rapport : simulations, inference ajout interprétation résultats
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@ -116,14 +116,21 @@ and~\ref{fig:inference-ari-plots}.
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\paragraph{Results}
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\paragraph{Results}
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For the model comparison, when $\eps[\alpha]$ is small
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For the model comparison, when $\eps[\alpha]$ is small
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($\eps[\alpha]\in[0, .04]$), the simulation model is close to the
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($\eps[\alpha]\in[0, .03]$), the simulation model is close to an
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Erd\H{o}s-Reńyi network, and it is very hard to find any structure beyond the one
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Erd\H{o}s-Reńyi network~\parencite{erdosRandomGraphs1959}, and it is very hard
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to find any structure beyond the one
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of a single block on each dimension.
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of a single block on each dimension.
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On the figure \ref{fig:inference-prop-modele-pref} one can see that from
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On the figure~\ref{fig:inference-prop-modele-pref} one can see that from
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$\eps[\alpha] = 0.06$ around $70\%$ of the time the
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$\eps[\alpha] = 0.06$ around $75\%$ of the time the
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$\pi\rho$-colBiSBM model (i.e., the correct one) is selected.
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$\pi\rho$-colBiSBM model (i.e., the correct one) is selected.
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The figure~\ref{fig:inference-ari-plots} shows that for $\eps[\alpha] \geq 0.09$,
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all the models, even the sep, have a
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$\overline{\text{ARI}}$ around $0.94$. This indicates that the models are able to
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assign correct nodes group memberships and thus that the inference works
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correctly.
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An interesting result we can read in the tables is that our models outperform
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An interesting result we can read in the tables is that our models outperform
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the $sep\text{-}BiSBM$ when considering the ARI on the whole set of nodes
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the $sep\text{-}BiSBM$ when considering the ARI on the whole set of nodes
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($\text{ARI}_d$). This means that our models are able to recover the block
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($\text{ARI}_d$). This means that our models are able to recover the block
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