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[Author] Xiao YU(7hit)

1-7hit
  • An Integrated Design of Multipath Routing with Failure Survivability in MPLS Networks

    Xiao YU  Gang FENG  Kheng Leng GAY  Chee Kheong SIEW  

     
    PAPER-Network

      Vol:
    E90-B No:4
      Page(s):
    856-865

    Multipath routing employs multiple parallel paths between the source and destination for a connection request to improve resource utilization of a network. In this paper, we present an integrated design of multipath routing with delay constraints and failure survivability in MPLS networks. By combining the failure survivability schemes into the multipath routing algorithms, path protection or restoration policies will enable the network to accommodate link failures and at the same time achieve significant improvement on network resource utilization. We propose a number of multipath routing algorithms, working-backup path selection and bandwidth allocation schemes. We evaluate the performance of the proposed schemes in terms of call blocking probability, network resource utilization and load balancing factor. Extensive simulation results validate the effectiveness of the proposed schemes. In particular, we compare these multipath schemes to the existing failure recovery schemes that mostly focus on single path routing. The results demonstrate that the proposed integrated design framework can provide effective network failure survivability, and also achieve better load balancing and/or higher network resource utilization.

  • A Hybrid Feature Selection Method for Software Fault Prediction

    Yiheng JIAN  Xiao YU  Zhou XU  Ziyi MA  

     
    PAPER-Software Engineering

      Pubricized:
    2019/07/09
      Vol:
    E102-D No:10
      Page(s):
    1966-1975

    Fault prediction aims to identify whether a software module is defect-prone or not according to metrics that are mined from software projects. These metric values, also known as features, may involve irrelevance and redundancy, which hurt the performance of fault prediction models. In order to filter out irrelevant and redundant features, a Hybrid Feature Selection (abbreviated as HFS) method for software fault prediction is proposed. The proposed HFS method consists of two major stages. First, HFS groups features with hierarchical agglomerative clustering; second, HFS selects the most valuable features from each cluster to remove irrelevant and redundant ones based on two wrapper based strategies. The empirical evaluation was conducted on 11 widely-studied NASA projects, using three different classifiers with four performance metrics (precision, recall, F-measure, and AUC). Comparison with six filter-based feature selection methods demonstrates that HFS achieves higher average F-measure and AUC values. Compared with two classic wrapper feature selection methods, HFS can obtain a competitive prediction performance in terms of average AUC while significantly reducing the computation cost of the wrapper process.

  • Fast Decoding Algorithm for Low-Density Parity-Check Codes

    Dan WANG  Li PING  Xiao Yu HU   Xin Mei WANG  

     
    LETTER-Fundamental Theories for Communications

      Vol:
    E88-B No:11
      Page(s):
    4368-4369

    A fast decoding algorithm for low-density parity-check codes is presented based on graph decomposition and two-way message passing schedule. Simulations show that the convergence speed of the proposed algorithm is about twice that of the conventional belief propagation algorithm.

  • Improved Direction-of-Arrival Estimation for Uncorrelated and Coherent Signals in the Presence of Multipath Propagation

    Xiao Yu LUO  Ping WEI  Lu GAN  Hong Shu LIAO  

     
    LETTER-Digital Signal Processing

      Vol:
    E98-A No:3
      Page(s):
    881-884

    Recently, Gan and Luo have proposed a direction-of-arrival estimation method for uncorrelated and coherent signals in the presence of multipath propagation [3]. In their method, uncorrelated and coherent signals are distinguished by rotational invariance techniques and the property of the moduli of eigenvalues. However, due to the limitation of finite number of sensors, the pseudo-inverse matrix derived in this method is an approximate one. When the number of sensors is small, the approximation error is large, which adversely affects the property of the moduli of eigenvalues. Consequently, the method in [3] performs poorly in identifying uncorrelated signals under such circumstance. Moreover, in cases of small number of snapshots and low signal to noise ratio, the performance of their method is poor as well. Therefore, in this letter we first study the approximation in [3] and then propose an improved method that performs better in distinguishing between uncorrelated signals and coherent signals and in the aforementioned two cases. The simulation results demonstrate the effectiveness and efficiency of the proposed method.

  • A High-Efficiency FIR Filter Design Combining Cyclic-Shift Synthesis with Evolutionary Optimization

    Xiangdong HUANG  Jingwen XU  Jiexiao YU  Yu LIU  

    This paper has been cancelled due to violation of duplicate submission policy on IEICE Transactions on Communications
     
    PAPER-Fundamental Theories for Communications

      Pubricized:
    2018/08/13
      Vol:
    E102-B No:2
      Page(s):
    266-276

    To optimize the performance of FIR filters that have low computation complexity, this paper proposes a hybrid design consisting of two optimization levels. The first optimization level is based on cyclic-shift synthesis, in which all possible sub filters (or windowed sub filters) with distinct cycle shifts are averaged to generate a synthesized filter. Due to the fact that the ripples of these sub filters' transfer curves can be individually compensated, this synthesized filter attains improved performance (besides two uprushes occur on the edges of a transition band) and thus this synthesis actually plays the role of ‘natural optimization’. Furthermore, this synthesis process can be equivalently summarized into a 3-step closed-form procedure, which converts the multi-variable optimization into a single-variable optimization. Hence, to suppress the uprushes, what the second optimization level (by Differential Evolution (DE) algorithm) needs to do is no more than searching for the optimum transition point which incurs only minimal complexity . Owning to the combination between the cyclic-shift synthesis and DE algorithm, unlike the regular evolutionary computing schemes, our hybrid design is more attractive due to its narrowed search space and higher convergence speed . Numerical results also show that the proposed design is superior to the conventional DE design in both filter performance and design efficiency, and it is comparable to the Remez design.

  • Direction-of-Arrival Estimation Using an Array Covariance Vector and a Reweighted l1 Norm

    Xiao Yu LUO  Xiao chao FEI  Lu GAN  Ping WEI  Hong Shu LIAO  

     
    LETTER-Digital Signal Processing

      Vol:
    E98-A No:9
      Page(s):
    1964-1967

    We propose a novel sparse representation-based direction-of-arrival (DOA) estimation method. In contrast to those that approximate l0-norm minimization by l1-norm minimization, our method designs a reweighted l1 norm to substitute the l0 norm. The capability of the reweighted l1 norm to bridge the gap between the l0- and l1-norm minimization is then justified. In addition, an array covariance vector without redundancy is utilized to extend the aperture. It is proved that the degree of freedom is increased as such. The simulation results show that the proposed method performs much better than l1-type methods when the signal-to-noise ratio (SNR) is low and when the number of snapshots is small.

  • Sparsity Preserving Embedding with Manifold Learning and Discriminant Analysis

    Qian LIU  Chao LAN  Xiao Yuan JING  Shi Qiang GAO  David ZHANG  Jing Yu YANG  

     
    LETTER-Pattern Recognition

      Vol:
    E95-D No:1
      Page(s):
    271-274

    In the past few years, discriminant analysis and manifold learning have been widely used in feature extraction. Recently, the sparse representation technique has advanced the development of pattern recognition. In this paper, we combine both discriminant analysis and manifold learning with sparse representation technique and propose a novel feature extraction approach named sparsity preserving embedding with manifold learning and discriminant analysis. It seeks an embedded space, where not only the sparse reconstructive relations among original samples are preserved, but also the manifold and discriminant information of both original sample set and the corresponding reconstructed sample set is maintained. Experimental results on the public AR and FERET face databases show that our approach outperforms relevant methods in recognition performance.