1. Introduction
The Lindley distribution was introduced by Lindley [
1], and it has been widely used for modeling survival or reliability data. A treatment of the mathematical properties of this model can be seen in Ghitany et al. [
2]. Recall that a nonnegative random variable (rv)
T follows a Lindley distribution with shape parameter
,
, if its probability density function (pdf) is given by
On the other hand, Patil and Rao [
3] proposed weighted distributions. This is a well-known technique used to generate new models. The weighted distributions are used to describe skewed data and data coming from hidden truncated models. In this paper, we focused on the weighted version of the Lindley distribution proposed by Ghitany et al. [
4], which is of interest in survival analysis. A nonnegative rv follows a Weighted Lindley (WL) distribution with parameters
and
,
, if its pdf is given by
where
denotes the gamma function.
The aim of our paper was to introduce a new extension of the WL distribution by using the slash methodology, in such a way that the new model has a heavier right tail than the original WL one. To reach this end, the Slash-Weighted Lindley (SWL) distribution is defined as follows:
where
,
,
, and
are independent. (
1) is denoted as
.
We highlight that the slash methodology is appropriate to obtain more-flexible models in terms of kurtosis and skewness than the original distribution. Since the pioneering works by Rogers and Tukey [
5] and Mosteller and Tukey [
6], it has been applied to a number of symmetrical and skewed distributions. We can cite Gómez et al. [
7] for distributions with elliptical contours, Olmos et al. [
8] for the generalized half-normal distribution, Del Castillo [
9] for the sum of independent logistic distributions, Reyes et al. for the Birnbaum–Saunders distribution in [
10,
11] and for the normal distribution in [
12], Barranco-Chamorro et al. [
13] for the generalized Rayleigh distribution in Wang and Genton [
14] and in Arslan and Genc [
15], who proposed multivariate versions based on the normal multivariate distribution, to cite only a few.
On the other hand, generalizations of the Lindley and weighted Lindley distribution, along with practical applications, can be seen in Nadarajah et al. [
16], Gui [
17], Shanker et al. [
18,
19], Asgharzadeh et al. [
20], and Arslan et al. [
21], among others. Due to the interest in these models and since this issue has not yet been studied, we focused in this paper on the application of the slash methodology to the weighted Lindley model. It is also worth noting that our proposal is appropriate to deal with skewed positive data, quite common in medical research; see for instance, Liu et al. [
22] or Ren et al. [
23]. In this context, the slash-weighted Lindley distribution is an alternative to lifetime distributions, such as the Weibull distribution [
24] or the generalized Gamma distribution introduced by Stacy [
25]. This issue will be addressed in our applications.
The outline of this paper is as follows. In
Section 2, several expressions for the pdf of the SWL model are given. Next, its cumulative distribution function is obtained in terms of the generalized hypergeometric function and the incomplete gamma function. Moments are also obtained.
Section 3 is devoted to maximum likelihood estimation. A simulation study was carried out based on the definition of the SWL model and the representation of the WL model as a mixture proposed by Ghitany [
4]. In
Section 4, two real applications are given. The final conclusions are included in
Section 5.
2. Materials and Methods in the Slash-Weighted Lindley Distribution
In this section, the main results for the SWL model introduced in (
1) are given. Special functions are used in our results. Other applications of interest can be seen in Wani [
26] or Zayed [
27].
2.1. Probability Density Function and Properties
In Proposition 1, the pdf of the SWL distribution will be obtained by using the stochastic representation given in (
1). In this result, the confluent hypergeometric function,
, appears. It can be seen in Abramowitz and Stegun [
28] that this function has the following integral representation:
Moreover, under suitable conditions, we have
where
denotes the generalized hypergeometric function
with
, and the details can be seen in Luke [
29] or Zörnig [
30]. This result will be used to obtain the cdf of a SWL model.
Next, it is proven that the pdf of SWL can be expressed in terms of the confluent hypergeometric function, .
Proposition 1. Let with α, β, and . Then, the pdf of Z is given by where . Proof. From (
1), we can write
with
and
independent. By applying the Jacobian technique, the joint pdf of
with
is
Marginalizing with respect to
W, the pdf of
Z is
Finally, by integration by parts and applying (
2), (
4) is obtained. □
Next, several alternative expressions for the pdf of the SWL distribution are given. They will be useful for estimation purposes.
Proposition 2. Let . Then, the pdf of Z can be obtained:where , , , , and denotes the lower incomplete gamma function defined as , and . Proof. Similar to Proposition 1, by using the definition of the gamma incomplete function and integration by parts, the proposed result is obtained. □
Remark 1. The following notation will be used throughout this paper:
- 1.
An rv T follows a gamma distribution, , if its pdf is , α, , and .
- 2.
If the pdf of T is , then we may write .
Next, a hierarchical representation for the SWL model is given. Specifically, it is proven that, if the conditional distribution of Z given , , is the mixture of gamma distributions proposed in Proposition 3 and , then the marginal distribution of Z is an SWL.
Proposition 3. If with the pdf of a gamma distribution, , for , and , then .
Proof. Note that the marginal pdf of
Z is given by
By proceeding similarly to Proposition 1, the proposed result is obtained. □
Particular Case of Interest: The Slash Lindley Distribution
Note that, for
, the SWL model reduces to the Slash Lindley (SL) distribution introduced in [
17], that is SWL
SL
.
On the other hand, if , it will be proven in Proposition 6 that SWL converges to the WL model.
2.2. Cumulative Distribution Function
The following proposition gives the cumulative distribution function (cdf) of the SWL distribution.
Proposition 4. Let . Then, the cdf of Z is given bywhere with α, β, and . Proof. The cdf of
Z is given by
It can be seen in Luke [
29] that, using the expression of the pdf of
Z given in (
4) and applying (
3), the result proposed is obtained. □
Next, an expression for the cdf of the SWL distribution is given in terms of the incomplete gamma function.
Proposition 5. Let . Then, the cdf of Z is given bywhere with α, β, and . Proof. For
and
, the proposed result is obtained by applying integration by parts to
□
Next, we briefly illustrate that the right tail in the SWL is heavier than the one in the WL model.
Figure 1 compares the pdfs of the WL and SWL models with
.
Table 1 provides
for several values of
z.
Figure 1 and
Table 1 show that the right tail of the SWL is much heavier than the WL model for decreasing values of
q. We will go deeper into these appreciations.
2.3. Properties
Next, we study the convergence in law of an SWL model to a WL distribution. To emphasize the relevance of parameter q, in this section, we include it in the notation, i.e., .
Proposition 6. Let . If , then converges in law to an rv .
Proof. Let . Then, we can write with and .
Since
,
and
. By applying Chebyshev’s inequality to
, we have that, for all
,
If
, then the right-hand side of (
6) tends to zero, i.e.,
converges in probability to 0. Moreover, since
, then we have
By applying Slutsky’s lemma to
and since
, it follows that
That is, for increasing values of
q,
converges in law to a WL
distribution. □
Proposition 6 implies that, for large q, the pdf of an SWL distribution can be approached by the pdf of a WL distribution.
2.4. Moments
Proposition 7. Let . Then, for r a positive integer, exists, if and only if , and in this case, Proof. By using the stochastic representation given in (
1) and since
X and
Y are independent, we have
It can be seen in Ghitany et al. [
4] that
exists for
and is given by
As for
, we have that
exists if and only if
and
From (
8) and (
9), the proposed result follows. □
From Proposition 7, the next corollary follows.
Corollary 1. Let . Then:
- 1.
provided that .
- 2.
provided that .
- 3.
Let . Then, the skewness, , and kurtosis, , coefficients can be obtained by using
Figure 2 shows the plot of the skewness and kurtosis coefficients for the SWL model when
.
Corollary 2. From (7) and (9), the following relationships between the moments of and are obtained: - 1.
where and .
- 2.
where and denotes the falling factorial, . - 3.
where and .
The expressions given in Corollary 2 can be used to obtain the central moments of an SWL distribution from the ones in a WL model. They also show that, in general, the central moments of the SWL distribution,
, are greater than the ones in the WL model,
. Moreover, although, in general, the convergence in law does not imply the convergence of moments [
31], we have that, for SWL
, the moments converge to the moments of WL
when
.