Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Chengdong Huang is active.

Publication


Featured researches published by Chengdong Huang.


Chaos | 2016

Correlation between weighted spectral distribution and average path length in evolving networks

Bo Jiao; Jian-mai Shi; Xiaoqun Wu; Yuanping Nie; Chengdong Huang; Jing Du; Ying Zhou; Ronghua Guo; Yerong Tao

The weighted spectral distribution (WSD) is a metric defined on the normalized Laplacian spectrum. In this study, synchronic random graphs are first used to rigorously analyze the metrics scaling feature, which indicates that the metric grows sublinearly as the network size increases, and the metrics scaling feature is demonstrated to be common in networks with Gaussian, exponential, and power-law degree distributions. Furthermore, a deterministic model of diachronic graphs is developed to illustrate the correlation between the slope coefficient of the metrics asymptotic line and the average path length, and the similarities and differences between synchronic and diachronic random graphs are investigated to better understand the correlation. Finally, numerical analysis is presented based on simulated and real-world data of evolving networks, which shows that the ratio of the WSD to the network size is a good indicator of the average path length.


Journal of Intelligent Manufacturing | 2015

A heuristic nonlinear operator for the aggregation of incomplete judgment matrices in group decision making

Bo Jiao; Ying Zhou; Jing Du; Chengdong Huang; Jun-hu Wang; Bo Li

The weighted-average operator and ordered-weighted-average operators are typically used in group decision making (GDM) problems to aggregate individual expert opinions to a collective opinion. However, the existing aggregation operators pay more attentions on the determination of the weights, and neglect the information about the relationship between the values being fused. In this paper, we develop a heuristic-nonlinear-aggregation (HNA) operator based on two metrics of similarity and consistency for the GDM based on incomplete judgment matrices. The similarity and consistency respectively measure the differences between a collective matrix and two optimum matrices, i.e. the optimum similarity matrix and the optimum consistency matrix, which can be calculated by quadratic programming models and the relationship between the values being fused. The validity and practicability of the HNA operator are illustrated by numerical examples.


Chinese Physics B | 2016

Stability of weighted spectral distribution in a pseudo tree-like network model*

Bo Jiao; Yuanping Nie; Chengdong Huang; Jing Du; Ronghua Guo; Fei Huang; Jian-mai Shi

The comparison of networks with different orders strongly depends on the stability analysis of graph features in evolving systems. In this paper, we rigorously investigate the stability of the weighted spectral distribution (i.e., a spectral graph feature) as the network order increases. First, we use deterministic scale-free networks generated by a pseudo tree-like model to derive the precise formula of the spectral feature, and then analyze the stability of the spectral feature based on the precise formula. Except for the scale-free feature, the pseudo tree-like model exhibits the hierarchical and small-world structures of complex networks. The stability analysis is useful for the classification of networks with different orders and the similarity analysis of networks that may belong to the same evolving system.


cyber-enabled distributed computing and knowledge discovery | 2015

Performance Evaluations of Graph Spectra on Evolving Systems

Bo Jiao; Yuanping Nie; Jing Du; Ying Zhou; Chengdong Huang; Xunlong Pang

Evolving complex networks are abundant in the real world, i.e., Networks with different sizes (number of nodes) may originate from the same evolving system. In this paper, we use some typical evolving models of complex networks to evaluate the performances of graph spectra. The experimental results verify that the normalized Laplacian spectrum is a good indicator to distinguish between different evolving systems.


international conference on software engineering | 2016

Comparison of graph sampling algorithms using normalized Laplacian spectra

Bo Jiao; Chengdong Huang; Yuanping Nie; Fei Huang; Ying Zhou; Jing Du

The normalized Laplacian spectrum is a good indicator of connectivity for comparing graphs with different sizes (i.e., the number of nodes). This paper shows the performances of several random-walk sampling algorithms using the spectral indicator. Based on two types of complex network models with exponential and power-law degree distributions, we determine that the sampling algorithms do not perform well on the spectral indicator, and find that the spectral indicator of biased sampling graphs is much closer to that of original graphs when the assortative mixing coefficient of original graphs decreases. Especially, for disassortative networks, biased sampling graphs perform better than unbiased sampling graphs on the spectral indicator.


international conference on computer science and network technology | 2016

Network simulation and evaluation for the size reduction of a given topology

Linyu Guan; Bo Jiao; Chengdong Huang; Bo Li; Fei Huang; Yinglong Liu

Running on a size-reduction network simulated by a given large-scale topology can obviously enhance the time efficiency. In this paper, we realize the size-reduction using the input extracting of a network simulator and evaluate the similarity between the size-reduction and given topologies using multiple criterions. The evaluation result verifies that the network simulation with input extracting is effective for the size reduction.


international conference on cloud computing | 2016

Application of normalized Laplacian spectra for multicast routing evaluations

Bo Jiao; Chengdong Huang; Ronghua Guo; Bo Li; Fei Huang; Zhenkun Miao; Xuejun Yuan

The multiplicity of the eigenvalue 1 (ME1) and the weighted spectral distribution (WSD), i.e., two weakly-related metrics defined on the normalized Laplacian spectrum, capture the size-independent features of the Internet structure. In this paper, we evaluate the multicast routing protocol in the size-independent Internet structure, and numerically find that the protocol indexes tend to stable as the network size increases if the normalized Laplacian spectrum of the network topology is asymptotically independent of the network size. The real-world Internet topology evolves (i.e., the network size increases) over time, which indicates that the protocol should be evaluated in the size-independent network structure. Our studies provide a specific application of the normalized Laplacian spectrum, which verifies that the size-independent structure captured by the spectrum is useful for the evaluation of network protocols.


computer supported cooperative work in design | 2016

Calculating the weighted spectral distribution with 5-cycles

Bo Jiao; Yuanping Nie; Chengdong Huang; Jing Du; Xunlong Pang; Xuejun Yuan

Recent researches proposed that the weighted spectral distribution is a robust spectral metric independent of the network size (node number) and can be quickly calculated in large-scale networks using the graph structure of 4-cycles. In this paper, we design an algorithm for calculating the spectral metric within a more complex graph structure (i.e., 5-cycles) and two theorems are proposed to verify the accuracy of the algorithm. Finally, the theoretical and experimental analyses exhibit the high time efficiency of our algorithm when applied to large-scale networks.


fuzzy systems and knowledge discovery | 2013

Cluster performance oriented characteristics of network simulations

Jing Du; Fujiang Ao; Futong Qin; Ying Zhou; Chengdong Huang

As the price of parallel computer is decreasing and the network simulation is being more complex, people turn to study the high performance network simulation based on the parallel computer platform. This makes the platform performance oriented characteristics of network simulation become a new important research focus. Taking the cluster, which is a representative parallel computer, as the platform, this paper does research on issues in the cluster performance oriented characteristics of network simulation from two aspects, including the performance capabilities of cluster, and the characteristics of network simulation and their performance demands of cluster. The research results in this paper can guide the selection of the appropriate cluster platform exactly and efficiently, and guide the development of performance oriented parallel optimization techniques.


Physica A-statistical Mechanics and Its Applications | 2016

Scaling of weighted spectral distribution in deterministic scale-free networks

Bo Jiao; Yuanping Nie; Jian-mai Shi; Chengdong Huang; Ying Zhou; Jing Du; Ronghua Guo; Yerong Tao

Collaboration


Dive into the Chengdong Huang's collaboration.

Top Co-Authors

Avatar

Yuanping Nie

National University of Defense Technology

View shared research outputs
Top Co-Authors

Avatar

Jian-mai Shi

National University of Defense Technology

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge