Time Series Quantum Reservoir Computing with Weak and Projective
Measurements
- URL: http://arxiv.org/abs/2205.06809v1
- Date: Fri, 13 May 2022 17:57:39 GMT
- Title: Time Series Quantum Reservoir Computing with Weak and Projective
Measurements
- Authors: Pere Mujal, Rodrigo Mart\'inez-Pe\~na, Gian Luca Giorgi, Miguel C.
Soriano and Roberta Zambrini
- Abstract summary: We show that it is possible to exploit the quantumness of the reservoir and to obtain ideal performance.
One consists in rewinding part of the dynamics determined by the fading memory of the reservoir and storing the corresponding data of the input sequence.
The other employs weak measurements operating online at the trade-off where information can be extracted accurately and without hindering the needed memory.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum machine learning represents a promising avenue for data processing,
also for purposes of sequential temporal data analysis, as recently proposed in
quantum reservoir computing (QRC). The possibility to operate on several
platforms and noise intermediate-scale quantum devices makes QRC a timely
topic. A challenge that has not been addressed yet, however, is how to
efficiently include quantum measurement in realistic protocols, while retaining
the reservoir memory needed for sequential time series processing and
preserving the quantum advantage offered by large Hilbert spaces. In this work,
we propose different measurement protocols and assess their efficiency in terms
of resources, through theoretical predictions and numerical analysis. We show
that it is possible to exploit the quantumness of the reservoir and to obtain
ideal performance both for memory and forecasting tasks with two successful
measurement protocols. One consists in rewinding part of the dynamics
determined by the fading memory of the reservoir and storing the corresponding
data of the input sequence, while the other employs weak measurements operating
online at the trade-off where information can be extracted accurately and
without hindering the needed memory. Our work establishes the conditions for
efficient protocols, being the fading memory time a key factor, and
demonstrates the possibility of performing genuine online time-series
processing with quantum systems.
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