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RM2 (version 0.0)

PD: Unconstrain the demand using the Projection-Detruncation algorithm

Description

PD unconstrains demand data in quantity-based revenue management.

Usage

PD(demand = demand, tau = 0.5, eps = 0.005)

Arguments

demand
demand vector with constrained and unconstrained entries. A 0 in the name of an entry means that the corresponding demand is unconstrained. Conversely, a 1 in the name of an entry suggests that the corresponding demand is constrained.
tau
fixed constant that reflects how aggresive the unconstrainig is. The default value is 0.5.
eps
small number used as the stopping criterion. The default value is 0.005.

Value

param
parameters of demand distribution
niter
number of iterations
demand
unconstrained demand vector
history
parameter convergence history

Details

PD unconstrains demand data in quantity-based revenue management. The observed demand entries, some of which are constrained because the product class was closed, are assumed to be realizations from an underlying normal distribution with mean $\mu$ and standard deviation $\sigma$. The objective is to find the parameters $\mu$ and $\sigma$ of this underlying demand distribution.

References

Talluri, K. T. and Van Ryzin, G. (2004) The Theory and Practice of Revenue Management. New York, NY: Springer Science + Business Media, Inc. (Pages 485--486).

Examples

Run this code
# SPECIFY THE SEED
set.seed(333)
# SPECIFY REAL PARAMETERS OF THE DEMAND DISTRIBUTION
rmean <- 20
rsd <- 4
nrn <- 20
# GENERATE REAL DEMAND
rdemand <- round(rnorm(nrn, rmean, rsd))
# GENERATE BOOKING LIMITS
bl <- round(rnorm(nrn, rmean, rsd))
# GENERATE OBSERVED DEMAND
demand <- rdemand * (rdemand <= bl) + bl * (rdemand > bl)
# IDENTIFIED PERIODS WITH CONSTRAINED DEMAND: 1 - CONSTRAINED DEMAND
names(demand) <- as.character(as.numeric(rdemand>bl))
demand
# UNTRUNCATE DEMAND
PD(demand)
PD(demand, tau=0.5, eps=0.005)
PD(demand, tau=0.5, eps=0.00005)
# MODIFY DEMAND VECTOR - NO CONSTRAINED INSTANCES ARE OBSERVED
names(demand) <- rep(0, length(demand))
# ATTEMPT TO UNTRUNCATE THE DEMAND
PD(demand, tau=0.5, eps=0.005)

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