
In a series of four papers we prove the following relaxation of the Loebl-Komlos-Sos Conjecture: For every $��>0$ there exists a number $k_0$ such that for every $k>k_0$ every $n$-vertex graph $G$ with at least $(\frac12+��)n$ vertices of degree at least $(1+��)k$ contains each tree $T$ of order $k$ as a subgraph. The method to prove our result follows a strategy similar to approaches that employ the Szemer��di regularity lemma: we decompose the graph $G$, find a suitable combinatorial structure inside the decomposition, and then embed the tree $T$ into $G$ using this structure. Since for sparse graphs $G$, the decomposition given by the regularity lemma is not helpful, we use a more general decomposition technique. We show that each graph can be decomposed into vertices of huge degree, regular pairs (in the sense of the regularity lemma), and two other objects each exhibiting certain expansion properties. In this paper, we introduce this novel decomposition technique. In the three follow-up papers, we find a combinatorial structure suitable inside the decomposition, which we then use for embedding the tree.
41 pages, 6 figures; further referees' comments incorporated, the most substantial of which being a newly written Section 3.8
Extremal problems in graph theory, Tree embedding, QA Mathematics / matematika, sparse graph, Extremal graph theory, Loebl-Komlós-Sós conjecture, Loebl–Komlós–Sós conjecture, extremal graph theory, Graph decomposition, Sparse graph, tree embedding, Trees, regularity lemma, Regularity lemma, FOS: Mathematics, Mathematics - Combinatorics, Combinatorics (math.CO), graph decomposition
Extremal problems in graph theory, Tree embedding, QA Mathematics / matematika, sparse graph, Extremal graph theory, Loebl-Komlós-Sós conjecture, Loebl–Komlós–Sós conjecture, extremal graph theory, Graph decomposition, Sparse graph, tree embedding, Trees, regularity lemma, Regularity lemma, FOS: Mathematics, Mathematics - Combinatorics, Combinatorics (math.CO), graph decomposition
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