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[Author] Jun ZHOU(8hit)

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  • On Random Walk Based Weighted Graph Sampling

    Jiajun ZHOU  Bo LIU  Lu DENG  Yaofeng CHEN  Zhefeng XIAO  

     
    LETTER-Fundamentals of Information Systems

      Pubricized:
    2017/11/01
      Vol:
    E101-D No:2
      Page(s):
    535-538

    Graph sampling is an effective method to sample a representative subgraph from a large-scale network. Recently, researches have proven that several classical sampling methods are able to produce graph samples but do not well match the distribution of the graph properties in the original graph. On the other hand, the validation of these sampling methods and the scale of a good graph sample have not been examined on weighted graphs. In this paper, we propose the weighted graph sampling problem. We consider the proper size of a good graph sample, propose novel methods to verify the effectiveness of sampling and test several algorithms on real datasets. Most notably, we get new practical results, shedding a new insight on weighted graph sampling. We find weighted random walk performs best compared with other algorithms and a graph sample of 20% is enough for weighted graph sampling.

  • An Interactive and Reductive Graph Processing Library for Edge Computing in Smart Society

    Jun ZHOU  Masaaki KONDO  

     
    PAPER

      Pubricized:
    2022/11/07
      Vol:
    E106-D No:3
      Page(s):
    319-327

    Due to the limitations of cloud computing on latency, bandwidth and data confidentiality, edge computing has emerged as a novel location-aware paradigm to provide them with more processing capacity to improve the computing performance and quality of service (QoS) in several typical domains of human activity in smart society, such as social networks, medical diagnosis, telecommunications, recommendation systems, internal threat detection, transports, Internet of Things (IoT), etc. These application domains often handle a vast collection of entities with various relationships, which can be naturally represented by the graph data structure. Graph processing is a powerful tool to model and optimize complex problems in which the graph-based data is involved. In view of the relatively insufficient resource provisioning of the portable terminals, in this paper, for the first time to our knowledge, we propose an interactive and reductive graph processing library (GPL) for edge computing in smart society at low overhead. Experimental evaluation is conducted to indicate that the proposed GPL is more user-friendly and highly competitive compared with other established systems, such as igraph, NetworKit and NetworkX, based on different graph datasets over a variety of popular algorithms.

  • Geometrical Optics Analysis for the Beam Wave Propagation in Dielectric Tapered Waveguides

    Masahiro HASHIMOTO  Xiao-Jun ZHOU  

     
    LETTER

      Vol:
    E74-C No:9
      Page(s):
    2938-2940

    A method of calculating geometrical optics fields in dielectric tapered waveguides excited at the input ends by a monochromatic Gaussian beam light is presented. It is shown that field distributions expected at the output ends of waveguides can be determined without calculating fields at intermediate steps of propagation between the input and output ends. Examples of multimode propagation and monomode propagation in a linearly tapered waveguide are given.

  • A 16/32Gbps Dual-Mode SerDes Transmitter with Linearity Enhanced SST Driver

    Li DING  Jing JIN  Jianjun ZHOU  

     
    PAPER

      Pubricized:
    2022/05/13
      Vol:
    E105-A No:11
      Page(s):
    1443-1449

    This brief presents A 16/32Gb/s dual-mode transmitter including a linearity calibration loop to maintain amplitude linearity of the SST driver. Linearity detection and corresponding master-slave power supply circuits are designed to implement the proposed architecture. The proposed transmitter is manufactured in a 22nm FD-SOI process. The linearity calibration loop reduces the peak INL errors of the transmitter by 50%, and the RLM rises from 92.4% to 98.5% when the transmitter is in PAM4 mode. The chip area of the transmitter is 0.067mm2, while the proposed linearity enhanced part is 0.05×0.02mm2 and the total power consumption is 64.6mW with a 1.1V power supply. The linearity calibration loop can be detached from the circuit without consuming extra power.

  • Weighted Generalized Hesitant Fuzzy Sets and Its Application in Ensemble Learning Open Access

    Haijun ZHOU  Weixiang LI  Ming CHENG  Yuan SUN  

     
    PAPER-Fundamentals of Information Systems

      Pubricized:
    2024/01/22
      Vol:
    E107-D No:5
      Page(s):
    694-703

    Traditional intuitionistic fuzzy sets and hesitant fuzzy sets will lose some information while representing vague information, to avoid this problem, this paper constructs weighted generalized hesitant fuzzy sets by remaining multiple intuitionistic fuzzy values and giving them corresponding weights. For weighted generalized hesitant fuzzy elements in weighted generalized hesitant fuzzy sets, the paper defines some basic operations and proves their operation properties. On this basis, the paper gives the comparison rules of weighted generalized hesitant fuzzy elements and presents two kinds of aggregation operators. As for weighted generalized hesitant fuzzy preference relation, this paper proposes its definition and computing method of its corresponding consistency index. Furthermore, the paper designs an ensemble learning algorithm based on weighted generalized hesitant fuzzy sets, carries out experiments on 6 datasets in UCI database and compares with various classification algorithms. The experiments show that the ensemble learning algorithm based on weighted generalized hesitant fuzzy sets has better performance in all indicators.

  • SDChannelNets: Extremely Small and Efficient Convolutional Neural Networks

    JianNan ZHANG  JiJun ZHOU  JianFeng WU  ShengYing YANG  

     
    LETTER-Biocybernetics, Neurocomputing

      Pubricized:
    2019/09/10
      Vol:
    E102-D No:12
      Page(s):
    2646-2650

    Convolutional neural networks (CNNS) have a strong ability to understand and judge images. However, the enormous parameters and computation of CNNS have limited its application in resource-limited devices. In this letter, we used the idea of parameter sharing and dense connection to compress the parameters in the convolution kernel channel direction, thus greatly reducing the number of model parameters. On this basis, we designed Shared and Dense Channel-wise Convolutional Networks (SDChannelNets), mainly composed of Depth-wise Separable SD-Channel-wise Convolution layer. The advantage of SDChannelNets is that the number of model parameters is greatly reduced without or with little loss of accuracy. We also introduced a hyperparameter that can effectively balance the number of parameters and the accuracy of a model. We evaluated the model proposed by us through two popular image recognition tasks (CIFAR-10 and CIFAR-100). The results showed that SDChannelNets had similar accuracy to other CNNs, but the number of parameters was greatly reduced.

  • Metacognitive Adaptation to Enhance Lifelong Language Learning

    Han WANG  Ruiliu FU  Xuejun ZHANG  Jun ZHOU  Qingwei ZHAO  

     
    LETTER-Natural Language Processing

      Pubricized:
    2022/10/06
      Vol:
    E106-D No:1
      Page(s):
    86-90

    Lifelong language learning (LLL) aims at learning new tasks and retaining old tasks in the field of NLP. LAMOL is a recent LLL framework following data-free constraints. Previous works have been researched based on LAMOL with additional computing with more time costs or new parameters. However, they still have a gap between multi-task learning (MTL), which is regarded as the upper bound of LLL. In this paper, we propose Metacognitive Adaptation (Metac-Adapt) almost without adding additional time cost and computational resources to make the model generate better pseudo samples and then replay them. Experimental results demonstrate that Metac-Adapt is on par with MTL or better.

  • Segmenting the Femoral Head and Acetabulum in the Hip Joint Automatically Using a Multi-Step Scheme

    Ji WANG  Yuanzhi CHENG  Yili FU  Shengjun ZHOU  Shinichi TAMURA  

     
    PAPER-Biological Engineering

      Vol:
    E95-D No:4
      Page(s):
    1142-1150

    We describe a multi-step approach for automatic segmentation of the femoral head and the acetabulum in the hip joint from three dimensional (3D) CT images. Our segmentation method consists of the following steps: 1) construction of the valley-emphasized image by subtracting valleys from the original images; 2) initial segmentation of the bone regions by using conventional techniques including the initial threshold and binary morphological operations from the valley-emphasized image; 3) further segmentation of the bone regions by using the iterative adaptive classification with the initial segmentation result; 4) detection of the rough bone boundaries based on the segmented bone regions; 5) 3D reconstruction of the bone surface using the rough bone boundaries obtained in step 4) by a network of triangles; 6) correction of all vertices of the 3D bone surface based on the normal direction of vertices; 7) adjustment of the bone surface based on the corrected vertices. We evaluated our approach on 35 CT patient data sets. Our experimental results show that our segmentation algorithm is more accurate and robust against noise than other conventional approaches for automatic segmentation of the femoral head and the acetabulum. Average root-mean-square (RMS) distance from manual reference segmentations created by experienced users was approximately 0.68 mm (in-plane resolution of the CT data).