Hamiltonian Cycle Parameterized by Treedepth in Single Exponential Time and Polynomial Space
For many algorithmic problems on graphs of treewidth t, a standard dynamic programming approach gives an algorithm with time and space complexity 2^O(t)· n^O(1). It turns out that when one considers a more restrictive parameter treedepth, it is often the case that a variation of this technique can be used to reduce the space complexity to polynomial, while retaining time complexity of the form 2^O(d)· n^O(1), where d is the treedepth. This transfer of methodology is, however, far from being automatic. For instance, for problems with connectivity constraints, standard dynamic programming techniques give algorithms with time and space complexity 2^O(tlog t)· n^O(1) on graphs of treewidth t, but it is not clear how to convert them into time-efficient polynomial space algorithms for graphs of low treedepth. Cygan et al. (FOCS'11) introduced the Cut Count technique and showed that a certain class of problems with connectivity constraints can be solved in time and space complexity 2^O(t)· n^O(1). Recently, Hegerfeld and Kratsch (STACS'20) showed that, for some of those problems, the Cut Count technique can be also applied in the setting of treedepth, and it gives algorithms with running time 2^O(d)· n^O(1) and polynomial space usage. However, a number of important problems eluded such a treatment, with the most prominent examples being Hamiltonian Cycle and Longest Path. In this paper we clarify the situation by showing that Hamiltonian Cycle, Hamiltonian Path, Long Cycle, Long Path, and Min Cycle Cover all admit 5^d· n^O(1)-time and polynomial space algorithms on graphs of treedepth d. The algorithms are randomized Monte Carlo with only false negatives.
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