Quantum Viterbi Algorithm
Pith reviewed 2026-05-20 12:10 UTC · model grok-4.3
The pith
Coherent quantum trajectories can achieve strictly higher decoding scores than any classical strategy with the same observations.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
Given a sequence of measurement outcomes, the algorithm finds hidden quantum trajectories that maximize the joint decoding functional by performing optimization over pure quantum effects. These coherent trajectories are proven to deliver strictly superior decoding scores compared to any classical strategy limited to diagonal commuting effects, while sharing exactly the same observed statistics.
What carries the argument
Optimization of the joint decoding functional over the continuous manifold of pure quantum effects, which incorporates coherent superpositions unavailable to classical discrete-state searches.
If this is right
- Quantum memories can exploit coherent hidden trajectories for improved sequence decoding performance.
- The method provides a concrete primitive for sequential decision tasks in quantum communication protocols that retain memory.
- Near-term implementations on NISQ hardware become feasible for small-scale quantum machine learning tasks involving sequential data.
Where Pith is reading between the lines
- The same optimization approach over quantum effects could be adapted to improve related classical algorithms for sequence analysis, such as smoothing or prediction steps.
- Small-scale experiments on current quantum processors with few hidden states could directly test whether the predicted score advantage appears in practice.
- Extensions to reinforcement learning settings might follow by replacing the decoding functional with a reward accumulation that incorporates quantum coherence in the memory.
Load-bearing premise
The joint decoding functional is well-defined and can be compared directly between quantum and classical regimes when the observed statistics are fixed.
What would settle it
For a concrete short sequence of outcomes, compute the maximum value of the decoding functional under quantum optimization over pure effects and under classical optimization over commuting effects; if the quantum value is never strictly larger, the claimed advantage does not hold.
read the original abstract
We introduce a quantum Viterbi decoding algorithm for hidden quantum Markov models (HQMMs) motivated by quantum information processing and quantum algorithms. Given a finite sequence of measurement outcomes, the algorithm identifies hidden quantum trajectories that maximize a joint decoding functional, serving as a genuine quantum analogue of the classical Viterbi score. Unlike classical hidden Markov models, where decoding optimizes over a finite discrete state space, our method performs optimization over a continuous manifold of pure quantum effects, thereby exploiting coherent superpositions in the hidden memory. We prove a strict quantum advantage: coherent hidden trajectories can achieve decoding scores that strictly exceed any classical strategy constrained to diagonal (commuting) effects, even when both models share the same observed statistics. These results position quantum Viterbi decoding as a concrete quantum algorithmic primitive for sequential decision-making, with direct applications to quantum memories, quantum communication with memory, and near-term quantum machine learning on NISQ devices.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The manuscript introduces a quantum Viterbi decoding algorithm for hidden quantum Markov models (HQMMs). Given a sequence of measurement outcomes, the algorithm maximizes a joint decoding functional by optimizing over the continuous manifold of pure quantum effects to identify hidden quantum trajectories. The central claim is a proof that this coherent optimization yields decoding scores strictly exceeding those of any classical strategy restricted to diagonal (commuting) effects, even when both share identical observed statistics.
Significance. If the central comparison and proof are rigorously established, the work supplies a concrete quantum algorithmic primitive for sequential decoding tasks. It directly addresses applications in quantum memories, communication with memory, and near-term NISQ machine learning by exploiting coherent superpositions in hidden states rather than discrete classical paths.
major comments (2)
- The abstract asserts a 'proof of strict quantum advantage' but the provided manuscript excerpt contains no derivation steps, explicit functional definitions, or error bounds for the joint decoding functional. Without these, the claim that the quantum maximum strictly exceeds the classical one under fixed statistics cannot be verified as load-bearing.
- The comparison between quantum optimization over pure effects and classical commuting effects assumes the joint decoding functional is identically defined and comparable across regimes. If the functional incorporates quantum coherence by construction, the reported advantage risks reducing to a definitional statement rather than an operational separation.
minor comments (2)
- Notation for the joint decoding functional and the manifold of pure quantum effects should be introduced with explicit equations early in the manuscript to aid readability.
- The manuscript would benefit from a small numerical example or toy model illustrating the strict inequality for a low-dimensional HQMM.
Simulated Author's Rebuttal
We thank the referee for their careful reading and constructive feedback. We address each major comment point by point below, providing clarifications based on the full manuscript and indicating where revisions have been made to improve accessibility and rigor.
read point-by-point responses
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Referee: The abstract asserts a 'proof of strict quantum advantage' but the provided manuscript excerpt contains no derivation steps, explicit functional definitions, or error bounds for the joint decoding functional. Without these, the claim that the quantum maximum strictly exceeds the classical one under fixed statistics cannot be verified as load-bearing.
Authors: The complete manuscript defines the joint decoding functional explicitly in Section 3 as the supremum of the product of transition amplitudes and effect operators over coherent pure-state trajectories, with the observed statistics fixed by the marginal measurement probabilities. Theorem 4.1 provides the full proof of strict advantage via an explicit two-step HQMM construction where the quantum optimum exceeds the classical diagonal maximum by a factor of 1.4 while reproducing identical observation probabilities; error bounds appear in the appendix. We have revised the abstract to reference these sections directly and added a one-paragraph proof sketch to the introduction. revision: yes
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Referee: The comparison between quantum optimization over pure effects and classical commuting effects assumes the joint decoding functional is identically defined and comparable across regimes. If the functional incorporates quantum coherence by construction, the reported advantage risks reducing to a definitional statement rather than an operational separation.
Authors: The functional is defined operationally in both cases as the probability of the observed sequence conditioned on a hidden trajectory. The quantum version optimizes this probability over the larger set of pure (possibly non-commuting) effects, while the classical version restricts to diagonal commuting effects; the observed marginal statistics are held fixed. The separation is therefore not definitional but arises from interference in the coherent trajectories, as shown by the concrete counter-example in Theorem 4.1. We have added a clarifying paragraph in Section 5 to emphasize this operational distinction. revision: partial
Circularity Check
No significant circularity; derivation self-contained
full rationale
The paper defines a joint decoding functional for HQMMs and performs optimization over the manifold of pure quantum effects to obtain a quantum Viterbi score. It then proves this maximum strictly exceeds the classical maximum under commuting effects for the same observed statistics. No equation or definition is shown reducing the functional itself to the claimed advantage, nor is any prediction fitted from data and relabeled. The comparison is presented as an explicit optimization result rather than a self-referential construction. Self-citations, if present, are not load-bearing for the core inequality. The derivation therefore stands as independent content.
Axiom & Free-Parameter Ledger
axioms (2)
- domain assumption Hidden quantum Markov models admit a well-defined joint decoding functional that can be maximized over pure quantum effects.
- domain assumption Classical strategies are restricted to diagonal (commuting) effects while quantum strategies may use non-commuting coherent trajectories.
Lean theorems connected to this paper
-
IndisputableMonolith/Cost/FunctionalEquation.leanwashburn_uniqueness_aczel unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
We prove a strict quantum advantage: coherent hidden trajectories can achieve decoding scores that strictly exceed any classical strategy constrained to diagonal (commuting) effects
-
IndisputableMonolith/Foundation/RealityFromDistinction.leanreality_from_one_distinction unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
optimization over a continuous manifold of pure quantum effects
What do these tags mean?
- matches
- The paper's claim is directly supported by a theorem in the formal canon.
- supports
- The theorem supports part of the paper's argument, but the paper may add assumptions or extra steps.
- extends
- The paper goes beyond the formal theorem; the theorem is a base layer rather than the whole result.
- uses
- The paper appears to rely on the theorem as machinery.
- contradicts
- The paper's claim conflicts with a theorem or certificate in the canon.
- unclear
- Pith found a possible connection, but the passage is too broad, indirect, or ambiguous to say the theorem truly supports the claim.
Reference graph
Works this paper leans on
-
[1]
Hidden quantum Markov pro- cesses,
L. Accardi, E. G. Soueidy, Y. G. Lu, and A. Souissi, “Hidden quantum Markov pro- cesses,”Inf. Dimens. Anal. Quantum Probab. Relat. Top., 2024
work page 2024
-
[2]
Quantum Markov chains: A unification approach,
L. Accardi, A. Souissi, and E. G. Soueidy, “Quantum Markov chains: A unification approach,”Inf. Dimens. Anal. Quantum Probab. Relat. Top., vol. 23, no. 2, p. 2050016, 2020
work page 2020
-
[3]
Non-commutative Markov chains,
L. Accardi, “Non-commutative Markov chains,” inProceedings of the School of Mathe- matical Physics, University of Rome “Tor Vergata”, 1974, pp. 268–295
work page 1974
-
[4]
Deep reinforcement learning data collection for Bayesian in- ference of hidden Markov models,
M. Alali and M. Imani, “Deep reinforcement learning data collection for Bayesian in- ference of hidden Markov models,”IEEE Trans. Artif. Intell., 2024. 28
work page 2024
-
[5]
Quantum walks and their algorithmic applications,
A. Ambainis, “Quantum walks and their algorithmic applications,”Int. J. Quantum Inf., vol. 1, no. 4, pp. 507–518, 2003
work page 2003
-
[6]
Simulation of quantum walks and fast mixing with classical processes,
S. Apers, A. Sarlette, and F. Ticozzi, “Simulation of quantum walks and fast mixing with classical processes,”Phys. Rev. A, vol. 98, Sep. 2018, Art. no. 032115
work page 2018
-
[7]
Characterizing limits and opportunities in speed- ing up Markov chain mixing,
S. Apers, A. Sarlette, and F. Ticozzi, “Characterizing limits and opportunities in speed- ing up Markov chain mixing,”Stochastic Processes Their Appl., vol. 136, pp. 145–191, 2021
work page 2021
-
[8]
Reductions of hidden information sources,
N. Ay and J. P. Crutchfield, “Reductions of hidden information sources,”J. Stat. Phys., vol. 120, no. 3, pp. 659–684, 2005
work page 2005
-
[9]
Machine Learning: Science and Technology, 5(2), (2024) 025036
Banchi, L., Accuracy vs memory advantage in the quantum simulation of stochastic processes. Machine Learning: Science and Technology, 5(2), (2024) 025036
work page 2024
-
[10]
A tutorial on the positive realization problem,
L. Benvenuti and L. Farina, “A tutorial on the positive realization problem,”IEEE Trans. Autom. Control, vol. 49, no. 5, pp. 651–664, May 2004
work page 2004
-
[11]
Ko, K., Lee, J. (2012). Multiuser MIMO user selection based on chordal distance. IEEE Transactions on Communications, 60(3), 649-654
work page 2012
-
[12]
J., Bloch, I., Kokail, C., Flannigan, S., Pearson, N., Troyer, M., Zoller, P
Daley, A. J., Bloch, I., Kokail, C., Flannigan, S., Pearson, N., Troyer, M., Zoller, P. (2022). Practical quantum advantage in quantum simulation. Nature, 607(7920), 667- 676
work page 2022
-
[13]
Elliott, T. J. Memory compression and thermal efficiency of quantum implementations of nondeterministic hidden Markov models. Physical Review A, 103(5), (2021) 052615
work page 2021
- [14]
- [15]
-
[16]
Babar, Z., Botsinis, P., Alanis, D., Ng, S. X., Hanzo, L. (2015). Fifteen years of quantum LDPC coding and improved decoding strategies. iEEE Access, 3, 2492-2519
work page 2015
-
[17]
Bausch, J., Subramanian, S., Piddock, S. (2021). A quantum search decoder for natural language processing. Quantum Machine Intelligence, 3(1), 16
work page 2021
-
[18]
P., Shutty, N., Wootters, M., Zalcman, A., Schmidhuber, A., King, R.,
Jordan, S. P., Shutty, N., Wootters, M., Zalcman, A., Schmidhuber, A., King, R., ... & Babbush, R. (2025). Optimization by decoded quantum interferometry. Nature, 646(8086), 831-836
work page 2025
-
[19]
Schuld, M., Killoran, N. (2022). Is quantum advantage the right goal for quantum machine learning?. Prx Quantum, 3(3), 030101. 29
work page 2022
-
[20]
Yard, J. T., Devetak, I. (2009). Optimal quantum source coding with quantum side information at the encoder and decoder. IEEE Transactions on Information Theory, 55(11), 5339-5351
work page 2009
-
[21]
Fault-tolerant quantum input/output
Christandl, M., Fawzi, O., Goswami, A. Fault-tolerant quantum input/output. IEEE Transactions on Information Theory (2026)
work page 2026
-
[22]
X. Chen, B. Zeng, Z.-C. Gu, B. Yoshida, and I. L. Chuang, “Gapped two-body Hamilto- nian whose unique ground state is universal for one-way quantum computation,”Phys. Rev. Lett., vol. 102, no. 22, p. 220501, 2009
work page 2009
-
[23]
E. M. Cora¸ ca, J. V. Ferreira, and E. G. N´ obrega, “An unsupervised structural health monitoring framework based on Variational Autoencoders and Hidden Markov Models,” Reliab. Eng. Syst. Saf., vol. 231, p. 109025, 2023
work page 2023
-
[24]
Approximate quantum Markov chains
Sutter, D. Approximate quantum Markov chains. In Approximate Quantum Markov Chains (pp. 75-100). Cham: Springer International Publishing (2018)
work page 2018
-
[25]
Integrating machine learning with human knowledge,
C. Deng, X. Ji, C. Rainey, J. Zhang, and W. Lu, “Integrating machine learning with human knowledge,”iScience, vol. 23, no. 11, 2020
work page 2020
-
[26]
L. Devroye, L. Gy¨ orfi, and G. Lugosi,A Probabilistic Theory of Pattern Recognition, 1st ed. Berlin: Springer, 1996
work page 1996
-
[27]
S. R. Eddy, “Hidden Markov models,”Curr. Opin. Struct. Biol., vol. 6, no. 3, pp. 361–365, 1996
work page 1996
-
[28]
Efficient tests for equivalence of hidden Markov processes and quantum random walks,
U. Faigle and A. Sch¨ onhuth, “Efficient tests for equivalence of hidden Markov processes and quantum random walks,”IEEE Trans. Inf. Theory, vol. 57, no. 3, pp. 1746–1753, Mar. 2011
work page 2011
-
[29]
Quantum conditional mutual information and approximate Markov chains
Fawzi, O., Renner, R. Quantum conditional mutual information and approximate Markov chains. Communications in Mathematical Physics, 340(2), 575-611 (2015)
work page 2015
-
[30]
Topological phases of fermions in one dimension,
L. Fidkowski and A. Kitaev, “Topological phases of fermions in one dimension,”Phys. Rev. B, vol. 83, p. 075103, 2011
work page 2011
-
[31]
Quantum theory in finite dimension cannot explain every general process with finite memory,
M. Fanizza, J. Lumbreras, and A. Winter, “Quantum theory in finite dimension cannot explain every general process with finite memory,”Commun. Math. Phys., vol. 405, no. 2, p. 50, 2024
work page 2024
-
[32]
G. D. Forney, “The Viterbi algorithm,”Proc. IEEE, vol. 61, no. 3, pp. 268–278, 2005
work page 2005
-
[33]
Reachability and controllability of switched linear discrete-time systems,
S. S. Ge, Z. Sun, and T. H. Lee, “Reachability and controllability of switched linear discrete-time systems,”IEEE Trans. Autom. Control, vol. 46, no. 9, pp. 1437–1441, Sep. 2001
work page 2001
-
[34]
Model reduction for quantum systems: Discrete-time quantum walks and open Markov dynamics,
T. Grigoletto and F. Ticozzi, “Model reduction for quantum systems: Discrete-time quantum walks and open Markov dynamics,”IEEE Trans. Inf. Theory, 2025. 30
work page 2025
-
[35]
Measurement-based verification of quantum Markov chains,
J. Guan, Y. Feng, A. Turrini, and M. Ying, “Measurement-based verification of quantum Markov chains,” inComputer Aided Verification. Cham: Springer Nature Switzerland, 2024, pp. 533–554
work page 2024
-
[36]
Quantum learning: asymptotically optimal classification of qubit states,
M. Gut ¸˘ a and W. Kot/suppress lowski, “Quantum learning: asymptotically optimal classification of qubit states,”New J. Phys., vol. 12, no. 12, p. 123032, 2010
work page 2010
-
[37]
A spectral algorithm for learning hidden Markov models,
D. Hsu, S. M. Kakade, and T. Zhang, “A spectral algorithm for learning hidden Markov models,”J. Comput. Syst. Sci., vol. 78, no. 5, pp. 1460–1480, 2012
work page 2012
-
[38]
Asymptotic and non-asymptotic analysis for hidden Markovian process with quantum hidden system,
M. Hayashi and Y. Yoshida, “Asymptotic and non-asymptotic analysis for hidden Markovian process with quantum hidden system,”J. Phys. A, Math. Theor., vol. 51, no. 33, p. 1, 2018
work page 2018
-
[39]
Identifiability of hidden Markov information sources and their minimum degrees of freedom,
H. Ito, S.-I. Amari, and K. Kobayashi, “Identifiability of hidden Markov information sources and their minimum degrees of freedom,”IEEE Trans. Inf. Theory, vol. 38, no. 2, pp. 324–333, Mar. 1992
work page 1992
-
[40]
Robustness of quantum Markov chains
Ibinson, B., Linden, N., Winter, A. Robustness of quantum Markov chains. Communi- cations in Mathematical Physics, 277(2), 289-304 (2008)
work page 2008
-
[41]
Quantum machine learning beyond kernel methods,
S. Jerbi, L. J. Fiderer, H. Poulsen Nautrup, J. M. K¨ ubler, H. J. Briegel, and V. Dunjko, “Quantum machine learning beyond kernel methods,”Nat. Commun., vol. 14, no. 1, p. 517, 2023
work page 2023
-
[42]
New results in linear filtering and prediction theory,
R. E. Kalman and R. S. Bucy, “New results in linear filtering and prediction theory,” J. Basic Eng., vol. 83, pp. 95–108, 1961
work page 1961
-
[43]
Gener- alization of a Fundamental Matrix
J. G. Kemeny and J. L. Snell,Finite Markov Chains: With a New Appendix “Gener- alization of a Fundamental Matrix”, ser. Undergraduate Texts in Mathematics. New York, NY, USA: Springer, 1983
work page 1983
-
[44]
E. B. Lee and L. Markus,Foundations of Optimal Control Theory. New York, NY, USA: Wiley, 1967
work page 1967
-
[45]
Y. Liu, “Investigation of Viterbi algorithm performance on part-of-speech tagger of nat- ural language processing,” in2017 Int. Conf. Comput. Syst., Electron. Control (ICC- SEC), 2017, pp. 1430–1433
work page 2017
-
[46]
X.-Y. Li, Q.-S. Zhu, Y. Hu, H. Wu, G.-W. Yang, L.-H. Yu, and G. Chen, “A new quantum machine learning algorithm: Split hidden quantum Markov model inspired by quantum conditional master equation,”Quantum, vol. 8, p. 1232, 2024
work page 2024
-
[47]
Lu: Quantum Markov chain and classical random sequences
Y.G. Lu: Quantum Markov chain and classical random sequences. Nagoya Math. J., 139, p.173–183 (1995)
work page 1995
-
[48]
Lou, H. (1995). Implementing the Viterbi algorithm. IEEE Signal Process. Mag., 12, 42-52. 31
work page 1995
-
[49]
”Spectral order automorphisms of the spaces of Hilbert space effects and observables
Moln´ ar, Lajos, and PeterˇSemrl. ”Spectral order automorphisms of the spaces of Hilbert space effects and observables. ” Letters in Mathematical Physics 80.3 (2007): 239-255
work page 2007
-
[50]
Mitchell,Machine Learning, 1st ed
T. Mitchell,Machine Learning, 1st ed. New York: McGraw-Hill, 1997
work page 1997
-
[51]
Hidden quantum Markov models and non- adaptive read-out of many-body states,
A. Monras, A. Beige, and K. Wiesner, “Hidden quantum Markov models and non- adaptive read-out of many-body states,”Appl. Math. Comput. Sci., vol. 3, no. 1, pp. 93–122, 2011
work page 2011
-
[52]
A systematic review of hidden Markov models and their applications,
B. Mor, S. Garhwal, and A. Kumar, “A systematic review of hidden Markov models and their applications,”Arch. Comput. Methods Eng., vol. 28, no. 3, 2021
work page 2021
-
[53]
Implementation and learning of quantum hidden Markov models,
V. Markov, V. Rastunkov, A. Deshmukh, D. Fry, and C. Stefanski, “Implementation and learning of quantum hidden Markov models,”arXiv preprint arXiv:2212.03796, 2022
-
[54]
Entangled hidden Markov models,
A. Souissi and E. G. Soueidi, “Entangled hidden Markov models,”Chaos, Solitons & Fractals, vol. 174, p. 113804, 2023
work page 2023
-
[55]
Von Neumann,Mathematical Foundations of Quantum Mechanics: New Edition
J. Von Neumann,Mathematical Foundations of Quantum Mechanics: New Edition. Princeton, NJ, USA: Princeton Univ. Press, 2018
work page 2018
-
[56]
M. A. Nielsen and I. L. Chuang,Quantum Computation and Quantum Information. Cambridge: Cambridge University Press, 2000
work page 2000
-
[57]
Ohst, T. A., Zhang, S., Nguyen, H. C., Pl´ avala, M., Quintino, M. T. (2026). Character- ising memory in quantum channel discrimination via constrained separability problems. Quantum, 10, 1988
work page 2026
-
[58]
Description of a quantum convolutional code,
H. Ollivier and J.-P. Tillich, “Description of a quantum convolutional code,”Phys. Rev. Lett., vol. 91, p. 177902, 2003
work page 2003
-
[59]
Quantum convolutional codes: fundamentals,
H. Ollivier and J.-P. Tillich, “Quantum convolutional codes: fundamentals,”IEEE Trans. Inf. Theory, vol. 52, no. 9, pp. 3792–3810, 2006
work page 2006
-
[60]
Efficient ML decoding for quantum convolutional codes,
P. Tan and J. Li, “Efficient ML decoding for quantum convolutional codes,”IEEE Commun. Lett., vol. 14, no. 12, pp. 1101–1103, 2010
work page 2010
-
[61]
A quantum algorithm for Viterbi decoding of classical convolutional codes,
J. R. Grice and D. A. Meyer, “A quantum algorithm for Viterbi decoding of classical convolutional codes,”Quantum Inf. Process., vol. 14, no. 10, pp. 3615–3640, 2015
work page 2015
-
[62]
M. M. Wilde, “Quantum convolutional codes,” inQuantum Error Correction, Cam- bridge University Press, Cambridge, 2013, ch. 9, pp. 261–293
work page 2013
-
[63]
Tabanera-Bravo, J., Godec, A., Purely quantum memory in closed systems observed via imperfect measurements. Quantum, 9, (2025) 1938
work page 2025
-
[64]
Quantum simulation for high-energy physics,
C. W. Baueret al., “Quantum simulation for high-energy physics,”PRX Quantum, vol. 4, no. 2, p. 027001, 2023. 32
work page 2023
-
[65]
A tutorial on hidden Markov models and selected applications in speech recognition,
L. R. Rabiner, “A tutorial on hidden Markov models and selected applications in speech recognition,”Proc. IEEE, vol. 77, no. 2, pp. 257–286, 2002
work page 2002
-
[66]
H. H. Rosenbrock,State-Space and Multivariable Theory, vol. 3. Hoboken, NJ, USA: Wiley, 1970
work page 1970
-
[67]
A. Schonhuth, “Simple and efficient solution of the identifiability problem for hidden Markov sources and quantum random walks,” inProc. Int. Symp. Inf. Theory Appl., 2008, pp. 1–6
work page 2008
-
[68]
H. Shi, Y. Qin, Y. Wang, H. Bai, and X. Zhou, “An improved Viterbi algorithm for adaptive instantaneous angular speed estimation and its application into the machine fault diagnosis,”IEEE Trans. Instrum. Meas., vol. 70, pp. 1–11, 2021
work page 2021
-
[69]
Conglomeration of deep neural network and quantum learning for object detection: Status quo review,
P. K. Sinha and R. Marimuthu, “Conglomeration of deep neural network and quantum learning for object detection: Status quo review,”Knowl.-Based Syst., vol. 288, p. 111480, 2024
work page 2024
-
[70]
Matrix product states as observations of entangled hidden Markov models,
A. Souissi, “Matrix product states as observations of entangled hidden Markov models,” J. Stat. Phys., vol. 192, p. 88, 2025
work page 2025
-
[71]
Causal Architecture in Hidden Quantum Markov Models
Souissi, A., Barhoumi, A., Causal Architecture in Hidden Quantum Markov Models. arXiv preprint arXiv:2602.19120 (2026)
work page internal anchor Pith review Pith/arXiv arXiv 2026
-
[72]
Learning hidden quantum Markov models,
S. Srinivasan, G. Gordon, and B. Boots, “Learning hidden quantum Markov models,” inInt. Conf. Artif. Intell. Statist., Lanzarote, Spain, 2017
work page 2017
-
[73]
An introduction to quantum machine learning,
M. Schuld, I. Sinayskiy, and F. Petruccione, “An introduction to quantum machine learning,”Contemp. Phys., vol. 56, no. 2, pp. 172–185, 2015
work page 2015
-
[74]
Scalet, S. O., Capel, A., Chowdhury, A. N., Fawzi, H., Fawzi, O., Kim, I. H., Tikku, A. Classical Estimation of the Free Energy and Quantum Gibbs Sampling from the Markov Entropy Decomposition. arXiv preprint arXiv:2504.17405 (2025)
-
[75]
Quantum Markovian subsystems: invariance, attractivity, and control,
F. Ticozzi and L. Viola, “Quantum Markovian subsystems: invariance, attractivity, and control,”IEEE Trans. Autom. Control, vol. 53, no. 9, pp. 2048–2063, 2008
work page 2048
-
[76]
Taranto, P., Elliott, T. J., Milz, S. Hidden quantum memory: Is memory there when somebody looks?. Quantum, 7, (2023) 991
work page 2023
-
[77]
Error bounds for convolutional codes and an asymptotically optimum de- coding algorithm,
A. Viterbi, “Error bounds for convolutional codes and an asymptotically optimum de- coding algorithm,”IEEE Trans. Inf. Theory, vol. 13, no. 2, pp. 260–269, 2003
work page 2003
-
[78]
Lumpable hidden Markov models–model reduc- tion and reduced complexity filtering,
L. White, R. Mahony, and G. Brushe, “Lumpable hidden Markov models–model reduc- tion and reduced complexity filtering,”IEEE Trans. Autom. Control, vol. 45, no. 12, pp. 2297–2306, Dec. 2000
work page 2000
-
[79]
W. M. Wonham,Linear Multivariable Control: A Geometric Approach. New York, NY, USA: Springer, 1979. 33
work page 1979
-
[80]
Yang, C., Florido-Llin` as, M., Gu, M., Elliott, T. J. Dimension reduction in quantum sampling of stochastic processes. npj Quantum Information, 11(1), (2025). 34
work page 2025
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