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K-convex function

From Wikipedia, the free encyclopedia

K-convex functions, first introduced by Scarf,[1] are a special weakening of the concept of convex function which is crucial in the proof of the optimality of the policy in inventory control theory. The policy is characterized by two numbers s and S, , such that when the inventory level falls below level s, an order is issued for a quantity that brings the inventory up to level S, and nothing is ordered otherwise. Gallego and Sethi [2] have generalized the concept of K-convexity to higher dimensional Euclidean spaces.

Definition

Two equivalent definitions are as follows:

Definition 1 (The original definition)

Let K be a non-negative real number. A function is K-convex if

for any and .

Definition 2 (Definition with geometric interpretation)

A function is K-convex if

for all , where .

This definition admits a simple geometric interpretation related to the concept of visibility.[3] Let . A point is said to be visible from if all intermediate points lie below the line segment joining these two points. Then the geometric characterization of K-convexity can be obtain as:

A function is K-convex if and only if is visible from for all .

Proof of Equivalence

It is sufficient to prove that the above definitions can be transformed to each other. This can be seen by using the transformation

Properties

[4]

Property 1

If is K-convex, then it is L-convex for any . In particular, if is convex, then it is also K-convex for any .

Property 2

If is K-convex and is L-convex, then for is -convex.

Property 3

If is K-convex and is a random variable such that for all , then is also K-convex.

Property 4

If is K-convex, restriction of on any convex set is K-convex.

Property 5

If is a continuous K-convex function and as , then there exit scalars and with such that

  • , for all ;
  • , for all ;
  • is a decreasing function on ;
  • for all with .

References

  1. ^ Scarf, H. (1960). The Optimality of (S, s) Policies in the Dynamic Inventory Problem. Stanford, CA: Stanford University Press. p. Chapter 13.
  2. ^ Gallego, G. and Sethi, S. P. (2005). K-convexity in ℜn. Journal of Optimization Theory & Applications, 127(1):71-88.
  3. ^ Kolmogorov, A. N.; Fomin, S. V. (1970). Introduction to Real Analysis. New York: Dover Publications Inc.
  4. ^ Sethi S P, Cheng F. Optimality of (s, S) Policies in Inventory Models with Markovian Demand. INFORMS, 1997.

External links

This page was last edited on 2 November 2022, at 22:35
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