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-rw-r--r--paper/sections/algorithms.tex13
1 files changed, 6 insertions, 7 deletions
diff --git a/paper/sections/algorithms.tex b/paper/sections/algorithms.tex
index 810653f..7dd22b5 100644
--- a/paper/sections/algorithms.tex
+++ b/paper/sections/algorithms.tex
@@ -49,7 +49,7 @@ An optimal solution to the above problem can be found in polynomial time using
standard LP-solvers. The solution returned by the LP is \emph{fractional}, and
requires a rounding procedure to return a feasible solution to our problem,
where $S$ is integral. To round the solution we use the pipage rounding
-method~\cite{pipage}. We defer the details to the full version of the paper~\cite{full}.
+method~\cite{pipage}. We defer the details to Appendix~\ref{sec:lp-proofs}.
\begin{lemma}
For \mbox{\textsc{AdaptiveSeeding-LP}} defined in \eqref{eq:lp}, any fractional solution $(\boldsymbol\lambda, \mathbf{q})\in[0,1]^m\times[0,1]^n$ can be rounded to an integral solution $\bar{\boldsymbol\lambda} \in \{0,1\}^{m}$ s.t. $(1-1/e) F(\mathbf{p}\circ\mathbf{q}) \leq A(\bar{\lambda})$ in $O(m + n)$ steps.
@@ -109,7 +109,7 @@ $\mathcal{O}(T,b)$.
non-decreasing in $b$.
\end{lemma}
-The proof of this lemma can be found in the full version of the paper~\cite{full}. The main
+The proof of this lemma can be found in Appendix~\ref{sec:comb-proofs}. The main
idea consists in writing:
\begin{multline*}
\mathcal{O}(T\cup\{x\},c)-\mathcal{O}(T\cup\{x\},b)=\int_b^c\partial_+\mathcal{O}_{T\cup\{x\}}(t)dt
@@ -137,10 +137,10 @@ y\in\neigh{X}\setminus T$, we need to show that:
This can be done by partitioning the set $T$ into ``high value
items'' (those with weight greater than $w_x$) and ``low value items'' and
carefully applying Lemma~\ref{lemma:nd} to the associated subproblems.
- The proof is in the full version of the paper~\cite{full}.
+ The proof is in Appendix~\ref{sec:comb-proofs}.
Finally, Lemma~\ref{lemma:sub} can be used to show Proposition~\ref{prop:sub}
-whose proof can be found in the full version~\cite{full}.
+whose proof can be found in Appendix~\ref{sec:comb-proofs}.
\begin{proposition}\label{prop:sub}
Let $b\in\mathbf{R}^+$, then $\mathcal{O}(\neigh{S},b)$ is monotone and
@@ -195,8 +195,7 @@ solution for the split with the highest value (breaking ties arbitrarily).
This process can be trivially parallelized across $k-1$ machines, each
performing a computation of a single split. With slightly more effort, for any
$\epsilon>0$ one can parallelize over $\log_{1+\epsilon}n$ machines at the cost
-of losing a factor of $\epsilon$ in the approximation guarantee (see full
-version of the paper~\cite{full} for details).\newline
+of losing a factor of $\epsilon$ in the approximation guarantee (see Appendix~\ref{sec:para} for details).\newline
\noindent \textbf{Implementation in MapReduce.} While the previous paragraph
describes how to parallelize the outer \texttt{for} loop of
@@ -206,7 +205,7 @@ applied to the function $\mathcal{O}\left(\neigh{\cdot}, t\right)$. The
\textsc{Sample\&Prune} approach successfully applied in \cite{mr} to obtain
MapReduce algorithms for various submodular maximizations can also be applied
to Algorithm~\ref{alg:comb} to cast it in the MapReduce framework. The details
-of the algorithm can be found in the full version of the paper~\cite{full}.
+of the algorithm can be found in Appendix~\ref{sec:mr}.
\newline
%A slightly more sophisticated approach is to consider only $\log n$ splits: $(1,k-1),(2,k-2),\ldots,(2^{\lfloor \log n \rfloor},1)$ and then select the best solution from this set. It is not hard to see that in comparison to the previous approach, this would reduce the approximation guarantee by a factor of at most 2: if the optimal solution is obtained by spending $t$ on the first stage and $k-t$ in the second stage, then since $t \leq 2\cdot2^{\lfloor \log t \rfloor}$ the solution computed for $(2^{\lfloor \log t \rfloor}, k - 2^{\lfloor \log t \rfloor})$ will have at least half that value.