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Improved block diagonal subspace clustering algorithm based on neighbor graph
WANG Lijuan, CHEN Shaomin, YIN Ming, XU Yueying, HAO Zhifeng, CAI Ruichu, WEN Wen
Journal of Computer Applications 2021, 41 (
1
): 36-42. DOI:
10.11772/j.issn.1001-9081.2020061005
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403
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Block Diagonal Representation (BDR) model can efficiently cluster data by using linear representation, but it cannot make good use of non-linear manifold information commonly appeared in high-dimensional data. To solve this problem, the improved Block Diagonal Representation based on Neighbor Graph (BDRNG) clustering algorithm was proposed to perform the linear fitting of the local geometric structure by the neighbor graph and generate the block-diagonal structure by using the block-diagonal regularization. In BDRNG algorithm, both global information and local data structure were learned at the same time to achieve a better clustering performance. Due to the fact that the model contains the neighbor graph and non-convex block-diagonal representation norm, the alternative minimization was adopted by BDRNG to optimize the solving algorithm. Experimental results show that:on the noise dataset, BDRNG can generate the stable coefficient matrix with block-diagonal form, which proves that BDRNG is robust to the noise data; on the standard datasets, BDRNG has better clustering performance than BDR, especially on the facial dataset, BDRNG has the clustering accuracy 8% higher than BDR.
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Node classification method in social network based on graph encoder network
HAO Zhifeng, KE Yanrong, LI Shuo, CAI Ruichu, WEN Wen, WANG Lijuan
Journal of Computer Applications 2020, 40 (
1
): 188-195. DOI:
10.11772/j.issn.1001-9081.2019061116
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926
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Aiming at how to merge the nodes' attributes and network structure information to realize the classification of social network nodes, a social network node classification algorithm based on graph encoder network was proposed. Firstly, the information of each node was propagated to its neighbors. Secondly, for each node, the possible implicit relationships between itself and its neighbor nodes were mined through neural network, and these relationships were merged together. Finally, the higher-level features of each node were extracted based on the information of the node itself and the relationships with the neighboring nodes and were used as the representation of the node, and the node was classified according to this representation. On the Weibo dataset, compared with DeepWalk model, logistic regression algorithm and the recently proposed graph convolutional network, the proposed algorithm has the classification accuracy greater than 8%; on the DBLP dataset, compared with multilayer perceptron, the classification accuracy of this algorithm is increased by 4.83%, and is increased by 0.91% compared with graph convolutional network.
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Hierarchical (
α
ij
, k, m
)-anonymity privacy preservation based on multiple sensitive attributes
WANG Qiuyue, GE Lina, GENG Bo, WANG Lijuan
Journal of Computer Applications 2018, 38 (
1
): 67-72. DOI:
10.11772/j.issn.1001-9081.2017071863
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547
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To resist existing limitations and associated attack by anonymization of single sensitive attributes, an (
α
ij
,
k,m
)-anonymity model based on greedy algorithm was proposed. Firstly, the (
α
ij
,
k,m
)-anonymity model was mainly to protect multi-sensitive attribute information. Secondly, the model for level was carried out according to the sensitive values of the sensitive attributes, if there were
m
sensitive attributes, there were
m
tables. Thirdly, each level was assigned a specific account
α
ij
by the model. Finally, the (
α
ij
,
k,m
)-anonymity algorithm based on greedy strategy was designed, and a local optimum method was adopted to implement the ideas of the model which improves the degree of data privacy protection. The proposed model was compared with other three models from information loss, execution times, and the sensitivity distance of equivalent class. The experimental results show that, although the execution time of the proposed model is slightly longer than other compared models, however, the information loss is less and the privacy protection degree of data is higher. It can resist the associated attack and protect the data of multi-sensitive attributes.
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Deep network for person identification based on joint identification-verification
CAI Xiaodong, YANG Chao, WANG Lijuan, GAN Kaijin
Journal of Computer Applications 2016, 36 (
9
): 2550-2554. DOI:
10.11772/j.issn.1001-9081.2016.09.2550
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453
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It is a challenge for person identification to find an appropriate person feature representation method which can reduce intra-personal variations and enlarge inter-personal differences. A deep network for person identification based on joint identification-verification was proposed to solve this problem. First, the deep network model for identification was used to enlarge the inter-personal differences of different people while the verification model was used for reducing the intra-personal distance of the same person. Second, the discriminative feature vectors were extracted by sharing parameters and jointing deep networks of identification and verification. At last, the joint Bayesian algorithm was adopted to calculate the similarity of two persons, which improved the accuracy of pedestrian alignment. Experimental results prove that the proposed method has higher pedestrian recognition accuracy compared with some other state-of-art methods on VIPeR database; meanwhile, the joint identification-verification deep network has higher convergence speed and recognition accuracy than those of separated deep networks.
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Performance optimization of wireless network based on canonical causal inference algorithm
HAO Zhifeng, CHEN Wei, CAI Ruichu, HUANG Ruihui, WEN Wen, WANG Lijuan
Journal of Computer Applications 2016, 36 (
8
): 2114-2120. DOI:
10.11772/j.issn.1001-9081.2016.08.2114
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693
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The existing wireless network performance optimization methods are mainly based on the correlation analysis between indicators, and cannot effectively guide the design of optimization strategies and some other interventions. Thus, a Canonical Causal Inference (CCI) algorithm was proposed and used for wireless network performance optimization. Firstly, concerning that wireless network performance is usually presented by numerous correlated indicators, the Canonical Correlation Analysis (CCA) method was employed to extract atomic events from indicators. Then, typical causal inference method was conducted on the extracted atomic events to find the causality among the atomic events. The above two stages were iterated to determine the causal network of the atomic events and provided a robust and effective basis for wireless network performance optimization. The validity of CCI was indicated by simulation experiments, and some valuable causal relations of wireless network indicators were found on the data of a city's more than 30000 mobile base stations.
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Emotion classification for news readers based on multi-category semantic word clusters
WEN Wen, WU Biao, CAI Ruichu, HAO Zhifeng, WANG Lijuan
Journal of Computer Applications 2016, 36 (
8
): 2076-2081. DOI:
10.11772/j.issn.1001-9081.2016.08.2076
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681
)
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The analysis and study of readers' emotion is helpful to find negative information of the Internet, and it is an important part of public opinion monitoring. Taking into account the main factors that lead to the different emotions of readers is the semantic content of the text, how to extract semantic features of the text has become an important issue. To solve this problem, the initial features related to the semantic content of the text was expressed by word2vec model. On the basis of that, representative semantic word clusters were established for all emotion categories. Furthermore, a strategy was adopted to select the representative word clusters that are helpful for emotion classification, thus the traditional text word vector was transformed to the vector on semantic word clusters. Finally, the multi-label classification was implemented for the emotion label learning and classification. Experimental results demonstrate that the proposed method achieves better accuracy and stability compared with state-of-the-art methods.
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Selective K-means clustering ensemble based on random sampling
WANG Lijuan HAO Zhifeng CAI Ruichu WEN Wen
Journal of Computer Applications 2013, 33 (
07
): 1969-1972. DOI:
10.11772/j.issn.1001-9081.2013.07.1969
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1006
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Without any prior information about data distribution, parameter and the labels of data, not all base clustering results can truly benefit for the combination decision of clustering ensemble. In addition, if each base clustering plays the same role, the performance of clustering ensemble may be weakened. This paper proposed a selective K-means clustering ensemble based on random sampling, called RS-KMCE. In RS-MKCE, random sampling can avoid local minimum in the process of selecting base clustering subset for ensemble. And the defined evaluation index according to diversity and accuracy can lead to a better base clustering subset for improving the performance of clustering ensemble. The experiment results on two synthetic datasets and four UCI datasets show that performance of the proposed RS-KMCE is better than K-means, K-means clustering ensemble, and selective K-means clustering ensemble based on bagging.
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