Kruskal–Katona-Type Problems via Entropy Method

07/28/2023
by   Ting-Wei Chao, et al.
0

In this paper, we investigate several extremal combinatorics problems that ask for the maximum number of copies of a fixed subgraph given the number of edges. We call this type of problems Kruskal–Katona-type problems. Most of the problems that will be discussed in this paper are related to the joints problem. There are two main results in this paper. First, we prove that, in a 3-colored graph with R red, G green, B blue edges, the number of rainbow triangles is at most √(2RGB), which is sharp. Second, we give a generalization of the Kruskal–Katona theorem that implies many other previous generalizations. Both arguments use the entropy method, and the main innovation lies in a more clever argument that improves bounds given by Shearer's inequality.

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