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Adiabatic quantum state generation and statistical zero knowledge

Published: 09 June 2003 Publication History

Abstract

The design of new quantum algorithms has proven to be an extremely difficult task. This paper considers a different approach to the problem, by studying the problem of 'quantum state generation'.We first show that any problem in Statistical Zero Knowledge (including eg. discrete log, quadratic residuosity and gap closest vector in a lattice) can be reduced to an instance of the quantum state generation problem. Having shown the generality of the state generation problem, we set the foundations for a new paradigm for quantum state generation. We define 'Adiabatic State Generation' (ASG), which is based on Hamiltonians instead of unitary gates. We develop tools for ASG including a very general method for implementing Hamiltonians (The sparse Hamiltonian lemma), and ways to guarantee non negligible spectral gaps (The jagged adiabatic path lemma). We also prove that ASG is equivalent in power to state generation in the standard quantum model. After setting the foundations for ASG, we show how to apply our techniques to generate interesting superpositions related to Markov chains.The ASG approach to quantum algorithms provides intriguing links between quantum computation and many different areas: the analysis of spectral gaps and groundstates of Hamiltonians in physics, rapidly mixing Markov chains, statistical zero knowledge, and quantum random walks. We hope that these links will bring new insights and methods into quantum algorithms.

References

[1]
S. Aaronson, Quantum lower bound for the collision problem. STOC 2002, pp. 635--642
[2]
D. Aharonov and A. Ta-Shma. quant-ph/0210077. A longer version of this paper.
[3]
D. Aharonov, A simple proof that Toffoli and Hadamard are quantum universal, quant-ph 0301040
[4]
N. Alon, Eigenvalues and Expanders. Combinatorica 6(1986), pp. 83--96.
[5]
N. Alon and J. Spencer, The Probabilistic Method. 1991.
[6]
D. Applegate and R. Kannan, Sampling and integration of near log-concave functions, STOC 1991, pp. 156--163
[7]
M. Born, V. Fock and B. des Adiabatensatzes. Z. Phys. 51, pp. 165--169, 1928
[8]
R. Bubley and M. Dyer, Faster random generation of linear extensions, SODA 1998, pp. 350--354.
[9]
A. M. Childs, R. Cleve, E. Deotto, E. Farhi, S. Gutmann and D. A. Spielman, Exponential algorithmic speedup by quantum walk, quant-ph/0209131
[10]
A. M. Childs, E. Deotto, E. Farhi, J. Goldstone, S. Gutmann, A. J. Landahl, Quantum search by measurement, Phys. Rev. A 66, 032314 (2002)
[11]
A. M. Childs, E. Farhi, J. Goldstone and S. Gutmann, Finding cliques by quantum adiabatic evolution, quant-ph/0012104.
[12]
A. M. Childs, E. Farhi and S. Gutmann, An example of the difference between quantum and classical random walks, quant-ph/0103020. Also, E. Farhi and S. Gutmann, Quantum computation and decision Trees, quant-ph/9706062
[13]
W. van Dam and S. Hallgren, Efficient quantum algorithms for Shifted Quadratic Character Problems, quant-ph/0011067
[14]
W. van Dam, M. Mosca and U. V. Vazirani, How Powerful is Adiabatic Quantum Computation? FOCS 2001, pp 279--287
[15]
W. van Dam and U. Vazirani, More on the power of adiabatic computation, unpublished, 2001
[16]
E. Farhi, J. Goldstone and S. Gutmann, A numerical study of the performance of a quantum adiabatic evolution algorithm for satisfiability, quant-ph/0007071.
[17]
E. Farhi, J. Goldstone, S. Gutmann, J. Lapan, A. Lundgren and D. Preda, A quantum adiabatic evolution algorithm applied to random instances of an NP-complete problem, Science 292, 472 (2001), quant-ph/0104129.
[18]
E. Farhi, J. Goldstone and S. Gutmann, Quantum Adiabatic Evolution Algorithms with Different Paths, quant-ph/0208135
[19]
E. Farhi, J. Goldstone, S. Gutmann and M. Sipser, Quantum Computation by Adiabatic Evolution, quant-ph/0001106
[20]
O. Goldreich and E. Kushilevitz, A Perfect Zero-Knowledge Proof System for a Problem Equivalent to the Discrete Logarithm, Journal of Cryptology, 6(2), pp. 97--116, 1993
[21]
O. Goldreich and S. Goldwasser, On the limits of non-approximability of lattice problems, STOC 1998, pp. 1--9
[22]
O. Goldreich, A. Sahai and S. Vadhan, Honest-Verifier Statistical Zero-Knowledge Equals General Statistical Zero-Knowledge, STOC 1998 pp. 399--408
[23]
S. Goldwasser, S. Micali and C. Rackoff, The Knowledge Complexity of Interactive Proof Systems, SIAM J Comput, 18 (1), pp. 186--208, 1989
[24]
M. Grotschel and L. Lovasz, Combinatorial Optimization: A Survey, Handbook of Combinatorics, North-Holland, 1993
[25]
L. Grover, Quantum Mechanics helps in searching for a needle in a haystack, Phys. Rev. Letters, July 14, 1997
[26]
L. Grover and T. Rudolph, Creating superpositions that correspond to efficiently integrable probability distributions, quant-ph/0208112
[27]
S. Hallgren, Polynomial-Time Quantum Algorithms for Pell's Equation and the Principal Ideal Problem, STOC 2002
[28]
M. Jerrum and A. Sinclair, E. Vigoda A Polynomial-Time Approximation Algorithm for the permanent of a matrix with non-negative entries, STOC 2000
[29]
M. Jerrum and A. Sinclair, The Markov chain Monte Carlo method: an approach to approximate counting and integration. in Approximation Algorithms for NP-hard Problems, D.S. Hochbaum ed., 1996.
[30]
T. Kato, On the adiabatic theorem of Quantum Mechanics, J. Phys. Soc. Jap. 5, pp. 435--439(1951)
[31]
A. Yu. Kitaev, Quantum measurements and the Abelian Stabilizer Problem, quant-ph/9511026
[32]
J. Kobler, U. Schoning and J. Turan, The Graph Isomorphism Problem. Birkjauser, 1993.
[33]
Landau and Lifshitz, Quantum Mechanics (Second edition of English Translation), Pergamon press, 1965
[34]
L. Lovasz: Random Walks on Graphs: A Survey. Combinatorics, Paul Erdos is Eighty, Vol. 2, ed. D. Miklos, V. T. Sos, T. Szonyi, 1996, pp. 353--398.
[35]
Messiah, Quantum Mechanics, John Willey & Sons (1958)
[36]
M. A. Nielsen and I. Chuang, Quantum Computation and Information 2000
[37]
See A. Peres, Quantum Theory: Concepts and methods, 1995
[38]
J. Roland and N. Cerf, Quantum Search by Local Adiabatic Evolution Phys. Rev. A 65, 042308 (2002)
[39]
A. Sahai and S. P. Vadhan, A Complete Promise Problem for Statistical Zero-Knowledge, FOCS 1997 pp. 448--457
[40]
P. W. Shor: Polynomial-Time Algorithms for Prime Factorization and Discrete Logarithms on a Quantum Computer. SIAM J. Comput. 26(5) 1997, pp. 1484--1509
[41]
W. L. Spitzer and S. Starr, Improved bounds on the spectral gap above frustration free ground states of quantum spin chains, math-ph/0212029
[42]
Y. Shi, Both Toffoli and Controlled-NOT need little help to do universal quantum computation, quant-ph/0205115
[43]
S. Vadhan, A Study of Statistical Zero Knowledge Proofs, PhD Thesis, M.I.T., 1999
[44]
J. Watrous: Quantum algorithms for solvable groups, STOC 2001, pp. 60--67.

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      cover image ACM Conferences
      STOC '03: Proceedings of the thirty-fifth annual ACM symposium on Theory of computing
      June 2003
      740 pages
      ISBN:1581136749
      DOI:10.1145/780542
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      Published: 09 June 2003

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      Author Tags

      1. Hamiltonian
      2. Markov chains
      3. quantum adiabatic computation
      4. quantum sampling
      5. spectral gap
      6. state generation
      7. statistical zero knowledge

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