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-We have proposed a convex relaxation for \EDP, and showed that it can be used to design a $\delta$-truthful, constant approximation mechanism that runs in polynomial time. Our objective function, commonly known as the Bayes $D$-optimality criterion, is motivated from linear regression, and in particular captures the information gain when experiments are used to learn a linear model. %in \reals^d.
+We have proposed a convex relaxation for \EDP, and showed that it can be used to design a $\delta$-truthful, constant approximation mechanism that runs in polynomial time. Our objective function, commonly known as the Bayes $D$-optimality criterion, is motivated by linear regression, and in particular captures the information gain when experiments are used to learn a linear model. %in \reals^d.
A natural question to ask is to what extent the results we present here
generalize to other machine learning tasks beyond linear regression. We outline
a path in pursuing such generalizations in Appendix~\ref{sec:ext}. In
particular, although the information gain is not generally a submodular
function, we show that for a wide class of models, in which experiments
-outcomes are perturbed by independent noise, the information does indeed
-exhibit submodularity. Several important learning tasks fall under this
+outcomes are perturbed by independent noise, the information gain indeed
+exhibits submodularity. Several important learning tasks fall under this
category, including generalized linear regression, logistic regression,
\emph{etc.} In light of this, it would be interesting to investigate whether
our convex relaxation approach generalizes to other learning tasks in this