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AN ALTERNATIVE REPARAMETRIZATION FOR THE WEIGHTED LINDLEY DISTRIBUTION

ABSTRACT

Recently,1212 GHITANY ME, ALQALLAF F, AL-MUTAIRI DK & HUSAIN HA. 2011. A two-parameter weighted Lindley distribution and its applications to survival data', Mathematics and Computers in Simulation, 81: 1190-1201. introduced a generalization of a one parameter Lindley distribution and named it as a weighted Lindley distribution. Considering this new introduced weighted Lindley distribution, we propose a reparametrization on the shape parameter leading it to be orthogonal to the other shape parameter. In this alternative parametrization, we get a direct interpretation for this transformed parameter which is the mean survival time. For illustrative purposes, the weighted Lindley distribution on the new parametrization is applied on two real data sets. The one parameter Lindley distribution and its generalized form are fitted for the considered data sets.

Keywords:
generalized Lindley distribution; Lindley distribution; orthogonal parameters; survival analysis; weighted Lindley distribution

1 INTRODUCTION

A non negative random variable T follows the two-parameter weighted Lindley distribution,1212 GHITANY ME, ALQALLAF F, AL-MUTAIRI DK & HUSAIN HA. 2011. A two-parameter weighted Lindley distribution and its applications to survival data', Mathematics and Computers in Simulation, 81: 1190-1201., with shape parameters μ > 0 and β > 0 if its probability density function is given by:

(1)

where t>0 and Γ = (β) = ∫0 t β - 1 e - tdt is the gamma function. From (1), the corresponding survival and hazard functions, are given, respectively, by:

(2)

and

(3)

where Γ(a, b), a > 0 and b ≥ 0, is the upper incomplete gamma function (see,2929 OLVER FWJ, LOZIER DW, BOISVERT RF & CLARK CW. (eds.) 2010. NIST Handbook of mathematical functions, U.S. Department of Commerce National Institute of Standards and Technology, Washington, DC.), defined as ∫0 t β - 1 e - tdt.

In (1), taking the shape parameter β = 1 we have the one parameter Lindley distribution as a special case. The one parameter Lindley distribution was introduced by Lindley (see, Lindley, 195821 LINDLEY DV. 1958. Fiducial distributions and Bayes' theorem. Journal of the Royal Statistical Society. Series B. Methodological, 20: 102-107. and 196520 LINDLEY D. 1965. Introduction to Probability and Statistics from a Bayesian Viewpoint, Part II: Inference. Cambridge University Press, New York.) as a new distribution useful to analyze lifetime data, especially in applications modeling stress-strength reliability.1313 GHITANY ME, ATIEH B & NADARAJAH S. 2008. Lindley distribution and its application. Mathematics and Computers in Simulation, 78(4): 493-506. studied the properties of the one parameter Lindleydistribution under a careful mathematical approach. These authors also showed, in a numerical example, that the Lindley distribution usually gives better fit for the data when compared to the standard Exponential distribution. A generalized Lindley distribution, which includes as special cases the Exponential and Gamma distributions was introduced by3636 ZAKERZADEH H & DOLATI A. 2009. Generalized Lindley distribution. Journal of Mathematical Extension, 3(4): 13-25.. (Ghitany and Al-Mutari, 200811 GHITANY ME & AL-MUTARI DK. 2008. Size-biased Poisson-Lindley distribution and its application. METRON - International Journal of Statistics, 66(3): 299-311.) considered a size-biased Poisson-Lindley distribution and3131 SANKARAN M. 1970. The discrete Poisson-Lindley distribution. Biometrics, 26: 145-149. introduced the Poisson-Lindley distribution to model count data. Some properties of the Poisson-Lindley distribution, its derived distributions and some mixtures of this distribution were studied by55 BORAH M & BEGUM RA. 2002. Some properties of Poisson-Lindley and its derived distributions. Journal of the Indian Statistical Association, 40(1): 13-25.), (66 BORAH M & DEKA NATH A. 2001. Poisson-Lindley and some of its mixture distributions. Pure and Applied Mathematika Sciences, 53(1-2): 1-8.), (2424 MAHMOUDI E & ZAKERZADEH H. 2010. Generalized Poisson Lindley distribution. Communications in Statistics Theory and Methods, 39: 1785-1798.. A zero-truncated Poisson-Lindley was considered in1010 GHITANY ME, AL-MUTAIRI DK & NADARAJAH S. 2008. Zero-truncated Poisson-Lindley distribution and its application. Mathematics and Computers in Simulation, 79(3): 279-287.. A study on the inflated Poisson-Lindley distribution was presented in77 BORAH M & DEKA NATH A. 2001. A study on the inflated Poisson Lindley distribution. Journal of the Indian Society of Agricultural Statistics, 54(3): 317-323. and the Negative Binomial-Lindley distribution was introduced in3737 ZAMANI H & ISMAIL N. 2010. Negative Binomial-Lindley distribution and its application. Journal of Mathematics and Statistics, 6(1): 4-9.. The one parameter Lindley distribution in the competing risks scenario wasconsidered in2626 MAZUCHELI J & ACHCAR JA. 2011. The Lindley Distribution Applied to Competing Risks Lifetime Data. Computer Methods and Programs in Biomedicine, 104(2): 188-192..

Since the standard one parameter Lindley distribution does not provide enough flexibility to analyze different types of lifetime data, the two-parameter weighted Lindley distribution could be a good alternative in the analysis of lifetime data. A nice feature of the two-parameter weighted Lindley distribution is that its hazard function has a bathtub form for 0 < β < 1 and it is increasing for β ≥ 1, for all μ > 0.

It is important to point out, that in the last years, several distributions have been introduced in the literature to model bathtub hazard functions but in general these distributions have three or more parameters usually depending on numerical methods to find the maximum likelihood estimates which could be, in general, not very accurate. In this case good reparametrizations with less parameters could be very useful in applications. A comprehensive review of the existing know distributions that exhibit bathtub shape is provided in3030 RAJARSHI S & RAJARSHI MB. 1988. Bathtub distributions: A review. Communications in Statistics. Theory and Methods, 17: 2597-2621.), (1717 LAI CD, XIE M & MURTHY DNP. 2001. Bathtub-shaped failure rate life distributions. In:'Advances in reliability', Vol. 20 of Handbook of Statistics. North-Holland, Amsterdam, pp. 69-104.), (33 BEBBINGTON M, LAI C & ZITIKIS R. 2007. Bathtub-type curves in reliability and beyond. Australian & New Zealand Journal of Statistics, 49(3): 251-265.), (2828 NADARAJAH S. 2008. Bathtub-shaped failure rate functions. Quality & Quantity, 43(5): 855-863.. In addition to the weighted Lindley distribution, that can be used to model bathtub-shaped failure rate, we also could consider as alternatives, four other two-parameter distributions introduced in the literature1818 LAN Y & LEEMIS LM. 2008. The logistic-exponential survival distribution. Naval Res. Logist., 55(3): 252-264.), (88 CHEN Z. 2000. A new two-parameter lifetime distribution with bathtub shape or increasing failure rate function. Statistics & Probability Letters, 49: 155-161.), (1515 HAUPT E & SCHÄBE H. 1992. A new model for a lifetime distribution with bathtub shaped failure rate. Microelectronics Reliability, 32(5): 33-639.), (3535 SMITH RM & BAIN LJ. 1975. An Exponential Power Life-Test Distribution. Communications in Statistics, 4(5): 469-481. with this behavior.

The main goal of this paper is to propose an alternative parametrization for the one shape parameter of the weighted Lindley distribution. In the proposed parametrization, we get the new parameter orthogonal to the other shape parameter where this new reparametrized form of the parameter gives the mean survival time. The obtained orthogonality of the reparametrized form of the parameter is related to the observed Fisher information22 BARNDORFF-NIELSEN OE & COX DR. 1994. Inference and asymptotics, Vol. 52 of Monographs on Statistics and Applied Probability, Chapman & Hall, London.. Orthogonal parameters have many advantages in the inference results as, for example, for large sample sizes we have independence among the maximum likelihood of the orthogonal parameters, since the Fisher information matrix is diagonal. Other advantage of orthogonal parameters is related to the conditional likelihood approach (for further details see, Cox & Reid, 19879 COX DR & REID N. 1987. Parameter orthogonality and approximate conditional inference. Journal of the Royal Statistical Society. Series B, 49(1): 1-39. With a discussion.; Lancaster, 200219 LANCASTER T. 2002. Orthogonal parameters and panel data. Review of Economic Studies, 69(3): 647-666.; Louzada-Neto & Pardo-Fernandez, 200123 LOUZADA-NETO F & PARDO-FERNANDEZ. 2001. The effect of reparametrization on the accuracy of inferences for accelerated lifetime tests. Journal of Applied Statistics, 28: 703-711.; Louzada & Cavali, 201421 LINDLEY DV. 1958. Fiducial distributions and Bayes' theorem. Journal of the Royal Statistical Society. Series B. Methodological, 20: 102-107.).

The paper is organized as follows. In Section 2 the likelihood function for the two-parameter weighted Lindley distribution is formulated where we also present the proposed orthogonal reparametrization. Two examples considering real data sets are provided in Section 3 where its observed that the weighted Lindley distribution gives better fit for the data when compared to the one-parameter Lindley distribution and the generalized Lindley distribution. Some conclusions are presented in Section 4.

2 THE LIKELIHOOD FUNCTION

Let t = (t 1, ..., tn ) be a realization of the random sample T = (T 1, ..., Tn ), where T 1, ..., Tn are i.i.d. (identically independent distribution) random variables according to a two-parameter Lindley distribution, with shape parameters μ > 0 and β > 0. From (1) the likelihood function can be written as:

(4)

where T 0 = ti and Γ = (β) = ∫0∞yβ - 1e-ydy is the gamma function. From (4), the log-likelihood function for μ and β, l(μ, β|t), is given by:

(5)

where T1 = log(1 + ti).log(ti) and T2 =

Differentiating (5) with respect to μ and β and setting the results equal to zero we have:

(6)

(7)

where ψ(β) = 6) and (7) in μ and β, respectively., for μ and β, respectively, are obtained by solving equations (logΓ(β) is the digamma function. The maximum likelihood estimates, and

From (6), the maximum likelihood estimate for μ is obtained as a function of β, (β), given by:

(8)

In this way, replace μ in (7) by 8), which leads to an equation with only one variable β. After choose an initial value for β, use standard Newton-Raphson algorithm to find the maximum likelihood estimator for β. With the obtained maximum likelihood estimator for β get the maximum likelihood estimator for μ using equation (8).(β) given by (

Based on a single observation, the observed information matrix, , is given by:

(9)

where ψ'(β) = logΓ(β), and the terms in the (2 × 2) observed Fisher information matrix are obtained from the second derivatives given by,

and

The maximum likelihood estimates for μ and β have asymptotic bivariate normal distribution with mean (μ, β) and variance-covariance matrix given by the inverse of the Fisher Information matrix (9) locally at the maximum likelihood estimates . Since the data is independent, the information matrix is equal to the expected information matrix. and

In this paper we propose to reparametrize the two-parameter weighted Lindley distribution such that (μ, β) is transformed to (θ, β), where:

(10)

where θ > 0 is the mean of the weighted Lindley distribution with parameters μ and β and

Using the construction method of orthogonality parameters, proposed in(99 COX DR & REID N. 1987. Parameter orthogonality and approximate conditional inference. Journal of the Royal Statistical Society. Series B, 49(1): 1-39. With a discussion.), and from (9) we observe that μ is obtained as solution of the following orthogonality differential equation:

(11)

In this new parametrization we have that the maximum likelihood estimate for θ is given by n -1ti and Coυ(99 COX DR & REID N. 1987. Parameter orthogonality and approximate conditional inference. Journal of the Royal Statistical Society. Series B, 49(1): 1-39. With a discussion.. is the mean time to failure. Further orthogonality consequences are pointed out in, = are asymptotically independent. The orthogonality simplify the parameters estimation process and its interpretation. For the weighted Lindley distribution the parameter interpretation in the orthogonal parametrization is obvious since and ) = 0. The orthogonality between θ and β implies that the information matrix is asymptotically diagonal which implies that the the maximum likelihood estimates

3 APPLICATIONS

In this section we fit the two-parameter weighted Lindley distribution (WL) to two real data sets. For comparative purposes we also have considered two alternative models: (L): the one parameter Lindley distribution, f(t|μ) = 3636 ZAKERZADEH H & DOLATI A. 2009. Generalized Lindley distribution. Journal of Mathematical Extension, 3(4): 13-25.).(1 + t)e-μt, and (GL): the generalized Lindley distribution f(t|μ, β, γ) = (β + γt)tβ - 1e-μt,(

The first data set was reported by(44 BJERKEDAL T. 1960. Acquisition of resistance in guinea pigs infected with different doses of virulent tubercle bacilii. Amer. J. Hyg., 72: 130-148.), and employed by(1414 GUPTA RC, KANNAN N & RAYCHAUDHURI A. 1997. Analysis of Lognormal survival data. Mathematical Biosciences, 139: 103-105.) among others, represents the survival times (in days) of 72 guinea pigs infected with virulent tubercle bacilli, regimen 4.3. The regimen number is the common log of the number of bacillary units in 0.5 ml of challenge solution. The second data set was extracted from(3333 SCHAFFT HA, STATON TC, MANDEL J & SHOTT JD. 1987. Reproducibility of electromigration measurements. IEEE Transactions on Electronic Device, 34(3): 673-681.), see also(2525 MARTÍN J & PÉREZ CJ. 2009. Bayesian analysis of a generalized lognormal distribution. Computational Statistics & Data Analysis, 53: 1377-1387.), representing hours to failure of 59 test conductors of 400-micrometer length. All specimens ran to failure at a certain high temperature and current density. The 59 specimens were all tested under the same temperature and current density.

Table 1 list for the two data sets and models L, WL and GL the maximum likelihood estimates and their standard errors. For comparative purposes the estimates are also presented in the original parameterization and were obtained using SAS/NLMIXED procedure,(3232 SAS. 2010. The NLMIXED Procedure, SAS/STAT(r) User's Guide, Version 9.22, Cary, NC: SAS Institute Inc.), by applying the Newton-Raphson algorithm. For the WL model, in the orthogonal parameterization, we have = 6.98 (data set 2). The standard errors are given, respectively, by 11.86 and 0.21. = = 176.82 (data set 1) and =

Table 1
Maximum likelihood (standard error) estimates for Lindley (L), weighted Lindley (WL) and generalized Lindley (GL) distribution.

In Table 2 are listed standard model selection measures: -2×log-likelihood, AIC (Akaike's Information Criterion,11 AKAIKE H. 1983. Information measures and model selection. In: 'Proceedings of the 44th session of the International Statistical Institute, Vol. 1 (Madrid, 1983)', Vol. 50, pp. 277-290. With a discussion in Vol. 3, pp. 209-219.) and BIC (Schwarz's Bayesian Information Criterion,3434 SCHWARZ GE. 1978. Estimating the dimension of a model. Annals of Statistics, 6(2): 461-464.). From the values of these statistics we conclude that the two parameter Lindley distribution provides a better fit for the data sets when compared to the two alternative models. For the WL model the obtained estimates for θ are respectively given by: 176.82 (data set 1) and 6.98 (data set 2). The standard errors are given by, 11.86 and 0.21, respectively.

Table 2
Model selection measures.

For illustrative purposes, we present in Figure 1 the 50%, 90% and 95% likelihood contour plots in the original and the proposed orthogonal parametrization. In contrast to panels (b, data set 1) and (d, data set 2), the orientation of the contours in panels (a, data set 1) and (c, data set 2) revels a high positive correlation between b) and (d) that the axes of the elliptical contours are parallel to the coordinate axes, and for this reason we have an indication that the correlation is equal to zero. Naturally, this is expected since θ and β are estimated independently. These contours were built using the procedure described in1616 KALBFLEISCH JG. 1985. Probability and statistical inference. Vol. 2, Springer Texts in Statistics, second edn, Springer-Verlag, New York. and also presented in2727 MEEKER WQ & ESCOBAR LA. 1998. Statistical Methods for Reliability Data. John Wiley & Sons, New York.. and . We observe in panels (

Figure 1
(a, c): Contour plot for the joint relative likelihood function of β and μ. (b, d): Contour plot for the joint relative likelihood function of β and θ.

In Table 3 we present, for both data sets, the corresponding p-values to Kolmogorov-Smirnov (K-S) and Anderson-Darling (A-D) goodness-of-fit statistics. From these results, it is clear that the WL distribution provides a good fit to the given data sets. We also consider the Log-Normal distribution (LN) in the data analysis, since this distribution was considered by1414 GUPTA RC, KANNAN N & RAYCHAUDHURI A. 1997. Analysis of Lognormal survival data. Mathematical Biosciences, 139: 103-105. (data set 1) and by2525 MARTÍN J & PÉREZ CJ. 2009. Bayesian analysis of a generalized lognormal distribution. Computational Statistics & Data Analysis, 53: 1377-1387. (data-set 2).

Table 3
Kolmogorov-Smirnov and Anderson-Darling goodness-of-fit statistics.

4 CONCLUDING REMARKS

In this paper we introduced an alternative parametrization for the shape parameter of the weighted Lindley distribution (WL) introduced by1212 GHITANY ME, ALQALLAF F, AL-MUTAIRI DK & HUSAIN HA. 2011. A two-parameter weighted Lindley distribution and its applications to survival data', Mathematics and Computers in Simulation, 81: 1190-1201., which generalizes the one parameter Lindley distribution. In the proposed parametrization, the new parameter have a direct interpretation and it is orthogonal to the shape parameter.

In the last years, the Lindley distribution have been considered in several applications as an alternative lifetime model and its generalization called weighted Lindley distribution considering the orthogonal parametrization could be another good alternative distribution to modeling lifetime data. We fitted the WL distribution to two real data sets and compared the obtained results with those of L and GL distributions, which showed the great potentialities of the WL distribution.

REFERENCES

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  • 2
    BARNDORFF-NIELSEN OE & COX DR. 1994. Inference and asymptotics, Vol. 52 of Monographs on Statistics and Applied Probability, Chapman & Hall, London.
  • 3
    BEBBINGTON M, LAI C & ZITIKIS R. 2007. Bathtub-type curves in reliability and beyond. Australian & New Zealand Journal of Statistics, 49(3): 251-265.
  • 4
    BJERKEDAL T. 1960. Acquisition of resistance in guinea pigs infected with different doses of virulent tubercle bacilii. Amer. J. Hyg., 72: 130-148.
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    BORAH M & BEGUM RA. 2002. Some properties of Poisson-Lindley and its derived distributions. Journal of the Indian Statistical Association, 40(1): 13-25.
  • 6
    BORAH M & DEKA NATH A. 2001. Poisson-Lindley and some of its mixture distributions. Pure and Applied Mathematika Sciences, 53(1-2): 1-8.
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    BORAH M & DEKA NATH A. 2001. A study on the inflated Poisson Lindley distribution. Journal of the Indian Society of Agricultural Statistics, 54(3): 317-323.
  • 8
    CHEN Z. 2000. A new two-parameter lifetime distribution with bathtub shape or increasing failure rate function. Statistics & Probability Letters, 49: 155-161.
  • 9
    COX DR & REID N. 1987. Parameter orthogonality and approximate conditional inference. Journal of the Royal Statistical Society. Series B, 49(1): 1-39. With a discussion.
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    GHITANY ME, AL-MUTAIRI DK & NADARAJAH S. 2008. Zero-truncated Poisson-Lindley distribution and its application. Mathematics and Computers in Simulation, 79(3): 279-287.
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    GHITANY ME & AL-MUTARI DK. 2008. Size-biased Poisson-Lindley distribution and its application. METRON - International Journal of Statistics, 66(3): 299-311.
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  • 16
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  • 18
    LAN Y & LEEMIS LM. 2008. The logistic-exponential survival distribution. Naval Res. Logist., 55(3): 252-264.
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    MAHMOUDI E & ZAKERZADEH H. 2010. Generalized Poisson Lindley distribution. Communications in Statistics Theory and Methods, 39: 1785-1798.
  • 25
    MARTÍN J & PÉREZ CJ. 2009. Bayesian analysis of a generalized lognormal distribution. Computational Statistics & Data Analysis, 53: 1377-1387.
  • 26
    MAZUCHELI J & ACHCAR JA. 2011. The Lindley Distribution Applied to Competing Risks Lifetime Data. Computer Methods and Programs in Biomedicine, 104(2): 188-192.
  • 27
    MEEKER WQ & ESCOBAR LA. 1998. Statistical Methods for Reliability Data. John Wiley & Sons, New York.
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    NADARAJAH S. 2008. Bathtub-shaped failure rate functions. Quality & Quantity, 43(5): 855-863.
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    RAJARSHI S & RAJARSHI MB. 1988. Bathtub distributions: A review. Communications in Statistics. Theory and Methods, 17: 2597-2621.
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    SANKARAN M. 1970. The discrete Poisson-Lindley distribution. Biometrics, 26: 145-149.
  • 32
    SAS. 2010. The NLMIXED Procedure, SAS/STAT(r) User's Guide, Version 9.22, Cary, NC: SAS Institute Inc.
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    SCHAFFT HA, STATON TC, MANDEL J & SHOTT JD. 1987. Reproducibility of electromigration measurements. IEEE Transactions on Electronic Device, 34(3): 673-681.
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    SCHWARZ GE. 1978. Estimating the dimension of a model. Annals of Statistics, 6(2): 461-464.
  • 35
    SMITH RM & BAIN LJ. 1975. An Exponential Power Life-Test Distribution. Communications in Statistics, 4(5): 469-481.
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    ZAKERZADEH H & DOLATI A. 2009. Generalized Lindley distribution. Journal of Mathematical Extension, 3(4): 13-25.
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    ZAMANI H & ISMAIL N. 2010. Negative Binomial-Lindley distribution and its application. Journal of Mathematics and Statistics, 6(1): 4-9.

Publication Dates

  • Publication in this collection
    May-Aug 2016

History

  • Received
    19 Feb 2015
  • Accepted
    04 June 2016
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