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Template:New unreviewed articleK-convex functions, first introduced by Scarf, [1] are a special class of convex functions which is crucial in the proof of the optimality of the policy in inventory management 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.
Definition
Two equivalent definitions are as follows:
Definition 1 (The original definition)
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. [2] 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
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 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 .
Notes
^Scarf, H. (1960). The Optimality of (S, s) Policies in the Dynamic Inventory Problem. Stanford, CA: Stanford University Press. p. Chapter 13.
^Kolmogorov, A. N.; Fomin, S. V. (1970). Introduction to Real Analysis. New York: Dover Publications Inc.
External Links
Gallego, Guillermo; Sethi, Suresh P. (2014). "K-convexity in ". {{cite journal}}: Cite journal requires |journal= (help); External link in |title= (help)