ggomnbd_CET {CLVTools} | R Documentation |
GGompertz/NBD: Conditional Expected Transactions
Description
Calculates the expected number of transactions in a given time period based on a customer's past transaction behavior and the GGompertz/NBD model parameters.
ggomnbd_nocov_CET
Conditional Expected Transactions without covariates
ggomnbd_staticcov_CET
Conditional Expected Transactions with static covariates
Usage
ggomnbd_nocov_CET(r, alpha_0, b, s, beta_0, dPeriods, vX, vT_x, vT_cal)
ggomnbd_staticcov_CET(
r,
alpha_0,
b,
s,
beta_0,
dPeriods,
vX,
vT_x,
vT_cal,
vCovParams_trans,
vCovParams_life,
mCov_life,
mCov_trans
)
Arguments
r |
shape parameter of the Gamma distribution of the purchase process. The smaller r, the stronger the heterogeneity of the purchase process. |
alpha_0 |
scale parameter of the Gamma distribution of the purchase process. |
b |
scale parameter of the Gompertz distribution (constant across customers) |
s |
shape parameter of the Gamma distribution for the lifetime process The smaller s, the stronger the heterogeneity of customer lifetimes. |
beta_0 |
scale parameter for the Gamma distribution for the lifetime process |
dPeriods |
number of periods to predict |
vX |
Frequency vector of length n counting the numbers of purchases. |
vT_x |
Recency vector of length n. |
vT_cal |
Vector of length n indicating the total number of periods of observation. |
vCovParams_trans |
Vector of estimated parameters for the transaction covariates. |
vCovParams_life |
Vector of estimated parameters for the lifetime covariates. |
mCov_life |
Matrix containing the covariates data affecting the lifetime process. One column for each covariate. |
mCov_trans |
Matrix containing the covariates data affecting the transaction process. One column for each covariate. |
Details
mCov_trans
is a matrix containing the covariates data of
the time-invariant covariates that affect the transaction process.
Each column represents a different covariate. For every column a gamma parameter
needs to added to vCovParams_trans
at the respective position.
mCov_life
is a matrix containing the covariates data of
the time-invariant covariates that affect the lifetime process.
Each column represents a different covariate. For every column a gamma parameter
needs to added to vCovParams_life
at the respective position.
Value
Returns a vector containing the conditional expected transactions for the existing customers in the GGompertz/NBD model.
References
Bemmaor AC, Glady N (2012). “Modeling Purchasing Behavior with Sudden “Death”: A Flexible Customer Lifetime Model” Management Science, 58(5), 1012-1021.