Fig. 1 Deep CNN architecture used in the Char-DCNN-MF algorithm
Fig. 2 Text encoding process
Fig. 3 Compare with baseline model
Fig. 4 RMSE for different models
Table. 1 data sets information
Table. 2 The configuration of convolution layer and max-pooling layer
Table. 3 The configuration of convolution layer and max-pooling layer
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