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[Keyword] data classification(5hit)

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  • RbWL: Recency-Based Static Wear Leveling for Lifetime Extension and Overhead Reduction in NAND Flash Memory Systems

    Sang-Ho HWANG  Jong Wook KWAK  

     
    LETTER-Software System

      Pubricized:
    2018/07/09
      Vol:
    E101-D No:10
      Page(s):
    2518-2522

    In this letter, we propose a static wear leveling technique, called Recency-based Wear Leveling (RbWL). The basic idea of RbWL is to execute static wear leveling at minimum levels, because the frequent migrations of cold data by static wear leveling cause significant overhead in a NAND flash memory system. RbWL adjusts the execution frequency according to a threshold value that reflects the lifetime difference of the hot/cold blocks and the total lifetime of the NAND flash memory system. The evaluation results show that RbWL improves the lifetime of NAND flash memory systems by 52%, and it also reduces the overhead of wear leveling from 8% to 42% and from 13% to 51%, in terms of the number of erase operations and the number of page migrations of valid pages, respectively, compared with other algorithms.

  • Distance between Two Classes: A Novel Kernel Class Separability Criterion

    Jiancheng SUN  Chongxun ZHENG  Xiaohe LI  

     
    LETTER

      Vol:
    E92-D No:7
      Page(s):
    1397-1400

    With a Gaussian kernel function, we find that the distance between two classes (DBTC) can be used as a class separability criterion in feature space since the between-class separation and the within-class data distribution are taken into account impliedly. To test the validity of DBTC, we develop a method of tuning the kernel parameters in support vector machine (SVM) algorithm by maximizing the DBTC in feature space. Experimental results on the real-world data show that the proposed method consistently outperforms corresponding hyperparameters tuning methods.

  • RK-Means Clustering: K-Means with Reliability

    Chunsheng HUA  Qian CHEN  Haiyuan WU  Toshikazu WADA  

     
    PAPER-Image Recognition, Computer Vision

      Vol:
    E91-D No:1
      Page(s):
    96-104

    This paper presents an RK-means clustering algorithm which is developed for reliable data grouping by introducing a new reliability evaluation to the K-means clustering algorithm. The conventional K-means clustering algorithm has two shortfalls: 1) the clustering result will become unreliable if the assumed number of the clusters is incorrect; 2) during the update of a cluster center, all the data points belong to that cluster are used equally without considering how distant they are to the cluster center. In this paper, we introduce a new reliability evaluation to K-means clustering algorithm by considering the triangular relationship among each data point and its two nearest cluster centers. We applied the proposed algorithm to track objects in video sequence and confirmed its effectiveness and advantages.

  • A Novel Rough Neural Network and Its Training Algorithm

    Sheng-He SUN  Xiao-Dan MEI  Zhao-Li ZHANG  

     
    LETTER-Biocybernetics, Neurocomputing

      Vol:
    E85-D No:2
      Page(s):
    426-431

    A novel rough neural network (RNN) structure and its application are proposed in this paper. We principally introduce its architecture and training algorithms: the genetic training algorithm (GA) and the tabu search training algorithm (TSA). We first compare RNN with the conventional NN trained by the BP algorithm in two-dimensional data classification. Then we compare RNN with NN by the same training algorithm (TSA) in functional approximation. Experiment results show that the proposed RNN is more effective than NN, not only in computation time but also in performance.

  • Multi-clustering Network for Data Classification System

    Rafiqul ISLAM  Yoshikazu MIYANAGA  Koji TOCHINAI  

     
    PAPER-Digital Signal Processing

      Vol:
    E80-A No:9
      Page(s):
    1647-1654

    This paper presents a new multi-clustering network for the purpose of intelligent data classification. In this network, the first layer is a self-organized clustering layer and the second layer is a restricted clustering layer with a neighborhood mechanism. A new clustering algorithm is developed in this system for the efficiently use of parallel processors. This parallel algorithm enables the nodes of this network to be independently processed in order to minimize data communication load among processors. Using the parallel processors, the quite low calculation cost can be realized among the conventional networks. For example, a 4-processor parallel computing system has shown its ability to reduce the time taken for data classification to 26.75% of a single processor system without declining its performance.