Some extremal ratios of the distance and subtree problems in binary trees
Shuchao Li, Hua Wang, Shujing Wang

TL;DR
This paper investigates extremal ratios of distance and subtree indices in binary trees, characterizing structures that maximize or minimize these ratios, and extends the analysis to k-ary trees, highlighting differences from general trees.
Contribution
It introduces the study of extremal ratios of local and global tree invariants specifically in binary trees, providing characterizations of extremal structures and comparing them with general tree cases.
Findings
Characterized extremal structures for two ratios in binary trees.
Extended analysis to k-ary trees with preliminary discussion.
Compared binary tree extremal structures with those in general trees.
Abstract
Among many topological indices of trees the sum of distances and the number of subtrees have been a long standing pair of graph invariants that are well known for their negative correlation. That is, among various given classes of trees, the extremal structures maximizing one usually minimize the other, and vice versa. By introducing the "local" versions of these invariants, for the sum of distance from to all other vertices and for the number of subtrees containing , extremal problems can be raised and studied for vertices within a tree. This leads to the concept of "middle parts" of a tree with respect to different indices. A challenging problem is to find extremal values of the ratios between graph indices and corresponding local functions at middle parts or leaves. This problem also provides new opportunities to further verify the the…
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Taxonomy
TopicsGraph theory and applications · Limits and Structures in Graph Theory · Advanced Graph Theory Research
