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| author | Stratis Ioannidis <stratis@stratis-Latitude-E6320.(none)> | 2013-02-11 20:45:44 -0800 |
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| committer | Stratis Ioannidis <stratis@stratis-Latitude-E6320.(none)> | 2013-02-11 20:45:44 -0800 |
| commit | a9eb124b9a326104326723e9693ae4779c4df25b (patch) | |
| tree | 10c960337e020ce91762d39c1a7a529cf4db1f67 /main.tex | |
| parent | 05072094652d9587c22364d50ab8f004479ca900 (diff) | |
| download | recommendation-a9eb124b9a326104326723e9693ae4779c4df25b.tar.gz | |
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Diffstat (limited to 'main.tex')
| -rw-r--r-- | main.tex | 5 |
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@@ -90,9 +90,12 @@ The function $L$ is well-known to be concave and even self-concordant (see method for self-concordant functions in \cite{boyd2004convex}, shows that finding the maximum of $L$ to any precision $\varepsilon$ can be done in $O(\log\log\varepsilon^{-1})$ iterations. Being the solution to a maximization -problem, $OPT'_{-i^*}$ satisfies the required monotonicity property. The main challenge +problem, $OPT'_{-i^*}$ satisfies the required monotonicity property. + +The main challenge will be to prove that $OPT'_{-i^*}$, for our relaxation $L$, is close to $OPT_{-i^*}$. +We show this by establishing that $L$ is within a constant factor from the so-called multi-linear relaxation of \eqref{modified}, which in turn can be related to \eqref{modified} through pipage rounding. We establish the constant factor to the multi-linear relaxation by bounding the partial derivatives of these two functions; we obtain the latter bound by exploiting convexity properties of matrix functions over the convex cone of positive semidefinite matrices. \begin{algorithm}[t] \caption{Mechanism for \SEDP{}}\label{mechanism} |
