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| author | Stratis Ioannidis <stratis@stratis-Latitude-E6320.(none)> | 2013-07-06 00:08:44 -0700 |
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| committer | Stratis Ioannidis <stratis@stratis-Latitude-E6320.(none)> | 2013-07-06 00:08:44 -0700 |
| commit | b19e9c8c9c49da4afa893134dcff8954e7a2c240 (patch) | |
| tree | 99073f0d3ae1c26cbaedeb317f343aa454f80b73 /abstract.tex | |
| parent | 23351f5b605e351d745766817b225b6930035d27 (diff) | |
| download | recommendation-b19e9c8c9c49da4afa893134dcff8954e7a2c240.tar.gz | |
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| -rw-r--r-- | abstract.tex | 2 |
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diff --git a/abstract.tex b/abstract.tex index ae26832..327852e 100644 --- a/abstract.tex +++ b/abstract.tex @@ -18,7 +18,7 @@ We initiate the study of budgeted mechanisms for experimental design. In this se Each subject $i$ declares an associated cost $c_i >0$ to be part of the experiment, and must be paid at least her cost. In particular, the {\em Experimental Design Problem} (\SEDP) is to find a set $S$ of subjects for the experiment that maximizes $V(S) = \log\det(I_d+\sum_{i\in S}x_i\T{x_i})$ under the constraint $\sum_{i\in S}c_i\leq B$; our objective function corresponds to the information gain in parameter $\beta$ that is learned through linear regression methods, and is related to the so-called $D$-optimality criterion. Further, the subjects are \emph{strategic} and may lie about their costs. Thus, we need to design a mechanism for \SEDP{} with suitable properties. -We present a deterministic, polynomial time, truthful, budget feasible mechanism for \SEDP{}. +We present a deterministic, polynomial time, $\delta$-truthful, budget feasible mechanism for \SEDP{}. By applying previous work on budget feasible mechanisms with submodular objective, one could {\em only} have derived either an exponential time deterministic mechanism or a randomized polynomial time mechanism. Our mechanism yields a constant factor ($\approx 12.68$) approximation, and we show that no truthful, budget-feasible algorithms are possible within a factor $2$ approximation. We also show how to generalize our approach to a wide class of learning problems. |
