0.0075*** | ||||||
| (0.0008) | (0.0045) | ||||||
| Log likelihood | -5669.62 | -5661.99 | -5659.69 | -5656.44 | -5656.11 | -5642.14 | -5635.38 |
| Adjusted R-squared | 0.0334 | 0.0340 | 0.0347 | 0.0339 | 0.0346 | 0.0366 | 0.0347 |
| S.E. of regression | 1.4366 | 1.4363 | 1.4357 | 1.4363 | 1.4358 | 1.4343 | 1.4357 |
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