Research Article

Mass Rapid Transit System Passenger Traffic Forecast Using a Re-Sample Recurrent Neural Network

Table 3

The performance of models with different weights of resample rate (congestion, moderate, and normal) and different hidden sizes.

modelTest Accuracy precision(congestion, moderate,normal) recall((congestion, moderate,normal) F1score(congestion, moderate, normal)

Weighs(0.25,0.25,0.5)HiddenSize 2000.90.89,0.85,0.930.92,0.84,0.920.91,0.84,0.93
Weights(0.3,0.3,0.4) Hiddensize 2000.9070.92,0.85,0.950.94,0.89,0.890.93,0.87,0.92
Weights(0.33,0.33,034) Hiddensize 2000.8870.89,0.87,0.910.92,0.85,0.890.90,0.86,0.90
Weights(0.02,0.12,0.86)Hiddensize 2000.9470.61,0.85,0.970.55,0.78,0.980.58,0.82,0.97
Weights(0.25,0.25,0.5)Hiddensize 1500.890.81,0.86,0.950.96,0.81,0.900.88,0.84,0.92
Weights(0.3,0.3,0.4) Hiddensize 1500.9030.93,0.85,0.930.88,0.89,0.930.90,0.87,0.93
Weights(0.33,0.33,034) Hiddensize 1500.8860.91,0.85,0.890.88,0.86,0.910.90,0.86,0.90
Weights(0.02,0.12,0.86)Hiddensize 1500.9410.75,0.79,0.960.45,0.80,0.970.56,0.80,0.97
Weights(0.25,0.25,0.5)Hiddensize 2500.910.910.85,0.890.94,0.85,0.930.91,0.86,0.94
Weights(0.3,0.3,0.4)Hiddensize 2500.8980.95,0.84,0.810.87,0.89,0.930.91,0.86,0.92
Weights(0.33,0.33,0.34)Hiddensize 2500.910.95,0.86,0.920.92,0.91,0.900.93,0.89,0.91
Weights(0.02,0.12,0.86)Hiddensize 2500.9540.82,0.81,0.980.70,0.87,0.970.76,0.84,0.97
Without resample Hidden size 2500.9380.50,0.84,0.970.09,0.92,0.960.15,0.88,0.96