Learning from Satisfying Assignments Using Risk Minimization
In this paper we consider the problem of Learning from Satisfying Assignments introduced by \cite{1} of finding a distribution that is a close approximation to the uniform distribution over the satisfying assignments of a low complexity Boolean function $f$. In a later work \cite{2} consider the sam...
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Zusammenfassung: | In this paper we consider the problem of Learning from Satisfying Assignments
introduced by \cite{1} of finding a distribution that is a close approximation
to the uniform distribution over the satisfying assignments of a low complexity
Boolean function $f$. In a later work \cite{2} consider the same problem but
with the knowledge of some continuous distribution $D$ and the objective being
to estimate $D_f$, which is $D$ restricted to the satisfying assignments of an
unknown Boolean function $f$. We consider these problems from the point of view
of parameter estimation techniques in statistical machine learning and prove
similar results that are based on standard optimization algorithms for Risk
Minimization. |
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DOI: | 10.48550/arxiv.2101.03558 |