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| author | Stratis Ioannidis <stratis@stratis-Latitude-E6320.(none)> | 2013-02-11 14:32:13 -0800 |
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| committer | Stratis Ioannidis <stratis@stratis-Latitude-E6320.(none)> | 2013-02-11 14:32:13 -0800 |
| commit | dd7111bf1fd35d39f5a1e4fe930cb093888fd31d (patch) | |
| tree | 81f2c351f1800383537c92b309331428d92d6b80 /intro.tex | |
| parent | f884186cb1e840c7b6abd343978b62cbac206cd8 (diff) | |
| download | recommendation-dd7111bf1fd35d39f5a1e4fe930cb093888fd31d.tar.gz | |
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Diffstat (limited to 'intro.tex')
| -rw-r--r-- | intro.tex | 6 |
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@@ -39,10 +39,10 @@ subject to a budget constraint $\sum_{i\in S}c_i\leq B$, where $B$ is \E's budge \smallskip The objective function, which is the key, is formally obtained by optimizing the information gain in $\beta$ when the latter is learned through linear regression, and is related to the so-called $D$-optimality criterion~\cite{pukelsheim2006optimal,atkinson2007optimum}. \item -We present a polynomial time, truthful mechanism for \SEDP{}, yielding a constant factor ($\approx 12.98$) approximation. In contrast to this, we show that no truthful, budget-feasible algorithms are possible for \SEDP{} within a factor 2 approximation. +We present a polynomial time, truthful mechanism for \SEDP{}, yielding a constant factor ($\approx 12.98$) approximation to the optimal value of \eqref{obj}. In contrast to this, we show that no truthful, budget-feasible algorithms are possible for \SEDP{} within a factor 2 approximation. \smallskip -We note that the objective \eqref{obj} is submodular. Using this fact, applying previous results for budget feasible mechanisms under general submodular objectives would yield either a truthful deterministic mechanism that requires exponential time, or a poly-time algorithm that is not deterministic~\cite{singer-mechanisms,chen}. +We note that the objective \eqref{obj} is submodular. Using this fact, applying previous results for budget feasible mechanisms under general submodular objectives~\cite{singer-mechanisms,chen} would yield either a deterministic, truthful, constant-approximation mechanism that requires exponential time, or a non-deterministic, (universally) truthful, poly-time mechanism that yields a constant approximation ratio only \emph{in expectation} (\emph{i.e.}, its approximation guarantee for a given instance may in fact be unbounded). \end{itemize} @@ -66,7 +66,7 @@ From a technical perspective, we present a convex relaxation of \eqref{obj}, and %Our approach to mechanisms for experimental design --- by % optimizing the information gain in parameters like $\beta$ which are estimated through the data analysis process --- is general. We give examples of this approach beyond linear regression to a general class that includes logistic regression and learning binary functions, and show that the corresponding budgeted mechanism design problem is also expressed through a submodular optimization. Hence, prior work \cite{chen,singer-mechanisms} immediately applies, and gives randomized, universally truthful, polynomial time, constant factor approximation mechanisms for problems in this class. Getting deterministic, truthful, polynomial time mechanisms with a constant approximation factor for this class or specific problems in it, like we did for \EDP, remains an open problem. -In what follows, we describe related work in Section~\ref{sec:related}. We briefly review experimental design and budget feasible mechanisms in Section~\ref{sec:peel} and define \SEDP\ formally. In Section~\ref{sec:main} we present our mechanism for \SEDP\ and prove our main results. A generalization of our framework to machine learning tasks beyond linear regression is presented in Section~\ref{sec:ext}. +In what follows, we describe related work in Section~\ref{sec:related}. We briefly review experimental design and budget feasible mechanisms in Section~\ref{sec:peel} and define \SEDP\ formally. In Section~\ref{sec:main} we present our mechanism for \SEDP\ and state our main results, which are proved in Section~\ref{sec:proofs}. A generalization of our framework to machine learning tasks beyond linear regression is presented in Section~\ref{sec:ext}. \junk{ |
