The subject of this paper is finding small sample spaces for joint distributions of n discrete random variables. Such distributions are often only required to obey a certain limited set of constraints of the form Pr(Event) - n. We show that the problem of deciding whether there exists any distribution satisfying a given set of constraints is NP-hard. However, if the constraints are consistent, then there exists a distribution satisfying them which is supported by a "small" sample space (one whose cardinality is equal to the number of constraints). For the important case of independence constraints, where the constraints have a certain form and are consistent with a joint distribution of independent random variables, a small sample space can be constructed in polynomial time. This last result can be used to derandomize algorithms; we demonstrate this by an application to the problem of finding large independent sets in sparse hypergraphs.
CITATION STYLE
Koller, D., & Lvlegiddo, N. (1993). Constructing small sample spaces satisfying given constraints. In Proceedings of the Annual ACM Symposium on Theory of Computing (Vol. Part F129585, pp. 268–277). Association for Computing Machinery. https://doi.org/10.1145/167088.167168
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