Efficiency and Competitiveness of the Equatorial Guinean Financial Sector
Abstract
:1. Introduction
2. Literature Review
3. Materials and Methods
3.1. The Financial Sector of Equatorial Guinea
- Societé Generale de Banques en Guinea Equatoriale (SGBGE), of French origin. It has operated in the country since 1999, replacing the old BIAO.
- Caisse Commune d’Epargne et d’Investissement (CCEI Bank), of Cameroonian origin, which was recently acquired by the Equatorial Guinean State. It has been operating in the country since 1994, and is the oldest of all.
- Banque Gabonaise de Financement et d’Investissement (BGFI Bank), of Gabonese origin. It has operated in the country since 2001.
- Ecobank, a subsidiary of the pan-African bank Ecobank. It has operated in the country since 2012.
- Banco Nacional de GE (BANGE), which is the fully state-owned bank of E.G. It was launched in 2006 as part of the national development plan Horizon 2020.
- -
- Atom Finance, born in response to the need to create institutions that can promote financial inclusion in the country and thus provide opportunities for small and micro-enterprises as well as individual entrepreneurs and other individuals without access to financial services offered by banks. It offers services such as financial inclusion, micro-credit, deposits (or micro-savings), salary direct debit from small local businesses and national money transfers.
- -
- Bonafide Microbank, which is an institution specialized in providing microcredit services to entrepreneurs, both individual and micro-enterprises.
- -
- Gajo Trading, which is specialized in national and international money transfer services at a very favorable cost, and is qualified as a provider of high-quality and comfortable services.
3.2. Data
3.3. Variables and Descriptive Statistics
- (1)
- Total loans , which mainly include loans (long-term, medium and short-term) and invoices (commercial and discounted). Total loans do not include loan loss reserves.
- (2)
- Other earning assets , which mainly include central bank deposits, deposits with other banks, as well as investments (short-term and long-term).
- (3)
- Income without interest , which includes derivatives of commissions and the net commission, and other operating income.
- (1)
- Deposits , which mainly include deposits by customers, loans and funds.
- (2)
- Work , consisting of the total number of full-time registered employees at an individual bank.
- (3)
- Fixed assets , which provide the essential materials for the operation of the bank.
- (1)
- Input price , which is interpreted as the ratio of interest expense to total deposits.
- (2)
- Labor price , which is the ratio of personnel spending (total remuneration, including salaries, wages and other benefits paid to employees) to the number of employees.
- (3)
- Fixed assets price , interpreted as the ratio of operating expenses to fixed assets.
- (a)
- Variables related to macroeconomic features that could influence the main characteristics of the demand for banking products.
- (b)
- Specific variables or factors that could influence the model of the banking system.
- (1)
- Population density , or the population of a country per km2. According to the IMF, banks can be more cost-efficient by providing products and services in areas with a low population density. E.G. had a population density of 50.6 people per km2 in 2019 [40].
- (2)
- GDP per capita , or the income per capita and the ratio of GDP to population. In general, a country with a high GDP per capita indicates that it has a relatively well-developed, open and more competitive financial market. According to the IMF, E.G. had an average GDP per capita of XAF 8,370,423 or USD 16,240 during the period analyzed [40].
- (3)
- Inflation (), approached by the Consumer Price Index (CPI) as a main indicator or proxy variable for inflation. The increase in CPI could influence the depreciation of the currency with negative effects that affect the increase in the price level. The World Bank discloses that during the analyzed period, E.G. had an average inflation rate of 2.84% per year [41].
- (4)
- Unemployment rate —up to a certain point, a higher unemployment rate normally indicates higher costs for operating banks due to the demand for precautionary savings. According to the World Bank, during the analyzed period, E.G. had an average unemployment rate of 8.76% [41].
- (5)
- Banking concentratio , measured by the total assets of the largest banks as part of the total assets of the entire banking industry. The previous literature indicates that there is an ambiguous relationship between bank concentration and the cost of banks. The main conclusions of [42] support the hypothesis of banking concentration as an indicator of market power that is positively related to the cost of banks. While the cost can decrease considerably due to high management, higher production efficiency can lead to greater concentration. Thus, the relationship between bank concentration and the cost of banks is negative.
- (6)
- Capital Ratio , or the relationship between equity and risk-weighted assets. This ratio measures the financial health of a bank and relates the funds a financial institution has to deal immediately with possible unforeseen events with the risk it assumes through the assets it has on its balance sheet. According to data provided by the World Bank, during the period studied, the average capital ratio for the banking system of G.E. in the study period was 23.11% [41].
- (7)
- Net interest margin is the percentage of the book value of the bank’s net interest income and the total assets that generate income. This variable (net interest margin) takes into account the bank’s effectiveness in the production process, by transforming deposits into loans. We expect that high net interest margins could have a positive influence by reducing costs as well as increasing net interest income.
- (8)
- Intermediation ratio is the percentage of loans to deposits. The intermediation ratio takes into account the bank’s effectiveness in the production process, by transforming their deposits into loans. We expect a negative association between the intermediation ratio and costs.
3.4. Bank Efficiency Analysis Methods
3.4.1. Stochastic Frontier Analysis
3.4.2. Data Envelopment Analysis (DEA)
3.4.3. DEA Malmquist Model with Panel Data
3.5. Competitiveness Analysis Methods
3.5.1. Boone Indicator
3.5.2. Panzar–Rosse H-Statistic
4. Results
4.1. Efficiency of the Financial Sector
4.2. Competitiveness of the Financial Sector
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Panel A: Evolution of the number of branches | ||||||||||
2010 | 2011 | 2012 | 2013 | 2014 | 2015 | 2016 | 2017 | 2018 | 2019 | |
BANGE | 4 | 4 | 6 | 7 | 11 | 13 | 16 | 18 | 24 | 28 |
SGBGE | 5 | 5 | 5 | 5 | 5 | 5 | 6 | 6 | 6 | 7 |
CCEI Bank | 7 | 8 | 8 | 9 | 9 | 10 | 10 | 10 | 11 | 11 |
BGFI Bank | 3 | 4 | 5 | 5 | 6 | 6 | 7 | 7 | 7 | 7 |
Eco-Bank | 0 | 0 | 1 | 1 | 1 | 2 | 2 | 3 | 5 | 6 |
TOTAL | 19 | 21 | 25 | 27 | 32 | 36 | 41 | 44 | 53 | 59 |
Panel B: Evolution of the number of employees | ||||||||||
2010 | 2011 | 2012 | 2013 | 2014 | 2015 | 2016 | 2017 | 2018 | 2019 | |
BANGE | 180 | 201 | 208 | 218 | 215 | 299 | 345 | 413 | 469 | 487 |
SGBGE | 230 | 255 | 288 | 277 | 281 | 283 | 292 | 293 | 292 | 304 |
CCEI Bank | 196 | 205 | 212 | 217 | 221 | 228 | 250 | 245 | 254 | 267 |
BGFI Bank | 142 | 148 | 156 | 159 | 163 | 165 | 160 | 162 | 167 | 163 |
Eco-Bank | 0 | 0 | 10 | 25 | 28 | 48 | 57 | 75 | 93 | 105 |
TOTAL | 748 | 809 | 874 | 896 | 908 | 1023 | 1104 | 1188 | 1275 | 1326 |
Panel C: Evolution of the number of clients | ||||||||||
2010 | 2011 | 2012 | 2013 | 2014 | 2015 | 2016 | 2017 | 2018 | 2019 | |
BANGE | 49,707 | 50,800 | 61,850 | 63,880 | 66,075 | 76,820 | 83,000 | 91,707 | 100,000 | 110,000 |
SGBGE | 27,820 | 27,760 | 27,765 | 30,771 | 32,411 | 30,863 | 30,446 | 30,847 | 31,564 | 31,803 |
CCEI Bank | 31,690 | 31,725 | 32,150 | 32,650 | 32,900 | 33,460 | 33,780 | 34,250 | 34,800 | 35,000 |
BGFI Bank | 8500 | 10,300 | 11,800 | 13,200 | 14,800 | 15,200 | 15,980 | 16,520 | 16,800 | 17,300 |
Eco-Bank | 0 | 0 | 1200 | 5312 | 7285 | 8090 | 9674 | 13,500 | 15,215 | 19,200 |
TOTAL | 117,717 | 120,585 | 134,765 | 145,813 | 153,471 | 164,433 | 172,880 | 186,824 | 198,379 | 213,303 |
Panel D: Evolution of the volume of deposits (millions of XAF) | ||||||||||
2010 | 2011 | 2012 | 2013 | 2014 | 2015 | 2016 | 2017 | 2018 | 2019 | |
BANGE | 91,200 | 102,000 | 160,500 | 187,200 | 221,850 | 408,561 | 349,192 | 366,546 | 383,900 | 401,254 |
SGBGE | 4,099,258 | 3,616,633 | 3,618,958 | 3,998,730 | 3,883,731 | 4,318,559 | 3,714,263 | 2,922,668 | 3,009,326 | 3,018,003 |
CCEI Bank | 487,122 | 492,935 | 725,722 | 895,939 | 690,678 | 550,976 | 476,740 | 428,530 | 263,946 | 249,070 |
BGFI Bank | 0 | 0 | 398,082 | 290,626 | 203,365 | 200,066 | 202,097 | 220,624 | 219,990 | 225,371 |
Eco-Bank | 0 | 0 | 4300 | 11,420 | 11,650 | 10,380 | 11,350 | 10,830 | 10,682 | 10,534 |
TOTAL | 4,677,580 | 4,211,568 | 4,907,562 | 5,383,915 | 5,011,274 | 54,88,542 | 4,753,642 | 3,949,198 | 3,887,844 | 3,904,232 |
Panel E: Evolution of the volume of loans (millions of XAF) | ||||||||||
2010 | 2011 | 2012 | 2013 | 2014 | 2015 | 2016 | 2017 | 2018 | 2019 | |
BANGE | 0 | 0 | 0 | 1208 | 2161 | 10,850 | 26,295 | 31,865 | 41,119 | 21,607 |
SGBGE | 15,008 | 11,723 | 11,171 | 13,082 | 9842 | 10,995 | 13,302 | 20,753 | 10,033 | 12,319 |
CCEI Bank | 459,667 | 545,071 | 438,497 | 592,144 | 715,804 | 700,262 | 635,251 | 625,306 | 649,485 | 648,062 |
BGFI Bank | 0 | 0 | 111,209 | 122,295 | 105,578 | 124,222 | 118,999 | 136,388 | 143,099 | 151,819 |
Eco-Bank | 0 | 0 | 3712 | 12,127 | 12,450 | 13,800 | 13,450 | 14,233 | 14,733 | 15,233 |
TOTAL | 474,675 | 556,794 | 564,589 | 740,856 | 845,835 | 860,129 | 807,297 | 828,545 | 858,469 | 849,040 |
ENTITY | Y1 | Y2 | Y3 | W1 | W2 | W3 | I1 | I2 | I3 | CT | |
---|---|---|---|---|---|---|---|---|---|---|---|
2010 | BANGE | - | 198,001 | 17,198 | 0.092 | 15.092 | 0.28 | 91.2 | 180 | 30,364 | 19,636 |
CCEI Bank | 459,667 | 175,042 | 5416 | 0.008 | 8.581 | 0.216 | 487,122 | 230 | 45,507 | 15,826 | |
SGBGE | 15,008 | 252,378 | 6777 | 0.001 | 14.327 | 0.009 | 4,099,258 | 196 | 1,147,121 | 15,899 | |
BGFI Bank | - | - | 142 | - | |||||||
Ecobank | - | - | - | - | |||||||
2011 | BANGE | - | 215,120 | 20,233 | 0.092 | 14.227 | 0.265 | 102,000 | 201 | 33,738 | 21,162 |
CCEI Bank | 545,071 | 205,932 | 6372 | 0.009 | 8.599 | 0.216 | 492,935 | 255 | 50,564 | 17,349 | |
SGBGE | 11,723 | 280,420 | 7530 | 0.001 | 15.22 | 0.009 | 3,616,633 | 205 | 1,274,579 | 17,481 | |
BGFI Bank | - | - | 148 | - | |||||||
Ecobank | - | - | - | - | |||||||
2012 | BANGE | - | 223,145 | 22,481 | 0.065 | 15.275 | 0.265 | 160,500 | 208 | 37,486 | 23,513 |
CCEI Bank | 438,497 | 228,813 | 7080 | 0.005 | 8.46 | 0.216 | 725,722 | 288 | 56,182 | 18,528 | |
SGBGE | 11,171 | 293,121 | 8210 | 0.001 | 15.802 | 0.01 | 3,618,958 | 212 | 1,275,393 | 18,940 | |
BGFI Bank | 111,209 | 73,150 | 5315 | 0.008 | 7.949 | 1.026 | 398,082 | 156 | 8211 | 12,875 | |
Ecobank | 3712 | 11,420 | 3821 | 0.363 | 23.59 | 1.568 | 4300 | 10 | 1369 | 3942 | |
2013 | BANGE | 1208 | 241,005 | 24,651 | 0.046 | 17.147 | 0.318 | 187,200 | 218 | 34,709 | 23,444 |
CCEI Bank | 92,144 | 222,149 | 7150 | 0.004 | 9.773 | 0.22 | 895,939 | 277 | 52,020 | 17,853 | |
SGBGE | 13,082 | 305,822 | 8890 | 0.001 | 16.498 | 0.009 | 3,998,730 | 217 | 1,408,313 | 20,399 | |
BGFI Bank | 122,295 | 81,215 | 6450 | 0.012 | 13.403 | 0.948 | 290,626 | 159 | 11,783 | 16,867 | |
Ecobank | 12,127 | 15,301 | 4652 | 0.211 | 42.824 | 2.117 | 11,420 | 25 | 1694 | 7067 | |
2014 | BANGE | 2161 | 247,321 | 23,815 | 0.03 | 20.454 | 0.393 | 221,850 | 215 | 33,057 | 24,051 |
CCEI Bank | 15,804 | 211,570 | 6593 | 0.005 | 10.705 | 0.22 | 690,678 | 281 | 49,543 | 17,367 | |
SGBGE | 9842 | 318,523 | 9570 | 0.001 | 17.24 | 0.01 | 3,883,731 | 221 | 1,368,064 | 21,858 | |
BGFI Bank | 105,578 | 83,450 | 6720 | 0.02 | 20.503 | 0.777 | 203,365 | 163 | 11,896 | 16,702 | |
Ecobank | 12,450 | 19,182 | 5116 | 0.239 | 68.046 | 2.489 | 11,650 | 28 | 2019 | 9713 | |
2015 | BANGE | 4957 | 257,851 | 22,162 | 0.013 | 18.385 | 0.471 | 408,561 | 299 | 30,608 | 25,055 |
CCEI Bank | 700,262 | 156,738 | 5042 | 0.006 | 11.378 | 0.213 | 550,976 | 283 | 46,299 | 16,166 | |
SGBGE | 10,995 | 331,224 | 10,250 | 0.001 | 17.719 | 0.01 | 318,559 | 228 | 1,520,253 | 23,317 | |
BGFI Bank | 24,222 | 112,010 | 5810 | 0.02 | 26.301 | 0.669 | 200,066 | 165 | 13,565 | 17,372 | |
Ecobank | 13,800 | 23,063 | 5672 | 0.31 | 57.083 | 2.758 | 10,380 | 48 | 2344 | 12,420 | |
2016 | BANGE | 34,005 | 170,822 | 18,104 | 0.011 | 19.809 | 0.693 | 349,192 | 345 | 25,140 | 28,209 |
CCEI Bank | 635,251 | 142,045 | 4218 | 0.007 | 11.668 | 0.149 | 476,740 | 292 | 53,081 | 14,623 | |
SGBGE | 13,302 | 343,925 | 10,930 | 0.001 | 17.08 | 0.011 | 714,263 | 250 | 1,544,150 | 24,776 | |
BGFI Bank | 18,999 | 105,870 | 5974 | 0.02 | 33.692 | 0.474 | 202,097 | 160 | 21,483 | 19,608 | |
Ecobank | 13,450 | 26,944 | 6228 | 0.267 | 62.714 | 2.962 | 11,350 | 57 | 2669 | 14,506 | |
2017 | BANGE | 82,644 | 83,793 | 17,500 | 0.008 | 19.785 | 0.867 | 366,546 | 413 | 26,907 | 34,279 |
CCEI Bank | 25,306 | 59,190 | 3883 | 0.009 | 11.952 | 0.112 | 428,530 | 293 | 53,721 | 13,319 | |
SGBGE | 20,753 | 356,626 | 11,610 | 0.001 | 18.367 | 0.011 | 2,922,668 | 245 | 1,600,120 | 26,235 | |
BGFI Bank | 136,388 | 96,420 | 6320 | 0.019 | 39.763 | 0.422 | 220,624 | 162 | 24,685 | 20,959 | |
Ecobank | 14,233 | 30,825 | 6784 | 0.276 | 58.792 | 3.121 | 10,830 | 75 | 2994 | 16,742 | |
2018 | BANGE | 128,000 | 92,001 | 16,900 | 0.005 | 18.816 | 1.231 | 383,900 | 469 | 23,745 | 39,999 |
CCEI Bank | 49,485 | 53,210 | 3148 | 0.016 | 12.529 | 0.07 | 263,946 | 292 | 58,265 | 11,856 | |
SGBGE | 10,033 | 369,327 | 12,290 | 0.001 | 18.622 | 0.011 | 3,009,326 | 254 | 1,656,090 | 27,694 | |
BGFI Bank | 43,099 | 89,177 | 6545 | 0.019 | 44.866 | 0.317 | 219,990 | 167 | 31,031 | 21,401 | |
Ecobank | 14,733 | 34,706 | 7340 | 0.301 | 56.388 | 3.249 | 10,682 | 93 | 3319 | 19,240 | |
2019 | BANGE | 23,723 | 87,310 | 15,900 | 0.003 | 19.027 | 1.452 | 401,254 | 487 | 24,192 | 45,758 |
CCEI Bank | 648,062 | 51,087 | 3051 | 0.018 | 12.498 | 0.039 | 249,070 | 304 | 55,490 | 10,432 | |
SGBGE | 12,319 | 382,028 | 12,970 | 0.001 | 18.577 | 0.012 | 3,018,003 | 267 | 1,712,060 | 29,153 | |
BGFI Bank | 151,819 | 81,382 | 6800 | 0.018 | 52.415 | 0.267 | 225,371 | 163 | 36,591 | 22,399 | |
Ecobank | 15,233 | 38,587 | 7896 | 0.346 | 57.893 | 3.355 | 10,534 | 105 | 3645 | 21,953 |
Variable | BANGE | CCEI Bank | SGBGE | BGFI Bank | Eco-Bank |
---|---|---|---|---|---|
Total Cost (Millions XAF) | 28,511 | 15,332 | 22,575 | 14,818 | 10,558 |
Total Asset (Millions XAF) | 405,315 | 781,563 | 4,144,613 | 229,889 | 100,268 |
Social Capital (Millions XAF) | 12,000 | 10,000 | 10,022 | 20,000 | 10,000 |
Outputs | |||||
Y1: Loans (Millions XAF) | 67,670 | 600,955 | 12,823 | 126,701 | 25,795 |
Y2: Other Assets (Millions XAF) | 181,637 | 150,578 | 323,339 | 90,334 | 25,004 |
Y3: Incomes without interest (Millions XAF) | 19,894 | 5195 | 9903 | 6242 | 5939 |
Input Prices | |||||
W1 Fund Price | 0.037 | 0.009 | 0.001 | 0.017 | 0.289 |
W2 Labor Price | 17.801 | 10.614 | 16.945 | 23.889 | 42.733 |
W3 Fixed Asset Price | 0.623 | 0.167 | 0.01 | 0.612 | 2.702 |
Number of branches | 28 | 11 | 7 | 7 | 6 |
Total observations | 50 |
TC | TA | SC | Y1 | Y2 | Y3 | W1 | W2 | W3 | I1 | |
---|---|---|---|---|---|---|---|---|---|---|
BANGE | ||||||||||
Mean | 28,511 | 405,315 | 12,000 | 67,670 | 181,637 | 19,894 | 0.037 | 17.801 | 0.623 | 267,220 |
Median | 24,553 | 395,542 | 12,000 | 53,559 | 206,561 | 19,168 | 0.021 | 18.600 | 0.432 | 285,521 |
Minimum | 19,636 | 327,489 | 12,000 | 0 | 83,793 | 15,900 | 0.003 | 14.227 | 0.265 | 91,200 |
Maximum | 45,758 | 499,144 | 12,000 | 182,644 | 257,851 | 24,651 | 0.092 | 20.454 | 1.452 | 408,561 |
S. Deviation | 8680 | 53,670 | 0 | 73,210 | 69,428 | 3181 | 0.035 | 2.231 | 0.430 | 127,486 |
CCEI Bank | ||||||||||
Mean | 15,332 | 781,563 | 10,000 | 600,955 | 150,578 | 5195 | 0.009 | 10.614 | 0.167 | 526,166 |
Median | 15,996 | 766,981 | 10,000 | 630,279 | 165,890 | 5229 | 0.008 | 11.041 | 0.214 | 490,029 |
Minimum | 10,432 | 598,264 | 10,000 | 438,497 | 51,087 | 3051 | 0.004 | 8.460 | 0.039 | 249,070 |
Maximum | 18,528 | 1,071,674 | 10,000 | 715,804 | 228,813 | 7150 | 0.018 | 12.529 | 0.220 | 895,939 |
S. Deviation | 2716 | 150,106 | 0 | 93,661 | 71,854 | 1572 | 0.005 | 1.641 | 0.070 | 201,213 |
SGBGE | ||||||||||
Mean | 22,575 | 4,144,613 | 10,022 | 12,823 | 323,339 | 9903 | 0.001 | 16.945 | 0.010 | 3,620,013 |
Median | 22,588 | 4,183,667 | 10,022 | 12,021 | 324,874 | 9910 | 0.001 | 17.160 | 0.010 | 3,666,611 |
Minimum | 15,899 | 3,277,490 | 10,022 | 9842 | 252,378 | 6777 | 0.001 | 14.327 | 0.009 | 2,922,668 |
Maximum | 29,153 | 4,891,601 | 10,022 | 20,753 | 382,028 | 12,970 | 0.001 | 18.622 | 0.012 | 4,318,559 |
S. Deviation | 4438 | 529,346 | 0 | 3200 | 41,196 | 2071 | 0.000 | 1.474 | 0.001 | 490,029 |
BGFI Bank | ||||||||||
Mean | 14,818 | 229,889 | 20,000 | 126,701 | 90,334 | 6242 | 0.017 | 23.889 | 0.612 | 196,022 |
Median | 17,119 | 254,634 | 20,000 | 123,259 | 86,313 | 6385 | 0.019 | 23.402 | 0.571 | 211,678 |
Minimum | 0 | 0 | 20,000 | 105,578 | 73,150 | 5315 | 0.008 | 0.000 | 0.267 | 0 |
Maximum | 22,399 | 425,731 | 20,000 | 151,819 | 112,010 | 6800 | 0.020 | 52.415 | 1.026 | 398,082 |
S. Deviation | 8291 | 133,934 | 0 | 16,966 | 13,393 | 507 | 0.004 | 18.633 | 0.287 | 119,618 |
Eco-Bank | ||||||||||
Mean | 10,558 | 100,268 | 10,000 | 25,795 | 25,004 | 5939 | 0.289 | 42.733 | 2.702 | 8115 |
Median | 11,067 | 79,739 | 10,000 | 28,535 | 25,004 | 5950 | 0.288 | 56.736 | 2.860 | 10,608 |
Minimum | 0 | 0 | 10,000 | 3712 | 11,420 | 3821 | 0.211 | 0.000 | 1.568 | 0 |
Maximum | 21,953 | 247,225 | 10,000 | 43,387 | 38,587 | 7896 | 0.363 | 68.046 | 3.355 | 11,650 |
S. Deviation | 7761 | 92,437 | 0 | 12,478 | 9506 | 1388 | 0.051 | 25.688 | 0.615 | 4774 |
Stochastic Frontiers Panel Data | Data Envelopment Analysis (DEA) | |||||||||
---|---|---|---|---|---|---|---|---|---|---|
ENTITY | Production Function C-Douglas | Production Function Translog | Cost Function C-Douglas | DEA Cross S. T. Efficiency | DEA Cross S. Alloc. Effic. | DEA Croos S. Cost Eff. | DEA P. Data (CRS) | DEA Malmquist (CRS) | DEA Malmquist (VRS) | Superefficeincy DEA Ranks (Number of Time Periods) |
BANGE | 0.051 | 0.025 | 0.033 | 0.231 | 0.702 | 0.162 | 0.581 | 0.784 | 0.931 | 1 |
CCEI Bank | 0.716 | 0.699 | 0.019 | 1.000 | 1.000 | 1.000 | 0.964 | 1.000 | 1.000 | 2 |
SGBGE | 0.001 | 0.004 | 0.010 | 0.017 | 0.170 | 0.003 | 0.620 | 0.598 | 0.848 | 2 |
BGFI Bank | 0.228 | 0.093 | 0.026 | 0.346 | 0.979 | 0.339 | 0.925 | 0.872 | 0.889 | 2 |
Eco Bank | 0.570 | 0.708 | 0.051 | 0.343 | 0.660 | 0.226 | 1.000 | 1.000 | 1.000 | 5 |
Mean | 0.313 | 0.306 | 0.028 | 0.387 | 0.702 | 0.346 | 0.818 | 0.851 | 0.934 |
2013–2014 | 2014–2015 | 2015–2016 | 2016–2017 | 2017–2018 | 2018–2019 | |
---|---|---|---|---|---|---|
Profit variation (Δπt) | 6704.33 | 5098.22 | −1086.77 | −861.62 | −2707.73 | −2278.72 |
Average Profit (πm) | 17,848.45 | 23,749.72 | 20,864.95 | 15,000.25 | 13,215.58 | 10,722.36 |
Cost Variation (ΔCt) | 4061.59 | 4637.97 | 7391.70 | 9812.70 | 8655.85 | 9504.70 |
Average Cost (Cm) | 87,660.90 | 92,010.68 | 98,025.52 | 106,627.72 | 115,861.99 | 124,942.26 |
Boone Indicator (β) | 8.11 | 4.26 | −6.91 | −0.62 | −2.74 | −2.79 |
2014–2015 | 2015–2016 | 2016–2017 | 2017–2018 | 2018–2019 | |
---|---|---|---|---|---|
Total Revenues variation (ΔRi) | −458.17 | 6960.53 | 1766.13 | −445.34 | −4588.25 |
Average Revenue (Ri) | 970,67.31 | 100,318.49 | 104,681.81 | 105,342.21 | 102,825.41 |
Input Price variation (ΔWi) | −5.80 | 14.22 | 3.95 | 2.94 | 9.48 |
Input price (Wi) | 114.09 | 111.86 | 114.34 | 112.27 | 112.23 |
P-R Indicator | 0.09 | 0.55 | 0.49 | 0.16 | −0.53 |
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Ela-Medja, T.O.; Alberca, P. Efficiency and Competitiveness of the Equatorial Guinean Financial Sector. Mathematics 2023, 11, 241. https://doi.org/10.3390/math11010241
Ela-Medja TO, Alberca P. Efficiency and Competitiveness of the Equatorial Guinean Financial Sector. Mathematics. 2023; 11(1):241. https://doi.org/10.3390/math11010241
Chicago/Turabian StyleEla-Medja, Tito Ondo, and Pilar Alberca. 2023. "Efficiency and Competitiveness of the Equatorial Guinean Financial Sector" Mathematics 11, no. 1: 241. https://doi.org/10.3390/math11010241
APA StyleEla-Medja, T. O., & Alberca, P. (2023). Efficiency and Competitiveness of the Equatorial Guinean Financial Sector. Mathematics, 11(1), 241. https://doi.org/10.3390/math11010241