From Worst to Average Case to Incremental Search Bounds of the Strong Lucas Test
Semira Einsele, Gerhard Wunder

TL;DR
This paper provides new probabilistic bounds for the strong Lucas primality test, demonstrating that multiple test rounds significantly reduce error probability, and introduces an efficient incremental search algorithm with improved bounds.
Contribution
It establishes that passing multiple rounds of the strong Lucas test greatly decreases error probability and introduces bounds for an incremental search method that enhances efficiency.
Findings
Error probability decreases exponentially with test rounds
Bounds are established for the incremental search algorithm
Candidate selection reduces random bits and improves trial division efficiency
Abstract
The strong Lucas test is a widely used probabilistic primality test in cryptographic libraries. When combined with the Miller-Rabin primality test, it forms the Baillie-PSW primality test, known for its absence of false positives, undermining the relevance of a complete understanding of the strong Lucas test. In primality testing, the worst-case error probability serves as an upper bound on the likelihood of incorrectly identifying a composite as prime. For the strong Lucas test, this bound is for odd composites, not products of twin primes. On the other hand, the average-case error probability indicates the probability that a randomly chosen integer is inaccurately classified as prime by the test. This bound is especially important for practical applications, where we test primes that are randomly generated and not generated by an adversary. The error probability of does…
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Taxonomy
TopicsAdvanced Statistical Process Monitoring · Scientific Measurement and Uncertainty Evaluation · Benford’s Law and Fraud Detection
