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Open Quantum Systems Decoherence
Entanglement Theory Quantum Correlations
Fibonacci sequence and its generalizations in doped quantum spin ladders
arXiv
Authors: Sudipto Singha Roy, Himadri Shekhar Dhar, Aditi Sen De, Ujjwal Sen
Year
2017
Paper ID
24636
Status
Preprint
Abstract Read
~2 min
Abstract Words
142
Citations
N/A
Abstract
An interesting aspect of antiferromagnetic quantum spin ladders, with complete dimer coverings, is that the wave function can be recursively generated by estimating the number of coverings in the valence bond basis, which follow the fabled Fibonacci sequence. In this work, we derive generalized forms of this sequence for multi-legged and doped quantum spin ladders, which allow the corresponding dimer-covered state to be recursively generated. We show that these sequences allow for estimation of physically and information-theoretically relevant quantities in large spin lattices without resorting to complex numerical methods. We apply the formalism to calculate the valence bond entanglement entropy, which is an important figure of merit for studying cooperative phenomena in quantum spin systems with SU(2) symmetry. We show that introduction of doping may mitigate, within the quarters of entanglement entropy, the dichotomy between odd- and even- legged quantum spin ladders.
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- An interesting aspect of antiferromagnetic quantum spin ladders, with complete dimer coverings, is that the wave function can be recursively generated by estimating the number...
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