BdW: Beta discrete Weibull (BdW) Model for Projecting Customer...

Description Usage Arguments Value References Examples

Description

BdW is a beta discrete weibull model implemented based on Fader and Hardie probability based projection methedology. The survivor function for BdW is

Beta(a,b+t^c)/Beta(a,b)

Usage

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BdW(surv_value, h, lower = c(0.001, 0.001, 0.001), upper = c(10000,
  10000, 10000))

Arguments

surv_value

a numeric vector of historical customer retention percentage should start at 100 and non-starting values should be between 0 and less than 100

h

forecasting horizon

lower

lower limit used in R optim rotuine. Default is c(1e-3,1e-3).

upper

upper limit used in R optim rotuine. Default is c(10000,10000,10000).

Value

fitted:

Fitted values based on historical data

projected:

Projected h values based on historical data

max.likelihood:

Maximum Likelihood of Beta discrete Weibull

params - a, b and c:

Returns a and b paramters from maximum likelihood estimation for beta distribution and c

References

Fader P, Hardie B. How to project customer retention. Journal of Interactive Marketing. 2007;21(1):76-90.

Fader P, Hardie B, Liu Y, Davin J, Steenburgh T. "How to Project Customer Retention" Revisited: The Role of Duration Dependence. Journal of Interactive Marketing. 2018;43:1-16.

Examples

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surv_value <- c(100,86.9,74.3,65.3,59.3)
h <- 6
BdW(surv_value,h)

forecaster18/foretell documentation built on May 8, 2019, 7:27 a.m.