A New Extension of the Kumaraswamy Generated Family of Distributions with Applications to Real Data
Abstract
:1. Introduction
2. The NEKwG Family
2.1. Definition
2.2. Some Special Distributions
2.2.1. New Extended Kw Uniform (NEKwU) Distribution
2.2.2. New Extended Kw Exponential (NEKwE) Distribution
3. Mathematical Developments
3.1. Asymptotic Results
- As , we have
- As , we havewhere denotes the hrf associated to the baseline distribution.
3.2. Expansions and Approximations
3.3. Moments and Entropy
- Moments are significant theoretical measures because they provide an alternative way to fully and uniquely specify a characteristic of a probability distribution, such as the central tendency, deviations, skewness, and kurtosis. Incomplete moments aid in obtaining mean deviations and some important reliability measures, such as moments of residual life. Let X be a random variable (rv) with a distribution belonging to the KwG family.
- The central moment of X can be expressed and approximated asFrom it, we can derive the mean (), variance (), and other raw-moment composed measures.
- The incomplete moment of X can be expressed and approximated asBased on it, we can derive various mean deviations and reverse residual life functions.
Remark 1.In the special case where β is an integer greater to 1 (implying that is a positive integer for any positive integer j), we can express in a series form to further express . This will allow us to obtain the mean, variance, and other possible moments in series form. The following lemma is required: logarithmic series representation.Lemma 3.Hence, we can write - Entropy in information theory is directly analogous to entropy in statistical thermodynamics. The average level of information or uncertainty in a random variable or system is defined as its entropy. One can see [55,56].Here, we discuss the Rényi entropy of the new model. The Rényi entropy can be derived from the following formula:
3.4. Order Statistics and Applications
4. Inference
4.1. Maximum Likelihood Estimation Method
4.2. Least-Squares Estimation Method
4.3. Bayes Estimation Method
4.4. Simulation
- Choose the sample size n, replication number M, and the values of parameters ;
- Generate random sample with following the uniform distribution, ;
- Generate random sample with following the NEKwE distribution, , from (7);
- Calculate the MLEs, LSEs, and BEs of the parameters of the NEKwE distribution from the simulated data;
- Repeat steps , M times;
- Calculate the average bias and the average MSE for each parameter.
5. Real Data Illustrations
5.1. First Data Illustration
5.2. Second Data Illustration
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Model Title | Cumulative Distribution Function | |
---|---|---|
1 | Kumaraswamy-G (KwG) [20] | |
2 | Kumaraswamy Kw-G (KwKwG) [22] | |
3 | Kw Marshall–Olkin-G (KwMOG) [23] | |
4 | Kw transmuted-G (KwTG) [24] | |
5 | Kw Weibull-G (KwWG) [25] | , |
6 | Kw generalized Marshall–Olkin -G (KwgMOG) [26] | |
7 | Generalized Kw-G (GKwG) [27] | |
8 | Kw half logistic-G (KwHLG) [28] | |
9 | Exponentiated Kw-G (EKwG) [29] | |
10 | New Kw-G family (NKwG) [30] | |
11 | Kw Poisson-G (KwPG) [31] | |
12 | New flexible Kw-G family by [32] |
0.71768 | 1.03313 | 2.28219 | 6.83653 | 25.8867 | 118.4506 | (0.3, 1.41125) | |
0.61259 | 0.64795 | 1.01191 | 2.12487 | 5.64265 | 18.16074 | (03, 1.11913) | |
0.48557 | 0.35739 | 0.36531 | 0.48786 | 0.81371 | 1.63761 | (0.5, 0.44020) | |
0.41501 | 0.24510 | 0.19427 | 0.19756 | 0.24864 | 0.37611 | (0.7, 0.04891) | |
0.36200 | 0.16956 | 0.10021 | 0.07306 | 0.06440 | 0.06735 | (0.8, −0.28339) | |
0.31390 | 0.12234 | 0.05827 | 0.03343 | 0.22783 | 0.01821 | (0.9, −0.54607) | |
0.26369 | 0.08228 | 0.03011 | 0.01282 | 0.00630 | 0.00355 | (1.2, −0.91860) | |
0.17325 | 0.03102 | 0.00575 | 0.00110 | 0.00022 | 4.5132 | (1.5, −2.17380) | |
0.12747 | 0.01660 | 0.00221 | 0.00030 | 4.1846 | 5.0597 | (2.5, −2.78688) | |
0.10027 | 0.01019 | 0.00105 | 0.00011 | 1.3697 | 1.5809 | (4.0, −3.34023) |
2.86816 | 13.54189 | 65.44814 | 319.3925 | 1567.033 | 7714.550 | (0.3, 1.019132) | |
2.67845 | 11.85061 | 55.04053 | 260.9645 | 1251.6520 | 6047.708 | (0.3, 1.29516) | |
2.98179 | 14.18390 | 73.55873 | 396.6081 | 2186.6081 | 12,232.710 | (0.5, 1.56745) | |
3.655797 | 19.36484 | 112.9656 | 690.1417 | 4333.0080 | 27,701.230 | (0.6, 1.83527) | |
4.56824 | 28.82154 | 203.27880 | 1518.787 | 11,756.430 | 93,213.580 | (0.9, 2.17128) | |
5.012322 | 30.77091 | 211.8259 | 1567.821 | 12,194.33 | 98,314.690 | (0.95, 2.22128) | |
5.46455 | 34.2996 | 237.5096 | 1767.261 | 13,882.63 | 113,731.80 | (1.1, 2.12436) | |
5.88904 | 36.80876 | 242.8527 | 1682.792 | 12,190.180 | 91,929.880 | (1.2, 1.74467) | |
6.65158 | 45.90616 | 328.19940 | 2426.8060 | 18,530.43 | 145,889.60 | (1.5, 1.57082) | |
12.06492 | 145.8572 | 1766.8880 | 21,447.02 | 260,855.60 | 317,926.00 | (5, 0.504434) |
Sample Size | Actual Values | Maximum Likelihood | Least Squares Estimation | Bayes Estimation | |||
---|---|---|---|---|---|---|---|
Parameter | AE | MSE (Bias) | AE | MSE (Bias) | AE | MSE (Bias) | |
30 | 1.8006 | 2.7013 (0.9001) | 1.7304 | 6.7979 (0.8303) | 1.4027 | 0.4654 (0.5027) | |
1.6046 | 2.9620 (1.1046) | 0.2263 | 0.7973 (−0.2734) | 0.4907 | 0.0483 (−0.0092) | ||
1.7107 | 0.8835 (0.2108) | 2.3014 | 2.8475 (0.8014) | 1.1071 | 0.3733 (−0.3929) | ||
0.4660 | 0.1726 (0.2660) | 0.9407 | 0.8815 (0.7408) | 1.3949 | 1.6274 (1.1949) | ||
50 | 1.0588 | 0.8541 (0.1588) | 1.5768 | 3.8842 (0.6768) | 1.3716 | 0.4396 (0.4716) | |
1.4082 | 2.8272 (0.9081) | 0.2108 | 0.7341 (−0.2892) | 0.4499 | 0.0349 (−0.0501) | ||
1.9599 | 0.7059 (0.4599) | 2.6065 | 2.7268 (1.1065) | 1.0137 | 0.3641 (−0.4863) | ||
0.3119 | 0.0983 (0.1186) | 0.7612 | 0.5395 (0.5612) | 1.3869 | 1.5649 (1.1869) | ||
100 | 1.1416 | 0.5249 (0.2415) | 1.0754 | 0.6415 (0.1754) | 1.2564 | 0.3129 (0.3564) | |
1.1579 | 1.3741 (0.6579) | 0.9353 | 0.6362 (0.4353) | 0.4496 | 0.0222 (−0.0504) | ||
1.6213 | 0.3529 (0.1213) | 1.8049 | 1.0281 (0.3049) | 0.9662 | 0.3581 (−0.5339) | ||
0.3231 | 0.0657 (0.1231) | 0.3509 | 0.1247 (0.1509) | 1.3065 | 1.3316 (1.1065) | ||
200 | 1.2736 | 0.5044 (0.3736) | 1.2862 | 0.4045 (0.3862) | 1.1489 | 0.1719 (0.2488) | |
0.6213 | 1.0565 (0.1213) | 0.1695 | 0.1633 (−0.3305) | 0.4668 | 0.0143 (−0.0333) | ||
1.4605 | 0.2436 (−0.0395) | 3.0593 | 1.0173 (1.5593) | 0.9356 | 0.3458 (−0.5644) | ||
0.3912 | 0.0577 (0.1912) | 0.5846 | 0.1028 (0.3846) | 1.2134 | 1.0191 (1.0134) | ||
300 | 0.9245 | 0.2123 (0.0245) | 1.3457 | 0.3252 (0.4457) | 1.0740 | 0.0175 (0.1746) | |
0.8167 | 1.0143 (0.3167) | 0.1575 | 0.1538 (−0.3425) | 0.4802 | 0.0071 (−0.0198) | ||
1.5928 | 0.1516 (0.0928) | 2.6932 | 1.0119 (1.4466) | 0.9152 | 0.3137 (−0.5848) | ||
0.2462 | 0.0322 (0.0462) | 0.3140 | 0.1011 (0.3934) | 0.1620 | 0.9664 (0.9621) | ||
30 | 1.2599 | 1.6494 (0.4599) | 1.0549 | 2.0909 (0.2549) | 1.4039 | 0.4689 (0.6393) | |
3.1148 | 6.3529 (2.5148) | 0.3145 | 0.9258 (−0.2855) | 0.7568 | 0.1265 (0.1568) | ||
1.7215 | 1.2941 (0.4215) | 2.1351 | 2.4326 (0.8351) | 1.1430 | 0.1724 (−0.1569) | ||
0.5408 | 0.8770 (0.2408) | 1.4441 | 2.0211 (1.1441) | 1.0523 | 1.0136 (0.7523) | ||
50 | 0.8026 | 0.6147 (0.0027) | 1.0165 | 1.0591 (0.2165) | 1.3538 | 0.4213 (0.5538) | |
0.8751 | 2.7323 (0.2751) | 0.2626 | 0.3763 (−0.3375) | 0.6455 | 0.1006 (0.0455) | ||
1.8551 | 1.2417 (0.5551) | 1.9444 | 1.8305 (0.6444) | 1.1106 | 0.1242 (−0.1439) | ||
0.7767 | 0.7698 (0.4767) | 1.4506 | 1.2177 (1.1506) | 1.2768 | 1.0119 (0.9768) | ||
100 | 1.0189 | 0.2508 (0.2189) | 0.8088 | 0.4905 (0.0088) | 1.3493 | 0.4201 (0.5493) | |
0.5024 | 1.4239 (−0.0976) | 1.4947 | 0.3712 (0.8947) | 0.5079 | 0.0660 (−0.0921) | ||
1.3348 | 0.2385 (0.0348) | 1.6855 | 1.1491 (0.3856) | 1.0849 | 0.1065 (−0.2152) | ||
0.8522 | 0.4676 (0.5522) | 0.4497 | 0.2703 (0.1496) | 1.5119 | 1.0103 (1.2111) | ||
200 | 0.7443 | 0.2100 (−0.0557) | 1.0069 | 0.4091 (0.2069) | 1.3226 | 0.3925 (0.5226) | |
0.9253 | 1.3761 (0.3253) | 0.2773 | 0.1868 (−0.3227) | 0.4519 | 0.0048 (−0.1481) | ||
1.5262 | 0.2351 (0.2262) | 1.6212 | 0.7274 (0.3212) | 1.0901 | 0.1057 (−0.2099) | ||
0.4672 | 0.1342 (0.1672) | 1.3094 | 0.1977 (1.0093) | 1.5502 | 1.0100 (1.2503) | ||
300 | 0.8393 | 0.1383 (0.0394) | 0.9956 | 0.3129 (0.1956) | 1.3172 | 0.3789 (0.5172) | |
0.5177 | 1.1733 (−0.0080) | 0.3118 | 0.1798 (−0.2882) | 0.4432 | 0.0041 (−0.1567) | ||
1.3359 | 0.2073 (0.0359) | 1.5242 | 0.4723 (0.2242) | 1.0648 | 0.1036 (−0.2352) | ||
0.3278 | 0.1282 (0.3279) | 0.5912 | 0.1223 (0.7912) | 0.5244 | 1.0031 (1.2244) | ||
30 | 3.6849 | 6.9051 (2.7849) | 3.3102 | 4.1841 (2.4102) | 1.3901 | 0.4901 (0.4920) | |
0.7941 | 5.0230 (−0.0059) | 0.2286 | 0.6271 (−0.5713) | 0.4622 | 0.1470 (−0.3377) | ||
1.3163 | 1.8718 (−0.2837) | 1.3882 | 1.1080 (−0.2118) | 1.0320 | 0.4988 (−0.679) | ||
0.6934 | 0.5599 (0.5934) | 1.2924 | 1.8682 (1.1924) | 1.3599 | 1.7374 (1.2599) | ||
50 | 1.3867 | 1.8839 (0.4868) | 2.5043 | 2.2238 (2.0421) | 1.2972 | 0.4145 (0.3972) | |
1.1378 | 1.7544 (0.9379) | 0.2289 | 0.5851 (−0.5711) | 0.4519 | 0.1435 (−0.3480) | ||
2.1052 | 1.8452 (0.5052) | 1.3469 | 0.8534 (−0.2531) | 0.9595 | 0.4905 (−0.6404) | ||
0.2209 | 0.0599 (0.1209) | 0.2657 | 1.8499 (1.1657) | 0.2981 | 1.5494 (1.1981) | ||
100 | 1.5896 | 1.6266 (0.6596) | 3.9471 | 1.6999 (0.0471) | 1.1788 | 0.2715 (0.2788) | |
0.9147 | 1.6862 (0.1147) | 0.2309 | 0.5715 (−0.5691) | 0.4668 | 0.1246 (−0.3332) | ||
1.7741 | 0.5433 (0.1741) | 1.3780 | 0.7239 (−0.2219) | 0.9183 | 0.4045 (−0.6817) | ||
0.2895 | 0.0552 (0.1896) | 0.2221 | 1.8218 (1.1221) | 0.2037 | 1.2743 (1.1037) | ||
200 | 2.657 | 1.0958 (1.7578) | 3.9653 | 1.5652 (1.0652) | 1.0464 | 0.0810 (0.1464) | |
0.3649 | 0.8503 (−0.4351) | 0.5164 | 0.4247 (−0.5836) | 0.4946 | 0.0966 (−0.3054) | ||
1.1009 | 0.3560 (−0.4991) | 1.3398 | 0.6188 (−0.2616) | 0.8989 | 0.3042 (−0.7010) | ||
0.5457 | 0.0402 (0.4457) | 0.1476 | 1.6308 (1.0476) | 0.1285 | 1.0772 (1.0285) | ||
300 | 2.1815 | 1.0396 (1.2815) | 3.9173 | 1.4341 (1.0173) | 1.0106 | 0.0232 (0.1106) | |
0.4289 | 0.6126 (−0.3710) | 0.5359 | 0.3921 (−0.5641) | 0.4976 | 0.0922 (−0.3024) | ||
1.2506 | 0.2827 (−0.3494) | 1.3718 | 0.6034 (−0.2282) | 0.9008 | 0.2899 (−0.6992) | ||
0.4141 | 0.0337 (0.3141) | 0.0553 | 1.3245 (0.9053) | 0.1057 | 1.0148 (1.0057) |
Sample Size | Actual Values | Maximum Likelihood | Least Squares Estimation | Bayes Estimation | |||
---|---|---|---|---|---|---|---|
Parameter | AE | MSE (Bias) | AE | MSE (Bias) | AE | MSE (Bias) | |
30 | 0.3817 | 0.9681 (−0.5182) | 0.6761 | 0.6955 (−0.2239) | 1.0351 | 0.0433 (0.1351) | |
0.4463 | 1.9703 (−0.4537) | 0.8107 | 2.1919 (−0.0893) | 0.4917 | 0.1717 (−0.4083) | ||
1.6751 | 1.2806 (0.8750) | 0.8272 | 0.4846 (0.0272) | 0.9006 | 0.0335 (0.1006) | ||
0.3460 | 0.1252 (0.2461) | 0.9111 | 0.8984 (0.8111) | 0.3430 | 1.1152 (1.0430) | ||
50 | 0.5165 | 0.9570 (−0.4835) | 0.6052 | 0.4416 (−0.2948) | 1.0020 | 0.0116 (0.1019) | |
0.8511 | 1.2601 (−0.0489) | 0.4769 | 2.0619 (−0.4231) | 0.4989 | 0.1619 (−0.4016) | ||
1.5370 | 1.1341 (0.7371) | 0.7443 | 0.1975 (−0.0557) | 0.9003 | 0.0111 (0.1003) | ||
0.2811 | 0.0612 (0.1811) | 0.0564 | 0.8817 (0.8564) | 0.5056 | 1.0144 (1.0056) | ||
100 | 0.3895 | 0.4320 (−0.5105) | 0.4918 | 0.3323 (−0.4082) | 1.0001 | 0.0101 (0.1001) | |
0.4533 | 1.1413 (−0.4467) | 0.2570 | 1.5292 (−0.6429) | 0.4999 | 0.1601 (−0.4007) | ||
1.4027 | 0.8709 (0.6027) | 0.7718 | 0.1407 (−0.0283) | 0.8999 | 0.0099 (0.0999) | ||
0.2649 | 0.0433 (0.1649) | 0.9504 | 0.8489 (0.8504) | 0.1900 | 1.0002 (1.0001) | ||
200 | 0.8821 | 0.3965 (−0.5179) | 0.4250 | 0.2890 (−0.4749) | 1.2697 | 0.0036 (0.3697) | |
0.4246 | 1.1347 (−0.6754) | 0.8399 | 0.6607 (−0.7600) | 0.7590 | 0.0933 (−0.1409) | ||
1.5257 | 0.4936 (0.7256) | 0.7760 | 0.0719 (−0.0239) | 0.8619 | 0.0086 (0.0619) | ||
0.2368 | 0.0206 (0.1168) | 0.1919 | 0.8153 (0.8919) | 1.0169 | 0.8727 (0.9169) | ||
300 | 0.9498 | 0.3642 (−0.4501) | 0.8025 | 0.2800 (−0.4975) | 1.2561 | 0.0033 (0.3561) | |
0.9639 | 1.0483 (−0.5036) | 0.6369 | 0.6491 (−0.7631) | 0.7566 | 0.0963 (−0.1434) | ||
1.2168 | 0.4162 (0.4168) | 0.8055 | 0.0689 (0.0056) | 0.8825 | 0.0084 (0.6246) | ||
0.2316 | 0.0207 (0.1316) | 0.0965 | 0.8151 (0.8655) | 0.0980 | 0.8633 (0.9098) | ||
30 | 1.743 | 1.9704 (0.0256) | 1.3804 | 2.9631 (0.1804) | 1.3034 | 0.0282 (0.1034) | |
1.2735 | 1.4076 (1.6213) | 2.9285 | 1.3845 (1.4285) | 1.3702 | 0.9756 (0.8702) | ||
3.1076 | 1.6792 (1.3076) | 3.1377 | 1.8231 (1.3377) | 1.4807 | 0.1295 (−0.3193) | ||
1.2450 | 1.5867 (−0.2549) | 1.9838 | 1.2011 (0.9034) | 0.9034 | 0.3688 (−0.5966) | ||
50 | 1.6408 | 1.8623 (0.4408) | 1.3028 | 2.8544 (0.1028) | 1.2630 | 0.0280 (0.0629) | |
1.6196 | 1.3254 (0.1196) | 1.9128 | 1.2836 (1.4128) | 1.3304 | 0.7124 (0.8304) | ||
2.5037 | 1.2487 (0.7038) | 2.8896 | 1.7275 (1.0896) | 1.4823 | 0.1278 (−0.3178) | ||
1.9977 | 1.5511 (0.4977) | 1.7057 | 1.0768 (0.2057) | 0.9057 | 0.3680 (−0.5945) | ||
100 | 1.3408 | 1.4408 (0.2408) | 1.2354 | 1.4042 (0.0354) | 1.2025 | 0.0214 (0.0025) | |
1.3463 | 1.2978 (0.8463) | 1.4629 | 1.1302 (0.9629) | 1.2389 | 0.5877 (0.7389) | ||
2.2718 | 1.1064 (0.4718) | 2.6212 | 0.8195 (0.8212) | 1.5189 | 0.1085 (−0.2812) | ||
1.8946 | 1.0894 (0.3946) | 1.5977 | 0.5677 (0.0977) | 0.9187 | 0.3131 (−0.5813) | ||
200 | 1.4169 | 1.1409 (0.2167) | 1.2822 | 1.1884 (0.0822) | 2.1391 | 0.0108 (−0.0609) | |
0.9447 | 1.1756 (0.4442) | 1.1759 | 1.0702 (0.6759) | 1.0670 | 0.3774 (0.5671) | ||
2.0925 | 0.6398 (0.2925) | 2.3519 | 0.3334 (0.5519) | 1.5915 | 0.0796 (−0.2085) | ||
1.8495 | 1.0294 (0.3495) | 1.6843 | 0.5305 (0.1843) | 0.9908 | 0.3082 (−0.5093) | ||
300 | 1.3656 | 1.1399 (0.1656) | 1.3682 | 0.5389 (0.1682) | 1.1149 | 0.0104 (−0.0851) | |
0.8583 | 1.1012 (0.3583) | 1.0543 | 1.0513 (0.5542) | 0.9693 | 0.2727 (0.4693) | ||
2.0026 | 0.5430 (0.2026) | 2.2385 | 0.1725 (0.4385) | 1.6363 | 0.0634 (−0.1637) | ||
1.7865 | 1.0184 (0.2865) | 1.7890 | 0.4505 (0.2894) | 1.0262 | 0.3079 (−0.4738) | ||
30 | 1.7701 | 2.6890 (1.5491) | 1.6335 | 1.4435 (0.3335) | 1.2880 | 0.0163 (−0.0119) | |
1.0233 | 1.3059 (1.5331) | 0.9805 | 1.9453 (1.1056) | 1.0440 | 0.5653 (0.7406) | ||
1.4934 | 1.8305 (−0.065) | 1.6488 | 1.5479 (1.1488) | 1.4599 | 0.0277 (−0.0401) | ||
1.0851 | 1.9755 (1.5851) | 1.4190 | 1.4532 (0.6119) | 0.9538 | 0.3060 (−0.5462) | ||
50 | 1.7819 | 2.6289 (0.4819) | 1.5130 | 1.4428 (0.2130) | 1.2487 | 0.0108 (−0.0513) | |
1.3448 | 1.2257 (1.6448) | 2.6199 | 1.7703 (1.9199) | 1.4130 | 0.5307 (0.7130) | ||
2.0436 | 1.7296 (0.5436) | 2.4146 | 1.1699 (0.9146) | 1.4379 | 0.0241 (−0.0621) | ||
2.4704 | 1.7845 (0.9704) | 2.0158 | 1.4152 (0.5158) | 0.9584 | 0.3034 (−0.5406) | ||
100 | 1.4670 | 1.6288 (0.1670) | 1.4288 | 1.2613 (0.1287) | 1.2057 | 0.0103 (−0.0943) | |
2.3552 | 1.1633 (1.6552) | 1.7995 | 1.5024 (1.0995) | 1.3747 | 0.4955 (0.6747) | ||
1.8117 | 1.2098 (0.3117) | 2.0658 | 1.0073 (0.5657) | 1.4328 | 0.0227 (−0.0672) | ||
2.0452 | 1.6784 (0.5452) | 2.0116 | 1.3612 (0.5126) | 0.9522 | 0.3008 (−0.5478) | ||
200 | 1.7226 | 1.3829 (0.4226) | 1.3905 | 1.0983 (0.0903) | 1.1658 | 0.0101 (−0.1343) | |
1.2389 | 1.1065 (0.5389) | 1.5357 | 1.1174 (0.8357) | 1.2681 | 0.3853 (0.5681) | ||
1.5232 | 0.7898 (0.0232) | 1.8928 | 0.9315 (0.3928) | 1.4646 | 0.0221 (−0.0356) | ||
2.4740 | 1.6092 (0.9740) | 1.9057 | 1.2091 (0.4058) | 0.9821 | 0.3001 (−0.5179) | ||
300 | 1.4445 | 1.1039 (0.1445) | 1.3748 | 1.0700 (0.0748) | 1.1678 | 0.0100 (−0.1322) | |
1.0345 | 1.0288 (0.8345) | 1.4435 | 1.0874 (0.7435) | 1.1725 | 0.1886 (0.4725) | ||
1.6759 | 0.4200 (0.1758) | 1.7882 | 0.6083 (0.2882) | 1.1180 | 0.0215 (−0.0195) | ||
2.0199 | 0.5198 (0.5199) | 1.8745 | 0.3745 (0.3745) | 1.4170 | 0.2615 (−0.4583) |
Model | ||||||||
---|---|---|---|---|---|---|---|---|
NEKwU | − | − | − | − | ||||
KwP | − | − | − | 301 | − | |||
EKwP | − | − | − | |||||
KwEUq | − | − | − | |||||
POEU | − | − | − | − | − | |||
BU | − | − | − | − | − | |||
WP | − | − | − | − | − | |||
TEUq | 300 | − | − | − | − | |||
MW | − | − | − | − | − | |||
FW | − | − | − | − | − | − |
Model | L | AIC | BIC | CAIC | KS | AD | CvM |
---|---|---|---|---|---|---|---|
NEKwU | |||||||
KwP | |||||||
EKwP | |||||||
KwEUq | |||||||
POEU | |||||||
BU | |||||||
WP | |||||||
TEUq | |||||||
MW | |||||||
FW |
Model | |||||||
---|---|---|---|---|---|---|---|
NEKwE | − | − | − | ||||
KwE | − | − | − | − | |||
KwHL | − | − | − | − | |||
KwW | − | − | − | ||||
EKwE | − | − | − | ||||
EKwW | − | − | |||||
BE | − | − | − | − | |||
BGE | − | − | − | ||||
BETE | − | − | − | ||||
GE | − | − | − | − | − | ||
GEP | − | − | − | − | |||
ENH | − | − | − | − | |||
EETE | − | − | − | − | |||
ESE | − | − | − | − | − | ||
ExCE | − | − | − | − | − | ||
E | − | − | − | − | − | − |
Model | L | AIC | BIC | CAIC | KS | AD | CvM |
---|---|---|---|---|---|---|---|
NEKwE | |||||||
KwE | |||||||
KwHL | |||||||
KwW | |||||||
EKwE | |||||||
EKwW | |||||||
BE | |||||||
BGE | |||||||
BETE | |||||||
GE | |||||||
GEP | |||||||
ENH | |||||||
EETE | |||||||
ESE | |||||||
ExCE | |||||||
E |
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Share and Cite
Abbas, S.; Muhammad, M.; Jamal, F.; Chesneau, C.; Muhammad, I.; Bouchane, M. A New Extension of the Kumaraswamy Generated Family of Distributions with Applications to Real Data. Computation 2023, 11, 26. https://doi.org/10.3390/computation11020026
Abbas S, Muhammad M, Jamal F, Chesneau C, Muhammad I, Bouchane M. A New Extension of the Kumaraswamy Generated Family of Distributions with Applications to Real Data. Computation. 2023; 11(2):26. https://doi.org/10.3390/computation11020026
Chicago/Turabian StyleAbbas, Salma, Mustapha Muhammad, Farrukh Jamal, Christophe Chesneau, Isyaku Muhammad, and Mouna Bouchane. 2023. "A New Extension of the Kumaraswamy Generated Family of Distributions with Applications to Real Data" Computation 11, no. 2: 26. https://doi.org/10.3390/computation11020026