Unitary Closed Timelike Curves can Solve all of NP
Omri Shmueli

TL;DR
This paper demonstrates that unitary closed timelike curves (CTCs) within quantum processes can solve all NP problems, challenging previous beliefs that non-linearity was necessary for such computational power.
Contribution
It proves that polynomial-time quantum computation with unitary post-selection CTCs can solve NP-complete problems, using a restricted class of process matrices called purifiable.
Findings
Unitary CTCs can solve NP-complete problems.
Purifiable process matrices are sufficient for NP solutions.
Challenges the belief that non-linearity is essential for CTC computational power.
Abstract
Born in the intersection between quantum mechanics and general relativity, indefinite causal structure is the idea that in the continuum of time, some sets of events do not have an inherent causal order between them. Process matrices, introduced by Oreshkov, Costa and Brukner (Nature Communications, 2012), define quantum information processing with indefinite causal structure -- a generalization of the operations allowed in standard quantum information processing, and to date, are the most studied such generalization. Araujo et al. (Physical Review A, 2017) defined the computational complexity of process matrices, and showed that polynomial-time process matrix computation is equivalent to standard polynomial-time quantum computation with access to a weakening of post-selection Closed Timelike Curves (CTCs), that are restricted to be . Araujo et al. accordingly defined…
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Taxonomy
TopicsComputer Science and Engineering · Advanced Numerical Analysis Techniques · Cryptography and Residue Arithmetic
