I understand that in the method of moments, one takes theoretical expressions for the first several moments in one vector, and empirical moments in another vector, and then finds the parameters that minimizes the difference between them via iteration. What are the expressions for the moments of the Hawkes process with the standard mixture of exponential kernels? I found one paper with expressions for the cumulants, and that the moments can be expressed in terms of the cumulants but it's still not that clear to me.https://arxiv.org/abs/1409.5353 The kernel I'm referring to is
$\lambda (t) = \mu + \sum_{t_i < t} \sum_{j = 1}^P \alpha_j e^{- \beta_j (t - t_i)}$
The $n$-th order cumulant density is defined by $ k^{(i_1, \ldots, i_n)} = \sum_{T \in \mathcal{T}_{(i_1, \ldots, i_n)}^m} w (T) $
where $w (T)$ is the weight of the tree T, defined as the product of the weight of all its edges, times the weight of the root $m$, defined as being equal to $\lambda^m$.