pnbd.PlotTrackingCum: Pareto/NBD Tracking Cumulative Transactions Plot

Description Usage Arguments Details Value Examples

View source: R/pnbd.R

Description

Plots the actual and expected cumulative total repeat transactions by all customers for the calibration and holdout periods, and returns this comparison in a matrix.

Usage

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pnbd.PlotTrackingCum(
  params,
  T.cal,
  T.tot,
  actual.cu.tracking.data,
  n.periods.final = NA,
  xlab = "Week",
  ylab = "Cumulative Transactions",
  xticklab = NULL,
  title = "Tracking Cumulative Transactions"
)

Arguments

params

Pareto/NBD parameters - a vector with r, alpha, s, and beta, in that order. r and alpha are unobserved parameters for the NBD transaction process. s and beta are unobserved parameters for the Pareto (exponential gamma) dropout process.

T.cal

length of calibration period, or a vector of calibration period lengths.

T.tot

End of holdout period. Must be a single value, not a vector.

actual.cu.tracking.data

A vector containing the cumulative number of repeat transactions made by customers for each period in the total time period (both calibration and holdout periods). See details.

n.periods.final

Number of time periods in the calibration and holdout periods. See details.

xlab

Descriptive label for the x axis.

ylab

Descriptive label for the y axis.

xticklab

Vector containing a label for each tick mark on the x axis.

title

Title placed on the top-center of the plot.

Details

actual.cu.tracking.data does not have to be in the same unit of time as the T.cal data. T.tot will automatically be divided into periods to match the length of actual.cu.tracking.data. See pnbd.ExpectedCumulativeTransactions.

The holdout period should immediately follow the calibration period. This function assume that all customers' calibration periods end on the same date, rather than starting on the same date (thus customers' birth periods are determined using max(T.cal) - T.cal rather than assuming that it is 0).

Value

Matrix containing actual and expected cumulative repeat transactions.

Examples

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data(cdnowSummary)

cal.cbs <- cdnowSummary$cbs
# cal.cbs already has column names required by method

# Cumulative repeat transactions made by all customers across calibration
# and holdout periods
cu.tracking <- cdnowSummary$cu.tracking

# parameters estimated using pnbd.EstimateParameters
est.params <- cdnowSummary$est.params

# All parameters are in weeks; the calibration period lasted 39
# weeks and the holdout period another 39.
pnbd.PlotTrackingCum(params = est.params, 
                     T.cal = cal.cbs[,"T.cal"], 
                     T.tot = 78, 
                     actual.cu.tracking.data = cu.tracking)

BTYD documentation built on Nov. 18, 2021, 1:10 a.m.