Various real-life networks exhibit degree correlations and heterogeneous
structure, with the latter being characterized by power-law degree distribution
P(k)∼k−γ, where the degree exponent γ describes the extent
of heterogeneity. In this paper, we study analytically the average path length
(APL) of and random walks (RWs) on a family of deterministic networks,
recursive scale-free trees (RSFTs), with negative degree correlations and
various γ∈(2,1+ln2ln3], with an aim to explore the
impacts of structure heterogeneity on APL and RWs. We show that the degree
exponent γ has no effect on APL d of RSFTs: In the full range of
γ, d behaves as a logarithmic scaling with the number of network nodes
N (i.e. d∼lnN), which is in sharp contrast to the well-known double
logarithmic scaling (d∼lnlnN) previously obtained for uncorrelated
scale-free networks with 2≤γ<3. In addition, we present that some
scaling efficiency exponents of random walks are reliant on degree exponent
γ.Comment: The definitive verion published in Journal of Mathematical Physic