who might consider him being too opportunis-
tic (Mauri, 2007).
• Prices of the retailer can be fixed by the govern-
ment or a franchise giver.
• Customers are heavy equipment or airplane man-
ufacturers and have stable demand for spare parts
which are only a minor component of the final
product (Lal and Staelin, 1984).
In these cases despite getting items for lower price
from his supplier, the buyer has no incentive to in-
troduce discounts to its own customers. Obviously
the demand of the final customers doesn’t increase.
In this situation the buyer’s demand is insensitive to
price changes, in other words price elasticity of the
demand is low.
4 STATE OF THE ART
Many articles in the field of operations management
have analysed ordering decisions while quantity dis-
counts are in place (Benton and Park, 1996). The
problem of when and how much discount to offer is a
problem that has received less attention, although it is
of equally great practical importance as how to act on
a given discount.
Nevertheless, there is a number of articles ad-
dressing the problem of offering an optimal discount
schedule from the supplier’s side (Crowther, 1964),
(Monahan, 1984), (Lal and Staelin, 1984), (Rosen-
blatt and Lee, 1985), (Lee and Rosenblatt, 1986),
(Banerjee, 1986). Later papers in this field base their
research on EOQ assumptions a well (Busher and
Lindner, 2004), (Chen and Robinson, 2012). These
papers share one more unifying feature — an assump-
tion that customers’ demand is independent of dis-
counts. That is an assumption valid for the current
paper as well.
The literature researched above indicates that a sit-
uation with more than two players is not considered
until recently. If a number of customers is consid-
ered, they are assumed to be homogeneous, or het-
erogeneous only in their demand. Discount sched-
ules offered by the supplier are constant and involve
limited number of break points (very often only one).
The same discount schedules are introduced for all
the customers. The models presented in the articles
are based on EOQ assumptions. To the best of our
knowledge capacitated problems as well as cases with
multiple items have not been considered yet.
More recent papers incorporate the price elastic-
ity of demand, which makes their research closer to
revenue management.
This research differs from the approaches stated
above in the following way:
• some of the EOQ assumptions are not applied;
• dynamic demand and finite time horizon are sup-
posed;
• a number of heterogeneous customers are consid-
ered, who are different not only in their demand
but in their holding and order costs;
• discounts are different for every single customer;
• discounts can vary from period to period.
5 METHODOLOGY
The methodology described in this paper concerns
stage 1 of the research. Currently two heuristic al-
gorithms have been developed. Later it is planned to
apply a metaheuristic (stage 2) and a game theoretical
(stage 3) approaches.
5.1 Initial Situation
In the current situation the customers decide their or-
ders based on the Wagner-Whitin algorithm (Whitin
and Wagner, 1958), the supplier receives the orders
and applies the Wagner-Whitin algorithm to schedule
his production based on these orders.
5.2 Cost Compensation Heuristic
Exact solutions to the problem are very hard to obtain
and would require an exponential amount of binary
variables, representing each possible order schedule,
for each customer.
Therefore, a heuristic solution approach has been
developed which involves a separation between the
problem when production and orders should take
place, and the amount of discount that has to be of-
fered to each costumer in each period to make them
order at the periods indicated.
The following parameters are used for defining the
algorithm:
d
it
demand for every customer i(i = 1, . . ., n or i ∈ N)
in every period t (t = 1, . . . , m or t ∈ M). Demand
of the supplier is the summation of his customers’
orders in that period;
s
i
fixed order processing/set up costs for every cus-
tomer i and the supplier i = 0;
h
i
inventory holding interest rate for each customer i
and the supplier to carry a monetory unit of inven-
tory from period t to period t + 1, assumed to be
constant;
ICORES2014-DoctoralConsortium
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