\end{figure}
Finally, the biggest problems, and slowest to solve, are given in Table~\ref{chXXX:tab:big}. A new tendency can be observed in Figure~\ref{chXXX:fig:SlowSolve}. The \textit{Revised-sparse} method is the fastest on most of the problems. The performances are still close between the best two methods on problems having a C-to-R ratio close to 2 such as bnl2.mps, pilot.mps, or greenbeb.mps. However, when this ratio is greater, the \textit{Revised-sparse} can be nearly twice as fast as the standard method. This is noticeable on 80bau3b.mps (4.5) and fit2p.mps (4.3). Although the C-to-R ratio of d6cube.mps (14.9) exceeds the ones previously mentioned, the \textit{Revised-sparse} method doesn't show an impressive performance, probably due to the small amount of rows and the density of this problem, which doesn't fully benefit from the lower complexity of sparse operations.
\end{figure}
Finally, the biggest problems, and slowest to solve, are given in Table~\ref{chXXX:tab:big}. A new tendency can be observed in Figure~\ref{chXXX:fig:SlowSolve}. The \textit{Revised-sparse} method is the fastest on most of the problems. The performances are still close between the best two methods on problems having a C-to-R ratio close to 2 such as bnl2.mps, pilot.mps, or greenbeb.mps. However, when this ratio is greater, the \textit{Revised-sparse} can be nearly twice as fast as the standard method. This is noticeable on 80bau3b.mps (4.5) and fit2p.mps (4.3). Although the C-to-R ratio of d6cube.mps (14.9) exceeds the ones previously mentioned, the \textit{Revised-sparse} method doesn't show an impressive performance, probably due to the small amount of rows and the density of this problem, which doesn't fully benefit from the lower complexity of sparse operations.