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<title>AN ALTERNATIVE GENERALISED WEIGHTED WEIBULL REGRESSION MODEL</title>
<link>http://hdl.handle.net/123456789/302</link>
<description/>
<pubDate>Sat, 04 Apr 2026 22:35:03 GMT</pubDate>
<dc:date>2026-04-04T22:35:03Z</dc:date>
<item>
<title>AN ALTERNATIVE GENERALISED WEIGHTED WEIBULL REGRESSION MODEL</title>
<link>http://hdl.handle.net/123456789/303</link>
<description>AN ALTERNATIVE GENERALISED WEIGHTED WEIBULL REGRESSION MODEL
BADMUS, NOFIU IDOWU
Classical Regression Model (CRM) such as Weibull regression is commonly used for estimating&#13;
relationship among variables. The problem with CRM is its dependence on the&#13;
assumptions of normality and homoscedasticity of the residual terms. However, the assumption&#13;
of normality is not valid for several real life events especially time-to-event phenomenon&#13;
where the data exhibit a high level of skewness. Previous research on CRM has generally&#13;
excluded non-normality of the residual terms. Therefore, this study was aimed at developing&#13;
an Alternative Generalised Weighted Weibull Regression Model (AGWWRM) for improved&#13;
inference when the residual terms are not normal.&#13;
The Weighted Weibull Distribution (WWD)&#13;
f(x) = (&#13;
+1)&#13;
&#13;
&#13;
 &#13;
 &#13;
 &#13;
  &#13;
x &#1048576;1 exp&#13;
 &#13;
&#1048576;x&#13;
 &#13;
    &#13;
1 &#1048576; exp&#13;
 &#13;
&#1048576;&#13;
&#13;
 &#13;
x&#13;
 &#13;
    &#13;
where &#13;
;   and   are: weighted,&#13;
scale and shape parameters. The WWD was rede ned by the introduction of two shape&#13;
parameters, a and b to accommodate skewness in the data; based on the beta link function:&#13;
g(x) = 1&#13;
B(a;b) [F(x)]a&#1048576;1[1&#1048576;F(x)](b&#1048576;1)f(x) where,   is the beta function and F(x) is the distribution&#13;
function of the WWD. To obtain a location-scale regression model that would link the&#13;
response variable yi(= XT&#13;
i   + zi and zi =&#13;
 &#13;
(yi&#1048576; )&#13;
 &#13;
 &#13;
is the error term, where    is the regression&#13;
model,   and   are the location and dispersion parameters for i = 1; 2;       ; n; to a vector&#13;
X of p explanatory variables. The transformations Y = log(T);   = 1&#13;
  and   = log( ) were&#13;
used. T is a random variable having beta Weighted Weibull (BWW) density function and Y&#13;
is a log-beta WW variable. The statistical properties namely: moments, moment generating&#13;
functions, skewness and kurtosis were determined for the Alternative Generalised Weighted&#13;
Weibull (AGWW) distribution. The performance of the AGWWRM was determined using&#13;
secondary data on time-to-completion of a Ph.D. programme using a sample of 187 Ph.D.&#13;
graduates from the University of Ibadan. The explanatory variables usedwere supervisor&#13;
(x1), employment (x2), marital status (x3), age (x4) and faculty (x5),whileybeing dependent&#13;
variable was time-to-completion. The AGWWRM was compared with six existing generi&#13;
alised WW regression models: log-beta Weibull, log-beta normal, log-Weibull, log-normal,&#13;
log-logistic and log-weighted. The Akaike Information Criterion (AIC) and Bayesian Information&#13;
Criterion (BIC) were used as the assessment criteria for AGWWRM.&#13;
The derived AGWW distribution was&#13;
g(z; a; b; &#13;
;  ;  ) = (&#13;
+1)&#13;
 &#13;
B(a;b) exp (&#1048576;exp(zi)) (1 &#1048576; exp(&#1048576;&#13;
 exp(zi))) [F(z)]a&#1048576;1[1&#1048576;F(z)]b&#1048576;1 where&#13;
F(z) = &#13;
+1&#13;
&#13;
&#13;
n&#13;
(1 &#1048576; exp(&#1048576;&#13;
 exp(zi))) &#1048576; 1&#13;
&#13;
+1 (1 &#1048576; exp(&#1048576;exp(1 + &#13;
)(zi)))&#13;
o&#13;
. The developed AGWWRM&#13;
was y =   &#13;
0+  x1+  &#13;
2x2+  &#13;
3x3+  &#13;
4x4+  &#13;
5x5+ zi where 0 &lt;  ;1. The parameters&#13;
of the regression model (  &#13;
0 ;   &#13;
1 ;   &#13;
2  &#13;
3 ;   &#13;
4 and   &#13;
5 ) = (2:550; 3:250; 1:250; 4:150; 1:310; 5:150).&#13;
The AIC and BIC for the AGWWRM were &#1048576;9112754:000 and &#1048576;9112751:000 while the AIC&#13;
for the six generalised WW regression models were &#1048576;474248:600 for log-beta Weibull,&#13;
&#1048576;3076234:000 for log-beta normal, &#1048576;487430:400 for log-Weibull, &#1048576;1541:182 for log-normal,&#13;
&#1048576;1102:662 for log-logistic and &#1048576;252807:000 for log-weighted, respectively. Also the corresponding&#13;
BIC were &#1048576;474249:500, &#1048576;3076205:000, &#1048576;487428:500, &#1048576;1518:564, &#1048576;1080:044 and&#13;
&#1048576;252804:800, respectively. The assessment criteria for the AGWWRM were consistently&#13;
lower than those from the existing generalised WW regression models indicating improved&#13;
inference.&#13;
The developed Alternative Generalised Weighted Weibull Regression model exhibited improved&#13;
inference when the residual terms are not normal.&#13;
Keywords: Beta link function, Log-beta distribution, Location-scale regression&#13;
model, Log-normal distribution.
</description>
<pubDate>Sun, 01 Jan 2017 00:00:00 GMT</pubDate>
<guid isPermaLink="false">http://hdl.handle.net/123456789/303</guid>
<dc:date>2017-01-01T00:00:00Z</dc:date>
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