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Table 8 Structural Model: Comparing the movement of private car and taxi predicting peak hours

From: Modeling the effect of days and road type on peak period travels using structural equation modeling and big data from radio frequency identification for private cars and taxis

Paths

Private cars - Default Model N = 819965

Taxi – Defaults Model N = 10228

Estimate

SE

Critical Ratio

Estimate

SE

Critical Ratio

Monday→6 am–9 am

0.17***

0.002

115.46

0.11***

0.02

7.67

Monday→9 am-12 noon

0.15***

0.002

107.54

0.04*

0.01

2.84

Monday→4 pm–7 pm

0.15***

0.002

133.54

0.15***

0.01

11.19

Tuesday→6 am–9 am

0.15***

0.002

96.00

0.03ns

0.02

1.67

Tuesday→9 am-12 noon

0.14***

0.002

97.47

0.15***

0.01

11.03

Tuesday→4 pm–7 pm

0.15***

0.002

126.68

0.14***

0.01

9.21

Wednesday→6 am–9 am

0.15***

0.002

98.05

0.13***

0.01

9.30

Wednesday→9 am-12 noon

0.14***

0.002

98.36

0.11***

0.01

9.13

Wednesday→4 pm–7 pm

0.15***

0.002

132.78

0.03ns

0.01

1.86

Thursday→ 6 am–9 am

0.13***

0.002

81.26

0.21***

0.01

13.60

Thursday→9 am-12 noon

0.15***

0.002

106.63

0.20***

0.01

14.21

Thursday→4 pm–7 pm

0.14***

0.002

124.71

0.12***

0.01

7.91

Friday→6 am–9 am

0.14***

0.002

95.66

0.14***

0.01

8.22

Friday→9 am-12 noon

0.14***

0.002

102.59

0.14***

0.01

9.24

Friday→4 pm–7 pm

0.18***

0.001

156.33

0.20***

0.01

12.14

Saturday→6 am–9 am

0.03**

0.002

28.33

0.11***

0.02

6.94

Saturday→9 am-12 noon

0.10***

0.002

90.98

0.13***

0.01

9.21

Saturday→4 pm–7 pm

0.10***

0.001

122.13

0.10***

0.01

6.91

Sunday→6 am–9 am

0.03**

0.002

21.99

0.06***

0.02

3.74

Sunday→9 am-12 noon

0.07***

0.002

65.43

0.09***

0.01

6.41

Sunday→4 pm–7 pm

0.10***

0.002

113.37

0.06***

0.01

4.41

R2: 6 am–9 am = 50%

R2: 6 am–9 am = 48%

R2: 9 am-12 noon = 58%

R2: 9 am-12 noon = 58%

R2: 4 pm–7 pm = 72%

R2: 4 pm–7 pm = 51%

Model fit indices: CFI = 0.97, NFI = 0.97, GFI = 0.96,

CFI = 0.97, NFI = 0.97, GFI = 0.96,

AGFI = 0.92, RMSEA = 0.065

AGFI = 0.92, RMSEA = 0.065

  1. *p < 0.05, **p < 0.01, ***p < 0.001, ns Not significant, SE Standard error, CFI Comparative fit index, NFI Norm fit index, GFI Goodness of fit index, AGFI Adjusted goodness of fit index, RMSEA Root mean square error of approximation