Gael Sentís

Postdoc
Room: B-105
Phone:
gael.sentis@uni-siegen.dePreprints
See also arxiv
Gael Sentís, Alex Monràs, Ramon Muñoz-Tapia, John Calsamiglia and Emilio Bagan
Unsupervised classification of quantum data
arXiv:1903.01391
We introduce the problem of unsupervised classification of quantum data,
namely, of systems whose quantum states are unknown. We derive the optimal
single-shot protocol for the binary case, where the states in a disordered
input array are of two types. Our protocol is universal and able to
automatically sort the input under minimal assumptions, yet partially
preserving information contained in the states. We quantify analytically its
performance for arbitrary size and dimension of the data. We contrast it with
the performance of its classical counterpart, which clusters data that has been
sampled from two unknown probability distributions. We find that the quantum
protocol fully exploits the dimensionality of the quantum data to achieve a
much higher performance, provided data is at least three-dimensional. Last but
not least, the quantum protocol runs efficiently on a quantum computer, while
the classical one is NP-hard.
Gael Sentís
Dealing with ignorance: universal discrimination, learning and quantum
correlations
arXiv:1407.4690
The problem of discriminating the state of a quantum system among a number of
hypothetical states is usually addressed under the assumption that one has
perfect knowledge of the possible states of the system. In this thesis, I
analyze the role of the prior information available in facing such problems,
and consider scenarios where the information regarding the possible states is
incomplete. In front of a complete ignorance of the possible states' identity,
I discuss a quantum "programmable" discrimination machine for qubit states that
accepts this information as input programs using a quantum encoding, rather
than as a classical description. The optimal performance of these machines is
studied for general qubit states when several copies are provided, in the
schemes of unambiguous, minimum-error, and error-margin discrimination. Then,
this type of automation in discrimination tasks is taken further. By realizing
a programmable machine as a device that is trained through quantum information
to perform a specific task, I propose a quantum "learning" machine for
classifying qubit states that does not require a quantum memory to store the
qubit programs and, nevertheless, performs as good as quantum mechanics
permits. Such learning machine thus allows for several optimal uses with no
need for retraining. A similar learning scheme is also discussed for coherent
states of light. I present it in the context of the readout of a classical
memory by means of classically correlated coherent signals, when these are
produced by an imperfect source. I show that, in this case, the retrieval of
information stored in the memory can be carried out more accurately when fully
general quantum measurements are used. Finally, as a transversal topic, I
propose an efficient algorithmic way of decomposing any quantum measurement
into convex combinations of simpler (extremal) measurements.
Publications
Gael Sentís, Johannes N. Greiner, Jiangwei Shang, Jens Siewert and Matthias Kleinmann
Bound entangled states fit for robust experimental verification
Quantum 2,
113
(2018),
arXiv:1804.07562
Preparing and certifying bound entangled states in the laboratory is an
intrinsically hard task, due to both the fact that they typically form narrow
regions in the state space, and that a certificate requires a tomographic
reconstruction of the density matrix. Indeed, the previous experiments that
have reported the preparation of a bound entangled state relied on such
tomographic reconstruction techniques. However, the reliability of these
results crucially depends on the extra assumption of an unbiased
reconstruction. We propose an alternative method for certifying the bound
entangled character of a quantum state that leads to a rigorous claim within a
desired statistical significance, while bypassing a full reconstruction of the
state. The method is comprised by a search for bound entangled states that are
robust for experimental verification, and a hypothesis test tailored for the
detection of bound entanglement that is naturally equipped with a measure of
statistical significance. We apply our method to families of states of $3\times
3$ and $4\times 4$ systems, and find that the experimental certification of
bound entangled states is well within reach.
Gael Sentís, Esteban Martínez-Vargas and Ramon Muñoz-Tapia
Online optimal exact identification of a quantum change point
Phys. Rev. A 98,
052305
(2018),
arXiv:1802.00280
We consider online detection strategies for identifying a change point in a
stream of quantum particles allegedly prepared in identical states. We show
that the identification of the change point can be done without error via
sequential local measurements while attaining the optimal performance bound set
by quantum mechanics. In this way, we establish the task of exactly identifying
a quantum change point as an instance where local protocols are as powerful as
global ones. The optimal online detection strategy requires only one bit of
memory between subsequent measurements, and it is amenable to experimental
realization with current technology.
Shang Yu, Chang-Jiang Huang, Jian-Shun Tang, Zhih-Ahn Jia, Yi-Tao Wang, Zhi-Jin Ke, Wei Liu, Xiao Liu, Zong-Quan Zhou, Ze-Di Cheng, Jin-Shi Xu, Yu-Chun Wu, Yuan-Yuan Zhao, Guo-Yong Xiang, Chuan-Feng Li, Guang-Can Guo, Gael Sentís and Ramon Muñoz-Tapia
Experimentally detecting a quantum change point via Bayesian inference
Phys. Rev. A 98,
040301(R)
(2018),
arXiv:1801.07508
Detecting a change point is a crucial task in statistics that has been
recently extended to the quantum realm. A source state generator that emits a
series of single photons in a default state suffers an alteration at some point
and starts to emit photons in a mutated state. The problem consists in
identifying the point where the change took place. In this work, we consider a
learning agent that applies Bayesian inference on experimental data to solve
this problem. This learning machine adjusts the measurement over each photon
according to the past experimental results finds the change position in an
online fashion. Our results show that the local-detection success probability
can be largely improved by using such a machine learning technique. This
protocol provides a tool for improvement in many applications where a sequence
of identical quantum states is required.
Gael Sentís, John Calsamiglia and Ramon Munoz-Tapia
Exact Identification of a Quantum Change Point
Phys. Rev. Lett. 119,
140506
(2017),
arXiv:1707.07769
The detection of change points is a pivotal task in statistical analysis. In
the quantum realm, it is a new primitive where one aims at identifying the
point where a source that supposedly prepares a sequence of particles in
identical quantum states starts preparing a mutated one. We obtain the optimal
procedure to identify the change point with certainty---naturally at the price
of having a certain probability of getting an inconclusive answer. We obtain
the analytical form of the optimal probability of successful identification for
any length of the particle sequence. We show that the conditional success
probabilities of identifying each possible change point show an unexpected
oscillatory behaviour. We also discuss local (online) protocols and compare
them with the optimal procedure.
Alex Monràs, Gael Sentís and Peter Wittek
Inductive supervised quantum learning
Phys. Rev. Lett. 118,
190503
(2017),
arXiv:1605.07541
In supervised learning, an inductive learning algorithm extracts general
rules from observed training instances, then the rules are applied to test
instances. We show that this splitting of training and application arises
naturally, in the classical setting, from a simple independence requirement
with a physical interpretation of being non-signalling. Thus, two seemingly
different definitions of inductive learning happen to coincide. This follows
from the properties of classical information that break down in the quantum
setup. We prove a quantum de Finetti theorem for quantum channels, which shows
that in the quantum case, the equivalence holds in the asymptotic setting, that
is, for large number of test instances. This reveals a natural analogy between
classical learning protocols and their quantum counterparts, justifying a
similar treatment, and allowing to inquire about standard elements in
computational learning theory, such as structural risk minimization and sample
complexity.
Gael Sentís, Emilio Bagan, John Calsamiglia, Giulio Chiribella and Ramon Munoz-Tapia
Quantum change point
Phys. Rev. Lett. 117,
150502
(2016),
arXiv:1605.01916
Sudden changes are ubiquitous in nature. Identifying them is of crucial
importance for a number of applications in medicine, biology, geophysics, and
social sciences. Here we investigate the problem in the quantum domain,
considering a source that emits particles in a default state, until a point
where it switches to another state. Given a sequence of particles emitted by
the source, the problem is to find out where the change occurred. For large
sequences, we obtain an analytical expression for the maximum probability of
correctly identifying the change point when joint measurements on the whole
sequence are allowed. We also construct strategies that measure the particles
individually and provide an online answer as soon as a new particle is emitted
by the source. We show that these strategies substantially underperform the
optimal strategy, indicating that quantum sudden changes, although happening
locally, are better detected globally.
Gael Sentís, Christopher Eltschka and Jens Siewert
Quantitative bound entanglement in two-qutrit states
Phys. Rev. A 94,
020302(R)
(2016),
arXiv:1609.01698
Among the many facets of quantum correlations, bound entanglement has
remained one the most enigmatic phenomena, despite the fact that it was
discovered in the early days of quantum information. Even its detection has
proven to be difficult, let alone its precise quantitative characterization. In
this work, we present the exact quantification of entanglement for a
two-parameter family of highly symmetric two-qutrit mixed states, which
contains a sizable part of bound entangled states. We achieve this by
explicitly calculating the convex-roof extensions of the linear entropy as well
as the concurrence for every state within the family. Our results provide a
benchmark for future quantitative studies of bipartite entanglement in
higher-dimensional systems.
Gael Sentís, Christopher Eltschka, Otfried Gühne, Marcus Huber and Jens Siewert
Quantifying entanglement of maximal dimension in bipartite mixed states
Phys. Rev. Lett. 117,
190502
(2016),
arXiv:1605.09783
The Schmidt coefficients capture all entanglement properties of a pure
bipartite state and therefore determine its usefulness for quantum information
processing. While the quantification of the corresponding properties in mixed
states is important both from a theoretical and a practical point of view, it
is considerably more difficult, and methods beyond estimates for the
concurrence are elusive. In particular this holds for a quantitative assessment
of the most valuable resource, the maximum possible Schmidt number of an
arbitrary mixed state. We derive a framework for lower bounding the appropriate
measure of entanglement, the so-called G-concurrence, through few local
measurements. Moreover, we show that these bounds have relevant applications
also for multipartite states.
Gael Sentís, Madalin Guta and Gerardo Adesso
Quantum learning of coherent states
EPJ Quantum Technology ,
:17
(2015),
arXiv:1410.8700
We develop a quantum learning scheme for binary discrimination of coherent
states of light. This is a problem of technological relevance for the reading
of information stored in a digital memory. In our setting, a coherent light
source is used to illuminate a memory cell and retrieve its encoded bit by
determining the quantum state of the reflected signal. We consider a situation
where the amplitude of the states produced by the source is not fully known,
but instead this information is encoded in a large training set comprising many
copies of the same coherent state. We show that an optimal global measurement,
performed jointly over the signal and the training set, provides higher
successful identification rates than any learning strategy based on first
estimating the unknown amplitude by means of Gaussian measurements on the
training set, followed by an adaptive discrimination procedure on the signal.
By considering a simplified variant of the problem, we argue that this is the
case even for non-Gaussian estimation measurements. Our results show that, even
in absence of entanglement, collective quantum measurements yield an
enhancement in the readout of classical information, which is particularly
relevant in the operating regime of low-energy signals.
G. Sentís, E. Bagan, J. Calsamiglia and R. Muñoz-Tapia
Programmable discrimination with an error margin
Phys. Rev. A 88,
052304
(2013),
arXiv:1308.1378
The problem of optimally discriminating between two completely unknown qubit
states is generalized by allowing an error margin. It is visualized as a
device---the programmable discriminator---with one data and two program ports,
each fed with a number of identically prepared qubits---the data and the
programs. The device aims at correctly identifying the data state with one of
the two program states. This scheme has the unambiguous and the minimum-error
schemes as extremal cases, when the error margin is set to zero or it is
sufficiently large, respectively. Analytical results are given in the two
situations where the margin is imposed on the average error probability---weak
condition---or it is imposed separately on the two probabilities of assigning
the state of the data to the wrong program---strong condition. It is a general
feature of our scheme that the success probability rises sharply as soon as a
small error margin is allowed, thus providing a significant gain over the
unambiguous scheme while still having high confidence results.
G. Sentís, B. Gendra, S. D. Bartlett and A. C. Doherty
Decomposition of any quantum measurement into extremals
J. Phys. A: Math. Theor. 46,
375302
(2013),
arXiv:1306.0349
We design an efficient and constructive algorithm to decompose any
generalized quantum measurement into a convex combination of extremal
measurements. We show that if one allows for a classical post-processing step
only extremal rank-1 POVMs are needed. For a measurement with $N$ elements on a
$d$-dimensional space, our algorithm will decompose it into at most $(N-1)d+1$
extremals, whereas the best previously known upper bound scaled as $d^2$. Since
the decomposition is not unique, we show how to tailor our algorithm to provide
particular types of decompositions that exhibit some desired property.
G. Sentís, J. Calsamiglia, R. Munoz-Tapia and E. Bagan
Robust optimal quantum learning without quantum memory
Sci. Rep. 2,
708
(2012),
arXiv:1208.0663
A quantum learning machine for binary classification of qubit states that
does not require quantum memory is introduced and shown to perform with the
minimum error rate allowed by quantum mechanics for any size of the training
set. This result is shown to be robust under (an arbitrary amount of) noise and
under (statistical) variations in the composition of the training set, provided
it is large enough. This machine can be used an arbitrary number of times
without retraining. Its required classical memory grows only logarithmically
with the number of training qubits, while its excess risk decreases as the
inverse of this number, and twice as fast as the excess risk of an
estimate-and-discriminate machine, which estimates the states of the training
qubits and classifies the data qubit with a discrimination protocol tailored to
the obtained estimates.
G. Sentís, E. Bagan, J. Calsamiglia and R. Munoz-Tapia
Multi-copy programmable discrimination of general qubit states
Phys. Rev. A 82,
042312
(2010),
arXiv:1007.5497
Quantum state discrimination is a fundamental primitive in quantum statistics
where one has to correctly identify the state of a system that is in one of two
possible known states. A programmable discrimination machine performs this task
when the pair of possible states is not a priori known, but instead the two
possible states are provided through two respective program ports. We study
optimal programmable discrimination machines for general qubit states when
several copies of states are available in the data or program ports. Two
scenarios are considered: one in which the purity of the possible states is a
priori known, and the fully universal one where the machine operates over
generic mixed states of unknown purity. We find analytical results for both,
the unambiguous and minimum error, discrimination strategies. This allows us to
calculate the asymptotic performance of programmable discrimination machines
when a large number of copies is provided, and to recover the standard state
discrimination and state comparison values as different limiting cases.