11,128 research outputs found

    Comparing holographic dark energy models with statefinder

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    We apply the statefinder diagnostic to the holographic dark energy models, including the original holographic dark energy (HDE) model, the new holographic dark energy model, the new agegraphic dark energy (NADE) model, and the Ricci dark energy model. In the low-redshift region the holographic dark energy models are degenerate with each other and with the Λ\LambdaCDM model in the H(z)H(z) and q(z)q(z) evolutions. In particular, the HDE model is highly degenerate with the Λ\LambdaCDM model, and in the HDE model the cases with different parameter values are also in strong degeneracy. Since the observational data are mainly within the low-redshift region, it is very important to break this low-redshift degeneracy in the H(z)H(z) and q(z)q(z) diagnostics by using some quantities with higher order derivatives of the scale factor. It is shown that the statefinder diagnostic r(z)r(z) is very useful in breaking the low-redshift degeneracies. By employing the statefinder diagnostic the holographic dark energy models can be differentiated efficiently in the low-redshift region. The degeneracy between the holographic dark energy models and the Λ\LambdaCDM model can also be broken by this method. Especially for the HDE model, all the previous strong degeneracies appearing in the H(z)H(z) and q(z)q(z) diagnostics are broken effectively. But for the NADE model, the degeneracy between the cases with different parameter values cannot be broken, even though the statefinder diagnostic is used. A direct comparison of the holographic dark energy models in the rr--ss plane is also made, in which the separations between the models (including the Λ\LambdaCDM model) can be directly measured in the light of the current values {r0,s0}\{r_0,s_0\} of the models.Comment: 8 pages, 8 figures; accepted by European Physical Journal C; matching the publication versio

    A Generic Sample Splitting Approach for Refined Community Recovery in Stochastic Block Models

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    We propose and analyze a generic method for community recovery in stochastic block models and degree corrected block models. This approach can exactly recover the hidden communities with high probability when the expected node degrees are of order logn\log n or higher. Starting from a roughly correct community partition given by some conventional community recovery algorithm, this method refines the partition in a cross clustering step. Our results simplify and extend some of the previous work on exact community recovery, discovering the key role played by sample splitting. The proposed method is simple and can be implemented with many practical community recovery algorithms.Comment: 19 page
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