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[Author] Hisanao AKIMA(6hit)

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  • Single Electron Random Number Generator

    Hisanao AKIMA  Shigeo SATO  Koji NAKAJIMA  

     
    LETTER-Electronic Circuits

      Vol:
    E87-C No:5
      Page(s):
    832-834

    A random number generator composed of single electron devices is presented. Due to stochastic behavior of electron tunneling process, single electron devices have intrinsic randomness. Using its randomness, a true random number generator can be implemented. Although fluctuation of device parameters degrades the performance of the proposed circuit, we show that the adjustment of the bias voltages can compensate the fluctuation.

  • Learning Rule for a Quantum Neural Network Inspired by Hebbian Learning

    Yoshihiro OSAKABE  Shigeo SATO  Hisanao AKIMA  Mitsunaga KINJO  Masao SAKURABA  

     
    PAPER-Fundamentals of Information Systems

      Pubricized:
    2020/10/30
      Vol:
    E104-D No:2
      Page(s):
    237-245

    Utilizing the enormous potential of quantum computers requires new and practical quantum algorithms. Motivated by the success of machine learning, we investigate the fusion of neural and quantum computing, and propose a learning method for a quantum neural network inspired by the Hebb rule. Based on an analogy between neuron-neuron interactions and qubit-qubit interactions, the proposed quantum learning rule successfully changes the coupling strengths between qubits according to training data. To evaluate the effectiveness and practical use of the method, we apply it to the memorization process of a neuro-inspired quantum associative memory model. Our numerical simulation results indicate that the proposed quantum versions of the Hebb and anti-Hebb rules improve the learning performance. Furthermore, we confirm that the probability of retrieving a target pattern from multiple learned patterns is sufficiently high.

  • Quantum Associative Memory with Quantum Neural Network via Adiabatic Hamiltonian Evolution

    Yoshihiro OSAKABE  Hisanao AKIMA  Masao SAKURABA  Mitsunaga KINJO  Shigeo SATO  

     
    PAPER-Fundamentals of Information Systems

      Pubricized:
    2017/08/09
      Vol:
    E100-D No:11
      Page(s):
    2683-2689

    There is increasing interest in quantum computing, because of its enormous computing potential. A small number of powerful quantum algorithms have been proposed to date; however, the development of new quantum algorithms for practical use remains essential. Parallel computing with a neural network has successfully realized certain unique functions such as learning and recognition; therefore, the introduction of certain neural computing techniques into quantum computing to enlarge the quantum computing application field is worthwhile. In this paper, a novel quantum associative memory (QuAM) is proposed, which is achieved with a quantum neural network by employing adiabatic Hamiltonian evolution. The memorization and retrieval procedures are inspired by the concept of associative memory realized with an artificial neural network. To study the detailed dynamics of our QuAM, we examine two types of Hamiltonians for pattern memorization. The first is a Hamiltonian having diagonal elements, which is known as an Ising Hamiltonian and which is similar to the cost function of a Hopfield network. The second is a Hamiltonian having non-diagonal elements, which is known as a neuro-inspired Hamiltonian and which is based on interactions between qubits. Numerical simulations indicate that the proposed methods for pattern memorization and retrieval work well with both types of Hamiltonians. Further, both Hamiltonians yield almost identical performance, although their retrieval properties differ. The QuAM exhibits new and unique features, such as a large memory capacity, which differs from a conventional neural associative memory.

  • SimpleZSL: Extremely Simple and Fast Zero-Shot Learning with Nearest Neighbor Classifiers

    Masayuki HIROMOTO  Hisanao AKIMA  Teruo ISHIHARA  Takuji YAMAMOTO  

     
    PAPER-Pattern Recognition

      Pubricized:
    2021/10/29
      Vol:
    E105-D No:2
      Page(s):
    396-405

    Zero-shot learning (ZSL) aims to classify images of unseen classes by learning relationship between visual and semantic features. Existing works have been improving recognition accuracy from various approaches, but they employ computationally intensive algorithms that require iterative optimization. In this work, we revisit the primary approach of the pattern recognition, ı.e., nearest neighbor classifiers, to solve the ZSL task by an extremely simple and fast way, called SimpleZSL. Our algorithm consists of the following three simple techniques: (1) just averaging feature vectors to obtain visual prototypes of seen classes, (2) calculating a pseudo-inverse matrix via singular value decomposition to generate visual features of unseen classes, and (3) inferring unseen classes by a nearest neighbor classifier in which cosine similarity is used to measure distance between feature vectors. Through the experiments on common datasets, the proposed method achieves good recognition accuracy with drastically small computational costs. The execution time of the proposed method on a single CPU is more than 100 times faster than those of the GPU implementations of the existing methods with comparable accuracies.

  • CMOS Majority Circuit with Large Fan-In

    Hisanao AKIMA  Yasuhiro KATAYAMA  Masao SAKURABA  Koji NAKAJIMA  Jordi MADRENAS  Shigeo SATO  

     
    PAPER-Electronic Circuits

      Vol:
    E99-C No:9
      Page(s):
    1056-1064

    Majority logic is quite important for various applications such as fault tolerant systems, threshold logic, spectrum spread coding, and artificial neural networks. The circuit implementation of majority logic is difficult when the number of inputs becomes large because the number of transistors becomes huge and serious delay would occur. In this paper, we propose a new majority circuit with large fan-in. The circuit is composed of ordinary CMOS transistors and the total number of transistors is approximately only 4N, where N is the total number of inputs. We confirmed a correct operation by using HSPICE simulation. The yield of the proposed circuit was evaluated with respect to N under the variations of device parameters by using Monte Carlo simulation.

  • Single Electron Stochastic Neural Network

    Hisanao AKIMA  Saiboku YAMADA  Shigeo SATO  Koji NAKAJIMA  

     
    PAPER

      Vol:
    E87-A No:9
      Page(s):
    2221-2226

    Single electron devices are ultra low power and extremely small devices, and suitable for implementation of large scale integrated circuits. Artificial neural networks (ANNs), which require a large number of transistors for being to be applied to practical use, is one of the possible applications of single electron devices. In order to simplify a single electron circuit configuration, we apply stochastic logic in which various complex operations can be done with basic logic gates. We design basic subcircuits of a single electron stochastic neural network, and confirm that backgate bias control and a redundant configuration are necessary for a feedback loop configuration by computer simulation based on Monte Carlo method. The proposed single electron circuit is well-suited for hardware implementation of a stochastic neural network because we can save circuit area and power consumption by using a single electron random number generator (RNG) instead of a conventional complementary metal oxide semiconductor (CMOS) RNG.