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Subsections


2 The newsboy problem

2.1 Description of the newsboy problem

Let us consider what is known as "the newsboy problem" and use the notations of [Scarf 1958]. We have the opportunity to purchase now an amount maths of some good, at unitary cost maths (regardless of the quantity purchased). It is assumed that the future demand distribution is exactly known by its cumulative density function maths, that the future unit selling price maths is known and independent of the number sold and that non sold units are discarded. In any case, considering a salvation value maths is only transforming maths into maths.

In this Section, we will only examine what can be inferred from these hypotheses and postpone the discussion of their validity to later Sections. The satisfied demand will be maths, leading to the actual gain : maths. The usual criterion used to fix the optimal quantity maths to buy is maximizing the expected value of this gain. Denoting this expectation by maths, we have:

maths (1)

Derivating, one obtains the condition maths, i.e. the well known:
maths (2)

In other words: when maths is known, the best quantity you can buy is not the expectation of the demand.

2.2 The cost of uncertainty

Let us now compare the eventual gain maths with the naive value maths, i.e. with the gain that will occur if we buy right now the expectation maths of the future demand and if, by chance, it happens that we effectively sell these maths units. Let us denote by maths (resp. maths ) the expected value of the demand knowing that the demand is over (resp. under) the inventory, i.e. maths (resp. maths), and denote by maths the probability that the demand exceeds the inventory (maths). When the value of maths is clear from the context, the dependence from maths will not be emphasized. In other words:

maths

A straightforward computation leads to:

maths (3)

Since the right hand side is obviously positive, maths is the Holy Grail of the problem. Without uncertainties you can choose maths so that maths will be the expectation of your gain (the solution being maths. But in presence of uncertainties, there is no choice of maths that allows your expected gain to reach this value.

Moreover, this quantity maths has a clear meaning in terms of risks evaluation. You have a risk maths that the demand maths overflows your inventory maths. And in this case, your score is burdened by the fact that you miss the opportunity to sell maths units, leading to an average miss to gain of maths. On the other hand, you have a risk maths that your inventory overflows the demand. And in that case, your score is burdened by the resulting maths leftover units, leading to an average extra cost of maths.

Therefore, the right hand side of eq:cost-of-uncertainty measures the cost of uncertainty. A better choice for maths can decrease this cost, but it will never vanish. Reporting eq:Q-optimal into eq:cost-of-uncertainty leads to the following expression for the cost of uncertainties (where maths are relative to maths):

maths (4)

The usefulness of this expression will appear clearly in sec:How-to-summarize, suggesting both how to define a new parameter maths and an upper bound for the cost of uncertainties.

Fig. 1: Curves of maths, depending from the maths ratio and the shape of maths.
[Normal, maths.]maths [Normal, maths.]maths
[Lognormal, maths.]maths [Lognormal, maths.]maths
[Two Dirac's, maths, maths.]maths [Two Dirac's, maths, maths.]maths

2.3 Behavior of the most current distributions

Before introducing another family of distributions (the triangular ones), let us recall briefly what happens when using the most current distributions. The corresponding results are summarized in fig:gain-depending-onctp-and-shape where maths is fixed and the cost to price ratio is either maths (lefts) or maths (rights). Each subfigure draws the graphs of maths relative to maths (the upper broken line) and to mathsmaths (the three curves, the lowest being relative to the greatest maths).

The widely used normal law (see fig:normal-g and fig:normal-d) is a sound model when assuming that consumers are acting as additive processes whose decisions are taken independently... but this is quite never the case. Many decision criteria are the same for everybody, the welfare of the general economy among them. On the other hand, when using a Gaussian distribution only for convenience (as it is often the case in the literature), it must be clear that this choice implies that maths remains small in order to ensure that maths.

A better candidate to model a positive quantity is the lognormal law (see fig:log-g and fig:log-d) since it doesn't introduce artificial negative values. Nevertheless, it should be kept in mind that using this model is roughly equivalent to assume that the solvable demand is the product of many independent random positive factors. Clearly, this is not ever the case. Moreover, when using a lognormal distribution only for convenience, one introduces an extra dependence between variance and skewness since, for this distribution, maths where maths is defined as maths.

When using one of the former distributions, the parameters maths and maths are the only degrees of freedom available. In order to test how robust are the conclusions drawn from partial knowledge, it is of interest to use models that depend at least on three parameters. Such is the "two Dirac's" distribution that has been introduced in [Scarf 1958] to obtain the general max-min formula. In this model, the parameters maths are defined by:

maths

From maths and maths, we obtain maths and maths. Since maths should remain positive, the range maths of the allowed values for maths shortens when maths increases. One has:
maths (5)

and this value is the rationale for the piecewise appearing in the Scarf's max-min formula eq:scarf-bound. fig:scarf-g and fig:scarf-d have been drawn with maths and the other parameters as before.

In each of the six subfigures of fig:gain-depending-onctp-and-shape, we have drawn the locus of the extremal points. All of them start from maths. In the normal case, the loci are two small rectilinear segments. In the lognormal case, maths can grow to infinity, inducing the existence of a ``fat tail'' for the distribution. Thus, quite all the mass should concentrate towards maths in order to equilibrate the ``fat tail'' since the mean maths has to remain constant. This is the reason why maths when maths, as it can be seen on both graphs. But while, in fig:log-g, the locus shifts ever to the left, we can see, in fig:log-d, that the locus starts shifting to the right (due to the value of maths) and afterwards turns to the left (and tends to the origin). In the "two Dirac's" case, the loci are a part of the upper broken line.

2.4 Triangular model

We will now introduce another law, namely the triangular distribution, whose name has been coined from the shape of their pdf. The rationale to introduce this new law is to provide an easy to use 3-parameters distribution that seems more realistic than the "two Dirac's". Denoting respectively, as in fig:trian-pdf, maths the min, maths the mode and maths the maths of the distribution, the function maths is given by:

maths

while mean and variance can be obtained at first sight according to the mechanical behavior of a triangular plate. Namely:
maths maths maths (6)
maths maths maths  

Using these formulae, it can be seen that the triangular distribution can reach a coefficient of variation maths as great maths. In comparison, it has been seen that using a normal model is unrealistic unless maths.

The triangular model is a simple way to deal with the fact that often the demand is not symmetrical around it's mean. This lack of symmetry is usually measured by the maths, where maths is the third centered moment. This moment has a nice expression over maths:

maths

But we can obtain a more compact expression by using maths (the mean), maths (the width) and maths (the barycentric position of maths in maths, verifying maths) to characterize the distribution. We obtain:

maths

and therefore the skewness depends only on maths. Conversely, the skewness gives the shape (i.e. maths), then maths gives the size (i.e. maths) and finally maths fixes the position of the triangle along the axis. By this method, one can deal with skewness up to maths.

fig: trian has been drawn using maths. In fig:trian-g, the skewness of the distribution and the cost to price ratio are acting in conjunction, and the locus of the extremal points shifts clearly to the left. In fig:trian-d, these two factors are acting in opposition, and the shift to the right of the corresponding locus is not so strong.

Fig. 2: Triangular model (maths).
[Pdf, assuming maths.]maths

[Plotting maths when maths.]maths

[Plotting maths when maths.]maths

Fig. 3: Max-min problem, triangular model.
[Possible associations for maths.]maths

[Assuming maths.]maths

maths

[Assuming maths.]maths


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Previous: 1 Introduction Up: Robustness Analysis of Stochastic Next: 3 Max-min problems


douillet@ensait.fr
2006-03-25