Shifted Gompertz distribution explained
The shifted Gompertz distribution is the distribution of the larger of two independent random variables one of which has an exponential distribution with parameter
and the other has a
Gumbel distribution with parameters
and
. In its original formulation the distribution was expressed referring to the Gompertz distribution instead of the Gumbel distribution but, since the Gompertz distribution is a reverted Gumbel distribution, the labelling can be considered as accurate. It has been used as a model of
adoption of innovations. It was proposed by Bemmaor
[1] (1994). Some of its statistical properties have been studied further by Jiménez and Jodrá
[2] (2009)and Jiménez Torres
[3] (2014).
It has been used to predict the growth and decline of social networks and on-line services and shown to be superior to the Bass model and Weibull distribution (Bauckhage and Kersting[4] 2014).
Specification
Probability density function
The probability density function of the shifted Gompertz distribution is:
f(x;b,η)=be-bx
\left[1+η\left(1-e-bx\right)\right]forx\geq0.
where
is a
scale parameter and
is a
shape parameter. In the context of diffusion of innovations,
can be interpreted as the overall appeal of the innovation and
is the propensity to adopt in the propensity-to-adopt paradigm. The larger
is, the stronger the appeal and the larger
is, the smaller the propensity to adopt.
The distribution can be reparametrized according to the external versus internal influence paradigm with
as the coefficient of external influence and
as the coefficient of internal influence. Hence:
f(x;p,q)=(p+q)e-(p
\left[1+ln(1+q/p)\left(1-e-(p\right)\right]forx\geq0,p,q\geq0.
}\left[1 + \ln(1 + q/p)\left(1 - e^{-(p + q)x}\right)\right] \textx \geq 0, p, q \geq 0. \,
When
, the shifted Gompertz distribution reduces to an exponential distribution. When
, the proportion of adopters is nil: the innovation is a complete failure. The shape parameter of the probability density function is equal to
. Similar to the Bass model, the hazard rate
is equal to
when
is equal to
; it approaches
as
gets close to
. See Bemmaor and Zheng
[5] for further analysis.
Cumulative distribution function
The cumulative distribution function of the shifted Gompertz distribution is:
F(x;b,η)=\left(1-e-bx
forx\geq0.
Equivalently,
F(x;p,q)=\left(1-e-(p
| -ln(1+q/p)e-(p+q)x |
\right)e | |
forx\geq0.
} \textx \geq 0. \,
Properties
The shifted Gompertz distribution is right-skewed for all values of
. It is more flexible than the
Gumbel distribution. The hazard rate is a concave function of
which increases from
to
: its curvature is all the steeper as
is large. In the context of the diffusion of innovations, the effect of word of mouth (i.e., the previous adopters) on the likelihood to adopt decreases as the proportion of adopters increases. (For comparison, in the Bass model, the effect remains the same over time). The parameter
captures the growth of the hazard rate when
varies from
to
.
Shapes
The shifted Gompertz density function can take on different shapes depending on the values of the shape parameter
:
the probability density function has its mode at 0.
the probability density function has its mode at
where
is the smallest root of
which is
z\star=[3+η-(η2+2η+5)1/2]/(2η).
Related distributions
When
varies according to a
gamma distribution with shape parameter
and scale parameter
(mean =
), the distribution of
is Gamma/Shifted Gompertz (G/SG). When
is equal to one, the G/SG reduces to the
Bass model (Bemmaor 1994). The three-parameter G/SG has been applied by Dover, Goldenberg and Shapira
[6] (2009) and Van den Bulte and Stremersch
[7] (2004) among others in the context of the diffusion of innovations. The model is discussed in Chandrasekaran and Tellis
[8] (2007).Similar to the shifted Gompertz distribution, the G/SG can either be represented according to the propensity-to-adopt paradigm or according to the innovation-imitation paradigm. In the latter case, it includes three parameters:
and
with
p=f(0;b,\beta,\alpha)=b/(1+\beta)\alpha
and
. The parameter
modifies the curvature of the hazard rate as expressed as a function of
: when
is less than 0.5, it decreases to a minimum prior to increasing at an increasing rate as
increases, it is convex when
is less than one and larger or equal to 0.5, linear when
is equal to one, and concave when
is larger than one. Here are some special cases of the G/SG distribution in the case of homogeneity (across the population) with respect to the likelihood to adopt at a given time:
= Exponential
= Left-skewed two-parameter distribution
= Bass model
= Shifted Gompertz
with:
F(x;p,q,\alpha=1/2)=\left(1-e-(p\right)/{(1+(q/p)(2+q/p)e-(p+q)x)1/2
} \textx \geq 0,p, q \geq 0. \,
One can compare the parameters
and
across the values of
as they capture the same notions. In all the cases, the hazard rate is either constant or a monotonically increasing function of
(positive word of mouth). As the diffusion curve is all the more skewed as
becomes large, we expect
to decrease as the level of right-skew increases.
See also
Notes and References
- Book: Bemmaor . Albert C. . 1994 . 201–223. Modeling the Diffusion of New Durable Goods: Word-of-Mouth Effect Versus Consumer Heterogeneity . G. Laurent, G.L. Lilien & B. Pras . Research Traditions in Marketing . Kluwer Academic Publishers . Boston. 978-0-7923-9388-7.
- Jiménez . Fernando . A Note on the Moments and Computer Generation of the Shifted Gompertz Distribution . Pedro . Jodrá . Communications in Statistics - Theory and Methods . 38 . 1 . 78–89 . 2009 . 10.1080/03610920802155502. 116954940 .
- Jiménez Torres . Fernando . Estimation of the Parameters of the Shifted Gompertz Distribution, Using Least Squares, Maximum Likelihood and Moments Methods . Journal of Computational and Applied Mathematics . 255 . 1 . 867–877 . 2014 . 10.1016/j.cam.2013.07.004. free .
- Bauckhage. Christian. Strong Regularities in Growth and Decline of Popularity of Social Media Services. Kristian. Kersting. 1406.6529. 2014. math-ph.
- Bemmaor . Albert C. . The Diffusion of Mobile Social Networking: Further Study . Li . Zheng . International Journal of Forecasting . 32 . 4 . 612–21 . 2018 . 10.1016/j.ijforecast.2018.04.006. 158385920 .
- Dover . Yaniv . Network Traces on Penetration: Uncovering Degree Distribution From Adoption Data . Jacob . Goldenberg . Daniel . Shapira . Marketing Science. 10.1287/mksc.1120.0711 . 31 . 4. 689–712. 2012 .
- Van den Bulte . Christophe . Social Contagion and Income Heterogeneity in New Product Diffusion: A Meta-Analytic Test . Stefan . Stremersch . Marketing Science . 23 . 4 . 530–544 . 2004 . 10.1287/mksc.1040.0054.
- Book: Chandrasekaran. Deepa . Tellis. Gerard J. . 2007 . 3. A Critical Review of Marketing Research on Diffusion of New Products . Naresh K. Malhotra . Review of Marketing Research . M.E. Sharpe . Armonk . 39–80 . 978-0-7656-1306-6.