Abstract
In Paturi, Pudlak, Saks, and Zane (Proceedings of the 39th Annual IEEE Symposium on Foundations of Computer Science (FOCS1998), pp. 628---637, 1998) proposed a simple randomized algorithm for finding a satisfying assignment of a k-CNF formula. The main lemma of the paper is as follows: Given a satisfiable k-CNF formula that has a d-isolated satisfying assignment z, the randomized algorithm finds z with probability at least $2^{-(1-\mu_{k}/(k-1)+\epsilon_{k}(d))n}$ , where $\mu_{k}/(k-1)=\sum_{i=1}^{\infty}1/(i((k-1)i+1))$ , and ? k (d)=o d (1). They estimated the lower bound of the probability in an analytical way, and used some asymptotics. In this paper, we analyze the same randomized algorithm, and estimate the probability in a combinatorial way. The lower bound we obtain is a little simpler: $2^{-(1-\mu_{k}(d)/(k-1))n}$ , where $\mu_{k}(d)/(k-1)=\sum_{i=1}^{d}1/(i((k-1)i+1))$ . This value is a little bit larger (i.e., better) than that of Paturi et al. (Proceedings of the 39th Annual IEEE Symposium on Foundations of Computer Science (FOCS1998), pp. 628---637, 1998) although the two values are asymptotically equal when d=?(1).
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