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Biologically-inspired stochastic vector matching for noise-robust information processing

Author

Listed:
  • Ueda, Michihito
  • Ueda, Masahiro
  • Takagi, Hiroaki
  • Sato, Masayuki J.
  • Yanagida, Toshio
  • Yamashita, Ichiro
  • Setsune, Kentaro

Abstract

“End of Moore’s Law” has recently become a topic. Keeping the signal-to-noise ratio (SNR) at the same level in the future will surely increase the energy density of smaller-sized transistors. Lowering the operating voltage will prevent this, but the SNR would inevitably degrade. Meanwhile, biological systems such as cells and brains possess robustness against noise in their information processing in spite of the strong influence of stochastic thermal noise. Inspired by the information processing of organisms, we propose a stochastic computing model to acquire information from noisy signals. Our model is based on vector matching, in which the similarities between the input vector carrying external noisy signals and the reference vectors prepared in advance as memorized templates are evaluated in a stochastic manner. This model exhibited robustness against the noise strength and its performance was improved by addition of noise with an appropriate strength, which is similar to a phenomenon observed in stochastic resonance. Because the stochastic vector matching we propose here has robustness against noise, it is a candidate for noisy information processing that is driven by stochastically-operating devices with low energy consumption in future. Moreover, the stochastic vector matching may be applied to memory-based information processing like that of the brain.

Suggested Citation

  • Ueda, Michihito & Ueda, Masahiro & Takagi, Hiroaki & Sato, Masayuki J. & Yanagida, Toshio & Yamashita, Ichiro & Setsune, Kentaro, 2008. "Biologically-inspired stochastic vector matching for noise-robust information processing," Physica A: Statistical Mechanics and its Applications, Elsevier, vol. 387(16), pages 4475-4481.
  • Handle: RePEc:eee:phsmap:v:387:y:2008:i:16:p:4475-4481
    DOI: 10.1016/j.physa.2008.02.077
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    Cited by:

    1. Ueda, Michihito, 2010. "Improvement of signal-to-noise ratio by stochastic resonance in sigmoid function threshold systems, demonstrated using a CMOS inverter," Physica A: Statistical Mechanics and its Applications, Elsevier, vol. 389(10), pages 1978-1985.

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