Abstract
In the field of dissipative systems, the non-Hermitian skin effect has
generated significant interest due to its unexpected implications. A
system is said to exhibit a skin effect if its properties are largely
affected by the boundary conditions. Despite the burgeoning interest,
the potential impact of this phenomenon on emerging quantum
technologies remains unexplored. In this work, we address this gap by
demonstrating that quantum neural networks can exhibit this behavior
and that skin effects, beyond their fundamental interest, can also be
exploited in computational tasks. Specifically, we show that the
performance of a given complex network used as a quantum reservoir
computer is dictated solely by the boundary conditions of a
dissipative line within its architecture. The closure of one (edge)
link is found to drastically change the performance in time-series
processing, proving the possibility of exploiting skin effects for
machine learning.
Funder
'la Caixa' Foundation
Ministerio de Educación y Formación
Profesional
Consejo Superior de Investigaciones
Científicas
European Commission
Ministerio de Economía y
Competitividad
Agencia Estatal de
Investigación
Cited by
1 articles.
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