| Literature DB >> 36010697 |
Naif Alotaibi1, Atef F Hashem1,2, Ibrahim Elbatal1, Salem A Alyami1, A S Al-Moisheer3, Mohammed Elgarhy4.
Abstract
In this article, a new one parameter survival model is proposed using the Kavya-Manoharan (KM) transformation family and the inverse length biased exponential (ILBE) distribution. Statistical properties are obtained: quantiles, moments, incomplete moments and moment generating function. Different types of entropies such as Rényi entropy, Tsallis entropy, Havrda and Charvat entropy and Arimoto entropy are computed. Different measures of extropy such as extropy, cumulative residual extropy and the negative cumulative residual extropy are computed. When the lifetime of the item under use is assumed to follow the Kavya-Manoharan inverse length biased exponential (KMILBE) distribution, the progressive-stress accelerated life tests are considered. Some estimating approaches, such as the maximum likelihood, maximum product of spacing, least squares, and weighted least square estimations, are taken into account while using progressive type-II censoring. Furthermore, interval estimation is accomplished by determining the parameters' approximate confidence intervals. The performance of the estimation approaches is investigated using Monte Carlo simulation. The relevance and flexibility of the model are demonstrated using two real datasets. The distribution is very flexible, and it outperforms many known distributions such as the inverse length biased, the inverse Lindley model, the Lindley, the inverse exponential, the sine inverse exponential and the sine inverse Rayleigh model.Entities:
Keywords: Kavya–Manoharan class of distributions; inverse length biased exponential distribution; maximum likelihood estimation; maximum product spacing; progressive censoring; progressive-stress model
Year: 2022 PMID: 36010697 PMCID: PMC9407453 DOI: 10.3390/e24081033
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.738
Figure 1The process of generating order statistics under progressive type-II censoring.
Figure 2Different shapes of pdf for KMILBE distribution.
Figure 3Different shapes of hrf for KMILBE distribution.
MLEs and MPSEs of and with their MSEs, RABs, AMSE and ARAB based on 5000 simulations. Population parameter values are and .
|
|
| MLE | MPSE | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| ⋮ | ⋮ |
| MSE( | RAB( | AMSE |
| MSE( | RAB( | AMSE | |||
|
|
|
|
| CS |
| MSE( | RAB( | ARAB |
| MSE( | RAB( | ARAB |
| 60 | 2 | 30 | 15 | I | 1.53024 | 0.05812 | 0.12577 | 0.03379 | 1.48487 | 0.04614 | 0.11121 | 0.02773 |
| 30 | 15 | 0.22606 | 0.00947 | 0.37923 | 0.25250 | 0.16227 | 0.00932 | 0.40166 | 0.25644 | |||
| II | 1.53595 | 0.04652 | 0.11181 | 0.02743 | 1.48572 | 0.0377 | 0.10132 | 0.02280 | ||||
| 0.22546 | 0.00834 | 0.35354 | 0.23268 | 0.17043 | 0.0079 | 0.36371 | 0.23251 | |||||
| III | 1.52858 | 0.04054 | 0.10481 | 0.02420 | 1.50566 | 0.03521 | 0.09698 | 0.02144 | ||||
| 0.22350 | 0.00785 | 0.34484 | 0.22482 | 0.18206 | 0.00768 | 0.35259 | 0.22478 | |||||
| 22 | I | 1.52152 | 0.04256 | 0.10759 | 0.02494 | 1.47824 | 0.03525 | 0.09856 | 0.02143 | |||
| 22 | 0.22143 | 0.00731 | 0.33167 | 0.21963 | 0.16431 | 0.00761 | 0.35809 | 0.22832 | ||||
| II | 1.52260 | 0.03679 | 0.10087 | 0.02184 | 1.48067 | 0.03044 | 0.09125 | 0.01886 | ||||
| 0.22222 | 0.00688 | 0.32683 | 0.21385 | 0.16661 | 0.00729 | 0.34808 | 0.21966 | |||||
| III | 1.52217 | 0.03461 | 0.09761 | 0.02055 | 1.50056 | 0.02943 | 0.08901 | 0.01808 | ||||
| 0.22000 | 0.00649 | 0.31635 | 0.20698 | 0.17947 | 0.00672 | 0.33085 | 0.20993 | |||||
| 30 |
| 1.5168 | 0.03236 | 0.09332 | 0.01928 | 1.47735 | 0.02745 | 0.08799 | 0.01709 | |||
| 30 | 0.21873 | 0.0062 | 0.30563 | 0.19948 | 0.16573 | 0.00672 | 0.33395 | 0.21097 | ||||
| 3 | 20 | 10 | I | 1.50363 | 0.03188 | 0.09438 | 0.01999 | 1.51203 | 0.02856 | 0.08792 | 0.01866 | |
| 20 | 10 | 0.22289 | 0.00810 | 0.35086 | 0.22262 | 0.15476 | 0.00875 | 0.38819 | 0.23806 | |||
| 20 | 10 | 2 | 1.50703 | 0.02563 | 0.08418 | 0.01633 | 1.50139 | 0.02327 | 0.07961 | 0.01546 | ||
| 0.22049 | 0.00704 | 0.32220 | 0.20319 | 0.16055 | 0.00765 | 0.35851 | 0.21906 | |||||
| III | 1.50395 | 0.02286 | 0.08027 | 0.01485 | 1.51370 | 0.02116 | 0.07502 | 0.01396 | ||||
| 0.22105 | 0.00685 | 0.32158 | 0.20093 | 0.17491 | 0.00675 | 0.33257 | 0.20380 | |||||
| 15 | I | 1.49880 | 0.02440 | 0.08310 | 0.01544 | 1.50236 | 0.02143 | 0.07688 | 0.01451 | |||
| 15 | 0.21841 | 0.00648 | 0.31646 | 0.19978 | 0.15325 | 0.00758 | 0.35827 | 0.21757 | ||||
| 15 | 2 | 1.49920 | 0.02138 | 0.07757 | 0.01355 | 1.50050 | 0.01861 | 0.07160 | 0.01273 | |||
| 0.21803 | 0.00572 | 0.29586 | 0.18671 | 0.16032 | 0.00685 | 0.33739 | 0.20449 | |||||
| III | 1.49764 | 0.02039 | 0.07561 | 0.01307 | 1.51345 | 0.01954 | 0.07235 | 0.01301 | ||||
| 0.21837 | 0.00575 | 0.29681 | 0.18621 | 0.17124 | 0.00649 | 0.32721 | 0.19978 | |||||
| 20 |
| 1.49669 | 0.01886 | 0.07293 | 0.01200 | 1.50042 | 0.01721 | 0.06919 | 0.01179 | |||
| 20 | 0.21724 | 0.00514 | 0.28210 | 0.17752 | 0.15833 | 0.00638 | 0.32664 | 0.19791 | ||||
| 20 | ||||||||||||
| 120 | 2 | 60 | 30 | I | 1.51388 | 0.02722 | 0.08678 | 0.01597 | 1.47963 | 0.02448 | 0.08100 | 0.01534 |
| 60 | 30 | 0.21869 | 0.00471 | 0.26997 | 0.17837 | 0.16768 | 0.00619 | 0.31628 | 0.19864 | |||
| II | 1.51637 | 0.02148 | 0.07706 | 0.01271 | 1.48762 | 0.01830 | 0.07010 | 0.01177 | ||||
| 0.21666 | 0.00393 | 0.24826 | 0.16266 | 0.17449 | 0.00524 | 0.28384 | 0.17697 | |||||
| III | 1.51164 | 0.01922 | 0.07291 | 0.01148 | 1.49763 | 0.01640 | 0.06653 | 0.01077 | ||||
| 0.21586 | 0.00374 | 0.23947 | 0.15619 | 0.18138 | 0.00514 | 0.28047 | 0.17350 | |||||
| 45 | I | 1.51019 | 0.02027 | 0.07529 | 0.01200 | 1.48076 | 0.01728 | 0.06912 | 0.01125 | |||
| 45 | 0.21642 | 0.00372 | 0.24067 | 0.15798 | 0.17127 | 0.00523 | 0.28429 | 0.17671 | ||||
| II | 1.51018 | 0.01693 | 0.06818 | 0.01010 | 1.48194 | 0.01505 | 0.06404 | 0.01001 | ||||
| 0.21462 | 0.00327 | 0.22335 | 0.14577 | 0.17236 | 0.00497 | 0.27479 | 0.16941 | |||||
| III | 1.50822 | 0.01656 | 0.06806 | 0.00987 | 1.49334 | 0.01430 | 0.06195 | 0.00952 | ||||
| 0.21470 | 0.00319 | 0.22292 | 0.14549 | 0.17905 | 0.00474 | 0.26336 | 0.16266 | |||||
| 60 |
| 1.50503 | 0.01562 | 0.06583 | 0.00925 | 1.48008 | 0.01354 | 0.06086 | 0.00913 | |||
| 60 | 0.21199 | 0.00287 | 0.21081 | 0.13832 | 0.17163 | 0.00472 | 0.26401 | 0.16244 | ||||
| 3 | 40 | 20 | I | 1.50019 | 0.01744 | 0.06979 | 0.01076 | 1.49627 | 0.01484 | 0.06316 | 0.01029 | |
| 40 | 20 | 0.21572 | 0.00408 | 0.25050 | 0.16015 | 0.16160 | 0.00575 | 0.30320 | 0.18318 | |||
| 40 | 20 | II | 1.49748 | 0.01228 | 0.05844 | 0.00778 | 1.49558 | 0.01157 | 0.05601 | 0.00841 | ||
| 0.21360 | 0.00328 | 0.22342 | 0.14093 | 0.16736 | 0.00525 | 0.28359 | 0.16980 | |||||
| III | 1.4987 | 0.01120 | 0.05564 | 0.00720 | 1.50436 | 0.00994 | 0.05191 | 0.00728 | ||||
| 0.2133 | 0.00319 | 0.22129 | 0.13846 | 0.17736 | 0.00461 | 0.26034 | 0.15613 | |||||
| 30 | I | 1.49569 | 0.01219 | 0.05919 | 0.00766 | 1.49418 | 0.01038 | 0.05378 | 0.00773 | |||
| 30 | 0.21293 | 0.00313 | 0.22087 | 0.14003 | 0.16353 | 0.00509 | 0.27838 | 0.16608 | ||||
| 30 | II | 1.49822 | 0.01053 | 0.05469 | 0.00672 | 1.4964 | 0.00948 | 0.05092 | 0.00708 | |||
| 0.21248 | 0.00290 | 0.21068 | 0.13269 | 0.16804 | 0.00467 | 0.2659 | 0.15841 | |||||
| III | 1.49773 | 0.01023 | 0.05395 | 0.00649 | 1.50444 | 0.00910 | 0.05000 | 0.00671 | ||||
| 0.21282 | 0.00275 | 0.20591 | 0.12993 | 0.17605 | 0.00432 | 0.24853 | 0.14926 | |||||
| 40 |
| 1.49504 | 0.01006 | 0.05334 | 0.00631 | 1.49543 | 0.00879 | 0.04926 | 0.00665 | |||
| 40 | 0.21165 | 0.00255 | 0.19737 | 0.12535 | 0.16808 | 0.00452 | 0.25882 | 0.15404 | ||||
| 40 | ||||||||||||
LSEs and WLEs of and with their MSEs, RABs, AMSE and ARAB based on 5000 simulations. Population parameter values are and .
|
|
| LSE | WLSE | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| ⋮ | ⋮ |
| MSE( | RAB( | AMSE |
| MSE( | RAB( | AMSE | |||
|
|
|
|
| CS |
| MSE( | RAB( | ARAB |
| MSE( | RAB( | ARAB |
| 60 | 2 | 30 | 15 | I | 1.53847 | 0.06934 | 0.13439 | 0.04335 | 1.53427 | 0.06331 | 0.12874 | 0.03884 |
| 30 | 15 | 0.21641 | 0.01736 | 0.50731 | 0.32085 | 0.21840 | 0.01438 | 0.45715 | 0.29294 | |||
| II | 1.51732 | 0.05361 | 0.12044 | 0.03249 | 1.52090 | 0.04666 | 0.11150 | 0.02780 | ||||
| 0.20097 | 0.01137 | 0.41966 | 0.27005 | 0.20462 | 0.00895 | 0.36927 | 0.24038 | |||||
| III | 1.51425 | 0.0442 | 0.10963 | 0.02708 | 1.50998 | 0.04372 | 0.10925 | 0.02647 | ||||
| 0.20677 | 0.00995 | 0.3902 | 0.24992 | 0.20583 | 0.00921 | 0.37535 | 0.24230 | |||||
| 22 | I | 1.51872 | 0.04514 | 0.11151 | 0.02837 | 1.5190 | 0.04271 | 0.10857 | 0.02636 | |||
| 22 | 0.20633 | 0.01159 | 0.42440 | 0.26795 | 0.2079 | 0.01000 | 0.39299 | 0.25078 | ||||
| II | 1.51972 | 0.04161 | 0.10676 | 0.02550 | 1.52121 | 0.04005 | 0.10449 | 0.02426 | ||||
| 0.20480 | 0.00940 | 0.38083 | 0.24380 | 0.20696 | 0.00848 | 0.35906 | 0.23178 | |||||
| III | 1.50950 | 0.03620 | 0.09975 | 0.02273 | 1.50629 | 0.03527 | 0.09861 | 0.02178 | ||||
| 0.20400 | 0.00926 | 0.37892 | 0.23933 | 0.20386 | 0.00829 | 0.35898 | 0.22880 | |||||
| 30 |
| 1.50890 | 0.03486 | 0.09826 | 0.02191 | 1.51050 | 0.03348 | 0.09626 | 0.02068 | |||
| 30 | 0.20234 | 0.00896 | 0.37656 | 0.23741 | 0.20341 | 0.00788 | 0.35227 | 0.22426 | ||||
| 3 | 20 | 10 | I | 1.52104 | 0.04246 | 0.10806 | 0.02890 | 1.50653 | 0.03738 | 0.10193 | 0.02512 | |
| 20 | 10 | 0.20537 | 0.01533 | 0.47209 | 0.29008 | 0.20908 | 0.01286 | 0.42851 | 0.26522 | |||
| 20 | 10 | II | 1.51030 | 0.03455 | 0.09766 | 0.02251 | 1.49004 | 0.02921 | 0.09036 | 0.01872 | ||
| 0.19596 | 0.01046 | 0.39092 | 0.24429 | 0.19404 | 0.00822 | 0.34719 | 0.21878 | |||||
| III | 1.48314 | 0.02389 | 0.08204 | 0.01606 | 1.47306 | 0.02442 | 0.08327 | 0.01615 | ||||
| 0.19524 | 0.00822 | 0.36154 | 0.22179 | 0.19357 | 0.00788 | 0.35240 | 0.21783 | |||||
| 15 | I | 1.50977 | 0.02822 | 0.08836 | 0.01917 | 1.50605 | 0.02678 | 0.08647 | 0.01791 | |||
| 15 | 0.19966 | 0.01012 | 0.39540 | 0.24188 | 0.20258 | 0.00904 | 0.37310 | 0.22979 | ||||
| 15 | II | 1.50582 | 0.02343 | 0.08074 | 0.01564 | 1.49757 | 0.02276 | 0.07976 | 0.01501 | |||
| 0.19376 | 0.00784 | 0.35263 | 0.21669 | 0.19517 | 0.00726 | 0.33572 | 0.20774 | |||||
| III | 1.49938 | 0.02156 | 0.07803 | 0.01460 | 1.49095 | 0.02106 | 0.07719 | 0.01403 | ||||
| 0.19593 | 0.00764 | 0.34721 | 0.21262 | 0.19556 | 0.00701 | 0.33306 | 0.20513 | |||||
| 20 |
| 1.50700 | 0.02206 | 0.07825 | 0.01481 | 1.50702 | 0.02142 | 0.07711 | 0.01415 | |||
| 20 | 0.19666 | 0.00756 | 0.34261 | 0.21043 | 0.19928 | 0.00687 | 0.32573 | 0.20142 | ||||
| 20 | ||||||||||||
| 120 | 2 | 60 | 30 | I | 1.51221 | 0.03432 | 0.09742 | 0.02172 | 1.51203 | 0.03227 | 0.09424 | 0.01989 |
| 60 | 30 | 0.20471 | 0.00912 | 0.37327 | 0.23535 | 0.20724 | 0.00751 | 0.33737 | 0.21581 | |||
| II | 1.50383 | 0.02803 | 0.08824 | 0.01702 | 1.50708 | 0.02329 | 0.08049 | 0.01389 | ||||
| 0.19879 | 0.00602 | 0.30803 | 0.19813 | 0.20184 | 0.00449 | 0.26468 | 0.17259 | |||||
| III | 1.50401 | 0.02067 | 0.07548 | 0.01277 | 1.50113 | 0.02053 | 0.07543 | 0.01249 | ||||
| 0.20108 | 0.00487 | 0.27445 | 0.17497 | 0.20094 | 0.00446 | 0.26372 | 0.16958 | |||||
| 45 | I | 1.50642 | 0.02376 | 0.08115 | 0.01496 | 1.50792 | 0.02239 | 0.07868 | 0.01380 | |||
| 45 | 0.20144 | 0.00617 | 0.30848 | 0.19481 | 0.20340 | 0.00522 | 0.28293 | 0.18080 | ||||
| II | 1.50260 | 0.01915 | 0.07324 | 0.01181 | 1.50436 | 0.01848 | 0.07197 | 0.01118 | ||||
| 0.19922 | 0.00447 | 0.26620 | 0.16972 | 0.20141 | 0.00389 | 0.24736 | 0.15967 | |||||
| III | 1.50569 | 0.01812 | 0.07102 | 0.01141 | 1.50349 | 0.01764 | 0.07005 | 0.01091 | ||||
| 0.20304 | 0.00469 | 0.27226 | 0.17164 | 0.20301 | 0.00417 | 0.25616 | 0.16310 | |||||
| 60 |
| 1.50372 | 0.01729 | 0.06921 | 0.01083 | 1.50533 | 0.01641 | 0.06756 | 0.01007 | |||
| 60 | 0.19946 | 0.00437 | 0.26068 | 0.16495 | 0.20098 | 0.00373 | 0.24079 | 0.15418 | ||||
| 3 | 40 | 20 | I | 1.50804 | 0.02143 | 0.07695 | 0.01448 | 1.50185 | 0.01968 | 0.07387 | 0.01306 | |
| 40 | 20 | 0.19946 | 0.00754 | 0.34122 | 0.20908 | 0.20384 | 0.00644 | 0.31336 | 0.19362 | |||
| 40 | 20 | II | 1.50454 | 0.01655 | 0.06833 | 0.01085 | 1.49144 | 0.01384 | 0.06264 | 0.00881 | ||
| 0.19540 | 0.00515 | 0.28233 | 0.17533 | 0.19518 | 0.00378 | 0.24437 | 0.15350 | |||||
| III | 1.49479 | 0.01226 | 0.05832 | 0.00818 | 1.48801 | 0.01245 | 0.05902 | 0.00814 | ||||
| 0.19821 | 0.00411 | 0.25513 | 0.15673 | 0.19759 | 0.00383 | 0.24634 | 0.15268 | |||||
| 30 | I | 1.50478 | 0.01463 | 0.06361 | 0.00989 | 1.50278 | 0.01389 | 0.06186 | 0.00919 | |||
| 30 | 0.19803 | 0.00516 | 0.28418 | 0.17390 | 0.20082 | 0.00449 | 0.26447 | 0.16316 | ||||
| 30 | II | 1.50127 | 0.012 | 0.05802 | 0.00791 | 1.49621 | 0.01153 | 0.05699 | 0.00746 | |||
| 0.19636 | 0.00382 | 0.24638 | 0.1522 | 0.19791 | 0.00339 | 0.2318 | 0.14439 | |||||
| III | 1.49731 | 0.01125 | 0.05630 | 0.00757 | 1.49163 | 0.01099 | 0.05566 | 0.00724 | ||||
| 0.19674 | 0.00388 | 0.24655 | 0.15142 | 0.19681 | 0.00348 | 0.23349 | 0.14457 | |||||
| 40 |
| 1.50099 | 0.01069 | 0.05489 | 0.00723 | 1.50081 | 0.01036 | 0.05405 | 0.00684 | |||
| 40 | 0.19907 | 0.00376 | 0.24161 | 0.14825 | 0.20116 | 0.00331 | 0.22620 | 0.14013 | ||||
| 40 | ||||||||||||
AILs and COVP (in %) of 95% CIs of and based on 5000 simulations. Population parameter values are and .
|
|
| NACI | LTCI | |||||||
|---|---|---|---|---|---|---|---|---|---|---|
| ⋮ | ⋮ | CI( | AIL( | COVP( | CI( | AIL( | COVP( | |||
|
|
|
|
| CS | CI( | AIL( | COVP( | CI( | AIL( | COVP( |
| 60 | 2 | 30 | 15 | I | (1.0616,1.9988) | 0.9372 | 95.38 | (1.1268,2.0788) | 0.9521 | 96.04 |
| 30 | 15 | (0.0512,0.4167) | 0.3655 | 96.50 | (0.1017,0.6088) | 0.5071 | 91.40 | |||
| II | (1.1249, 1.9470) | 0.8221 | 95.52 | (1.1754, 2.0074) | 0.8320 | 95.02 | ||||
| (0.0631, 0.3969) | 0.3337 | 94.92 | (0.1090, 0.5386) | 0.4296 | 90.70 | |||||
| III | (1.1427, 1.9144) | 0.7717 | 95.22 | (1.1876, 1.9676) | 0.7800 | 94.80 | ||||
| (0.0652, 0.3898) | 0.3246 | 95.12 | (0.1095, 0.5157) | 0.4062 | 90.88 | |||||
| 22 | I | (1.1251, 1.9179) | 0.7928 | 95.02 | (1.1726, 1.9745) | 0.8018 | 94.94 | |||
| 22 | (0.0627, 0.3879) | 0.3252 | 95.28 | (0.1076, 0.5202) | 0.4126 | 91.58 | ||||
| II | (1.1532, 1.8920) | 0.7389 | 95.26 | (1.1946, 1.9408) | 0.7462 | 95.30 | ||||
| (0.0699, 0.3803) | 0.3103 | 95.52 | (0.1119, 0.4848) | 0.3729 | 91.66 | |||||
| III | (1.1632, 1.8811) | 0.7179 | 94.82 | (1.2025, 1.9270) | 0.7246 | 95.04 | ||||
| (0.0697, 0.3757) | 0.3060 | 95.70 | (0.1111, 0.4778) | 0.3667 | 91.96 | |||||
| 30 |
| (1.1722, 1.8614) | 0.6892 | 94.42 | (1.2086, 1.9037) | 0.6952 | 94.28 | |||
| 30 | (0.0745, 0.3670) | 0.2925 | 94.64 | (0.1135, 0.4585) | 0.3450 | 91.52 | ||||
| 3 | 20 | 10 | I | (1.1476, 1.8597) | 0.7121 | 94.74 | (1.1867, 1.9055) | 0.7188 | 95.52 | |
| 20 | 10 | (0.0591, 0.3970) | 0.3379 | 95.76 | (0.1057, 0.5599) | 0.4542 | 91.40 | |||
| 20 | 10 | II | (1.1932, 1.8209) | 0.6277 | 94.96 | (1.2237, 1.8560) | 0.6322 | 95.34 | ||
| (0.0682, 0.3785) | 0.3103 | 95.04 | (0.1105, 0.4733) | 0.3628 | 91.18 | |||||
| III | (1.2102, 1.7977) | 0.5876 | 94.18 | (1.2371, 1.8284) | 0.5913 | 94.96 | ||||
| (0.0730, 0.3739) | 0.3009 | 94.94 | (0.1133, 0.4640) | 0.3507 | 90.60 | |||||
| 15 | I | (1.1930, 1.8046) | 0.6116 | 94.28 | (1.2222, 1.8381) | 0.6159 | 94.80 | |||
| 15 | (0.0708, 0.3710) | 0.3002 | 95.38 | (0.1112, 0.4604) | 0.3492 | 91.94 | ||||
| 15 | II | (1.2145, 1.7838) | 0.5693 | 94.06 | (1.2400, 1.8127) | 0.5727 | 94.46 | |||
| (0.0758, 0.3636) | 0.2878 | 95.32 | (0.1141, 0.4402) | 0.3261 | 92.26 | |||||
| III | (1.2197, 1.7756) | 0.5558 | 94.10 | (1.2440, 1.8030) | 0.5590 | 94.64 | ||||
| (0.0776, 0.3622) | 0.2846 | 95.30 | (0.1152, 0.4347) | 0.3195 | 91.70 | |||||
| 20 |
| (1.2241, 1.7692) | 0.5451 | 94.90 | (1.2475, 1.7957) | 0.5481 | 95.36 | |||
| 20 | (0.0815, 0.3552) | 0.2737 | 95.70 | (0.1170, 0.4196) | 0.3026 | 91.94 | ||||
| 20 | ||||||||||
| 120 | 2 | 60 | 30 | I | (1.1820, 1.8457) | 0.6637 | 95.70 | (1.2159, 1.8850) | 0.6690 | 95.52 |
| 60 | 30 | (0.0835, 0.3554) | 0.2719 | 95.88 | (0.1186, 0.4170) | 0.2984 | 93.08 | |||
| II | (1.2295, 1.8033) | 0.5738 | 95.78 | (1.2550, 1.8322) | 0.5773 | 95.58 | ||||
| (0.0966, 0.3373) | 0.2407 | 95.42 | (0.1253, 0.3826) | 0.2573 | 92.22 | |||||
| III | (1.2429, 1.7804) | 0.5376 | 95.22 | (1.2654, 1.8058) | 0.5404 | 94.98 | ||||
| (0.0992, 0.3329) | 0.2337 | 94.96 | (0.1266, 0.3752) | 0.2486 | 92.24 | |||||
| 45 | I | (1.2339, 1.7864) | 0.5525 | 95.06 | (1.2577, 1.8134) | 0.5556 | 95.12 | |||
| 45 | (0.0996, 0.3336) | 0.2340 | 95.24 | (0.1270, 0.3756) | 0.2486 | 92.10 | ||||
| II | (1.2534, 1.7669) | 0.5135 | 95.08 | (1.2741, 1.7901) | 0.5160 | 95.12 | ||||
| (0.1043, 0.3252) | 0.2209 | 95.26 | (0.1291, 0.3622) | 0.2331 | 92.88 | |||||
| III | (1.2584, 1.758) | 0.4996 | 94.96 | (1.2780, 1.7799) | 0.5019 | 94.86 | ||||
| (0.1055, 0.324) | 0.2185 | 95.40 | (0.1298, 0.3599) | 0.2301 | 92.46 | |||||
| 60 |
| (1.2638, 1.7462) | 0.4824 | 94.58 | (1.2822, 1.7667) | 0.4845 | 94.88 | |||
| 60 | (0.1079, 0.3162) | 0.2084 | 95.00 | (0.1304, 0.3488) | 0.2185 | 93.08 | ||||
| 3 | 40 | 20 | I | (1.2423, 1.7581) | 0.5158 | 94.32 | (1.2633, 1.7816) | 0.5184 | 94.52 | |
| 40 | 20 | (0.0909, 0.3413) | 0.2504 | 95.68 | (0.1218, 0.3919) | 0.2701 | 92.94 | |||
| 40 | 20 | II | (1.2782, 1.7168) | 0.4386 | 94.68 | (1.2935, 1.7337) | 0.4402 | 94.68 | ||
| (0.1028, 0.3246) | 0.2219 | 95.06 | (0.1279, 0.3621) | 0.2342 | 92.52 | |||||
| III | (1.2923, 1.7051) | 0.4129 | 94.62 | (1.3058, 1.7200) | 0.4142 | 94.48 | ||||
| (0.1060, 0.3208) | 0.2148 | 95.06 | (0.1297, 0.3556) | 0.2259 | 92.46 | |||||
| 30 | I | (1.2779, 1.7135) | 0.4356 | 94.72 | (1.2930, 1.7302) | 0.4371 | 95.20 | |||
| 30 | (0.1046, 0.3214) | 0.2168 | 95.46 | (0.1287, 0.3568) | 0.2281 | 93.14 | ||||
| 30 | II | (1.2969, 1.6995) | 0.4027 | 94.84 | (1.3098, 1.7137) | 0.4039 | 95.2 | |||
| (0.1101, 0.3149) | 0.2048 | 94.66 | (0.1319, 0.3462) | 0.2143 | 92.94 | |||||
| III | (1.3014, 1.6941) | 0.3927 | 95.04 | (1.3137, 1.7075) | 0.3938 | 95.50 | ||||
| (0.1116, 0.3141) | 0.2025 | 94.98 | (0.1329, 0.3443) | 0.2114 | 92.98 | |||||
| 40 |
| (1.3026, 1.6875) | 0.3849 | 94.46 | (1.3145, 1.7004) | 0.3860 | 94.64 | |||
| 40 | (0.1145, 0.3088) | 0.1943 | 94.90 | (0.1343, 0.3365) | 0.2022 | 93.50 | ||||
| 40 | ||||||||||
The competing continuous models of the KMILBE distribution with their pdfs and cdfs.
| Models | Abbreviation | CDF | |
|---|---|---|---|
| Inverse length biased exponential | ILBE |
|
|
| Sine inverse exponential | SIE |
|
|
| Sine inverse Rayleigh | SIR |
|
|
| Inverse Lindley | IL |
|
|
| Lindley | L |
|
|
| Inverse exponential | IE |
|
|
The goodness of fit tests for data set 1.
| Models | -LL | AIC | CAIC | BIC | HQIC | KS | PV | MLE and SE |
|---|---|---|---|---|---|---|---|---|
| KMILBE( | 357.423 | 716.845 | 716.956 | 716.425 | 717.428 | 0.1444 | 0.407 | 10,190 (1048.837) |
| ILBE( | 358.278 | 718.556 | 718.667 | 718.136 | 719.139 | 0.1715 | 0.213 | 8414 (965.099) |
| SIE( | 359.098 | 720.196 | 720.307 | 719.776 | 720.779 | 0.1848 | 0.1491 | 5602 (696.008) |
| SIR( | 362.625 | 727.251 | 727.362 | 726.831 | 727.834 | 0.2182 | 0.0536 | 4389 (270.107) |
| IE( | 367.001 | 736.002 | 736.336 | 735.582 | 736.585 | 0.3031 | 0.0019 | 4207 (682.428) |
| IL( | 367.001 | 736.002 | 736.336 | 735.582 | 736.585 | 0.3031 | 0.0019 | 4208 (682.428) |
The goodness of fit tests for data set 2.
| Models | -LL | AIC | CAIC | BIC | HQIC | KS | PV | MLE and SE |
|---|---|---|---|---|---|---|---|---|
| KMILBE( | −2.205 | −2.411 | −2.257 | −2.964 | −2.003 | 0.1375 | 0.665 | 0.562 (0.069) |
| SIR( | 10.921 | 23.842 | 23.996 | 23.289 | 24.249 | 0.30611 | 0.0105 | 0.237 (0.017) |
| IE( | 1.248 | 4.496 | 4.958 | 3.943 | 4.903 | 0.2279 | 0.1091 | 0.237 (0.045) |
| IL( | −1.167 | −0.334 | −0.181 | −0.887 | 0.073 | 0.1554 | 0.5084 | 0.406 (0.055) |
| L( | 0.294 | 2.588 | 2.742 | 2.742 | 2.996 | 0.18995 | 0.2645 | 3.27 (0.520) |
Figure 4The fitted cdf plots for the data set 1.
Figure 5The fitted cdf plots for data set 2.
Figure 6The fitted pdf plots for the data set 1.
Figure 7The fitted pdf plots for data set 2.
Figure 8The fitted sf plots for data set 1.
Figure 9The fitted sf plots for data set 2.
Figure 10The P-P plots of the competing continuous models for data set 1.
Figure 11The P-P plots of the competing continuous models for data set 2.