PAN Jian-fei, CAO Yan, DONG Yi-hong, et al. The Community Evolution Event Prediction Based on Attention Deep Random Forest[J]. Acta Electronica Sinica, 2019, 47(10): 2050-2060.
DOI:
PAN Jian-fei, CAO Yan, DONG Yi-hong, et al. The Community Evolution Event Prediction Based on Attention Deep Random Forest[J]. Acta Electronica Sinica, 2019, 47(10): 2050-2060. DOI: 10.3969/j.issn.0372-2112.2019.10.005.
The Community Evolution Event Prediction Based on Attention Deep Random Forest
The internal community structure is evolving with the change of network structure. These changes in different time slices can be defined as four different evolutionary events: survive
split
fusion and disappearance. In this paper
the network representation learning method is used to map the graph embedding of the network into the low-dimensional vector space to study the prediction of dynamic community evolution events. In the features
based on the features of community internal attributes
the change of temporal attributes
and the previous community evolution events
the potential structure characteristics of the four evolutionary events are introduced and obtained by using random walk and Softmax. In the model
the strategy of deep random forest is proposed. Feature fusion and feature training are carried out by using the attention mechanism and Monte Carlo feature sampling strategy
which overcomes the shortcomings of the existing algorithms that only acquire local structural features. Finally
by comparing SVM
XGBOOST
RIDGE model training in the DBLP
FACEBOOK and Bitcoin datasets
it is confirmed that the embedding feature of community structure and the attention deep random forest model improvement have greatly improved the accuracy of final prediction.
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