Identifying and Predicting the Expenditure Level Characteristics of Car-Sharing Users Based on the Empirical Data
Abstract
:1. Introduction
2. Literature Review
3. Data Description and Methodology
3.1. Data Description
3.1.1. Data Collection
3.1.2. Data Sampling
3.1.3. Data Preprocessing
3.2. Variable Definition
3.2.1. Layering Variables
3.2.2. Car-sharing Usage Characteristics
3.3. Layering and Prediction Modeling
3.3.1. User Layering Modeling Based on Two-Step Clustering
3.3.2. Multi-Layer Perceptron Model Considering Periodic Features
4. Case Study
4.1. Layering and Prediction Modeling of Car-sharing Users
4.1.1. Layering Modeling of Car-sharing Users
4.1.2. Prediction Modeling of Car-sharing Users
4.2. Results and Discussion
4.2.1. User Layering Results
4.2.2. User Prediction Results
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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User-Id | Car Rental Station | Car Return Station | Car Usage Time | Order Duration | Order Mileage | Car Type | Amount |
---|---|---|---|---|---|---|---|
139****5910 | Shuang Chengmen station | Du Shi station | 2018/4/27 8:44a.m | 60 min | 29.15 km | E200 | 26.28 yuan |
User-Id | Registration Time | Sex | Age |
---|---|---|---|
139****5910 | 2018/4/27 8:00 a.m | male | 42 |
Type | Classification | Specific Variable |
---|---|---|
Layering variables | The total amount of expenditure | The total amount of expenditure |
Car-sharing usage characteristic variables | The revenue contribution | The revenue contribution |
Rental time characteristics | Rental time ratio | |
Car space characteristics | Heterogeneity of the rental and return station | |
Car type characteristics | Car type ratio | |
Duration and mileage characteristics | Average duration and average mileage Maximum duration and maximum mileage Minimum duration and minimum mileage | |
Frequency characteristics | Time span Frequency |
Real Time | Time Label |
---|---|
0–6:00 | 0 |
6:00–9:00 | 1 |
9:00–11:00 | 2 |
11:00–13:00 | 3 |
13:00–17:00 | 4 |
17:00–19:00 | 5 |
19:00–24:00 | 6 |
Car Type | Car Number | Car Characteristic | Billing Standard |
---|---|---|---|
Zhidou1 | 142 | Economy type, two-seater | 0.15 yuan/min, the cheapest rent |
Zhidou 2 | 60 | Economy type, two-seater | 0.16 yuan/min, the rent is slightly more expensive than the Zhidou 1 |
E C 200 | 146 | Economy type, four-seater | 0.15 yuan/min + 0.5 yuan/km |
E200 | 80 | Economy type, four-seater | 0.15 yuan/min + 1.2 yuan/km, the rent is more expensive than EC200, second only to E5 |
E5 | 75 | Comfort type, five-seater | 0.15 yuan/min + 1.5 yuan/km, the most expensive rent |
Variable | Value Description | |
---|---|---|
Car usage behavior Variable | Average duration | Continuous variable |
Maximum duration | ||
Minimum duration | ||
Average mileage | ||
Maximum mileage | ||
Minimum mileage | ||
E5 | ||
Zhidou1 | ||
EC200 | ||
E200 | ||
Zhidou2 | ||
Time0 | ||
Time1 | ||
Time2 | ||
Time3 | ||
Time4 | ||
Time5 | ||
Time6 | ||
Space characteristics | ||
Frequency | ||
Time span | ||
Expenditure amount | Expenditure amount | |
Static attribute variable. | Age | |
Sex | Categorical variables |
GROUP | NUMBER OF PEOPLE | PERCENTAGE OF PEOPLE (%) | SINGLE SPENDING AMOUNT (YUAN) | AVERAGE AMOUNT (YUAN) | TOTAL AMOUNT (YUAN) | THE REVENUE CONTRIBUTION (%) |
---|---|---|---|---|---|---|
GROUP1 (HG) | 1026 | 19.7 | (610, 3773) | 1438.9 | 1,476,312 | 68.7 |
GROUP2 (MG) | 1367 | 26.3 | (184, 609) | 343.8 | 469,978 | 21.9 |
GROUP3 (LG) | 2809 | 54.0 | (3, 183) | 72.4 | 203,401 | 9.5 |
User Category | LG | MG | HG | Correct Percentage | |
---|---|---|---|---|---|
First 1 Weeks | |||||
Training set | LG | 1777 | 151 | 30 | 90.80% |
MG | 427 | 315 | 203 | 33.30% | |
HG | 148 | 161 | 399 | 56.40% | |
Overall percentage | 65.10% | 17.40% | 17.50% | 69.00% | |
Test set | LG | 755 | 81 | 10 | 89.20% |
MG | 186 | 141 | 94 | 33.50% | |
HG | 78 | 78 | 162 | 50.90% | |
Overall percentage | 64.30% | 18.90% | 16.80% | 66.80% | |
First 2 Weeks | |||||
Training set | LG | 1799 | 164 | 5 | 91.40% |
MG | 320 | 426 | 163 | 46.90% | |
HG | 97 | 175 | 441 | 61.90% | |
Overall percentage | 61.70% | 21.30% | 17.00% | 74.30% | |
Test set | LG | 758 | 75 | 3 | 90.70% |
MG | 157 | 213 | 87 | 46.60% | |
HG | 38 | 68 | 207 | 66.10% | |
Overall percentage | 59.30% | 22.20% | 18.50% | 73.30% | |
First 3 Weeks | |||||
Training set | LG | 1749 | 188 | 6 | 90.00% |
MG | 229 | 566 | 149 | 60.00% | |
HG | 45 | 166 | 508 | 70.70% | |
Overall percentage | 56.10% | 25.50% | 18.40% | 78.30% | |
Test set | LG | 783 | 74 | 4 | 90.90% |
MG | 104 | 245 | 73 | 58.10% | |
HG | 19 | 75 | 213 | 69.40% | |
Overall percentage | 57.00% | 24.80% | 18.20% | 78.10% | |
First 4 Weeks | |||||
Training set | LG | 1812 | 132 | 6 | 92.90% |
MG | 206 | 675 | 120 | 67.40% | |
HG | 31 | 142 | 533 | 75.50% | |
Overall percentage | 56.00% | 26.00% | 18.00% | 82.60% | |
Test set | LG | 792 | 57 | 5 | 92.70% |
MG | 89 | 240 | 36 | 65.80% | |
HG | 17 | 72 | 231 | 72.20% | |
Overall percentage | 58.30% | 24.00% | 17.70% | 82.10% | |
First 5 Weeks | |||||
Training set | LG | 1870 | 81 | 4 | 95.70% |
MG | 179 | 709 | 65 | 74.40% | |
HG | 21 | 136 | 563 | 78.20% | |
Overall percentage | 57.10% | 25.50% | 17.40% | 86.60% | |
Test set | LG | 809 | 37 | 3 | 95.30% |
MG | 85 | 296 | 32 | 71.70% | |
HG | 8 | 65 | 233 | 76.10% | |
Overall percentage | 57.50% | 25.40% | 17.10% | 85.30% | |
First 6 Weeks | |||||
Training set | LG | 1887 | 83 | 6 | 95.50% |
MG | 154 | 722 | 56 | 77.50% | |
HG | 13 | 103 | 606 | 83.90% | |
Overall percentage | 56.60% | 25.00% | 18.40% | 88.60% | |
Test set | LG | 806 | 20 | 2 | 97.30% |
MG | 83 | 320 | 31 | 73.70% | |
HG | 6 | 56 | 242 | 79.60% | |
Overall percentage | 57.20% | 25.30% | 17.60% | 87.40% | |
First 12 Weeks | |||||
Training set | LG | 1943 | 32 | 3 | 98.20% |
MG | 32 | 914 | 10 | 95.60% | |
HG | 3 | 17 | 692 | 97.20% | |
Overall percentage | 54.30% | 26.40% | 19.30% | 97.30% | |
Test set | LG | 809 | 15 | 5 | 97.60% |
MG | 16 | 389 | 6 | 94.60% | |
HG | 3 | 9 | 302 | 96.20% | |
Overall percentage | 53.30% | 26.60% | 20.10% | 96.50% |
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Sai, Q.; Bi, J.; Xie, D.; Guan, W. Identifying and Predicting the Expenditure Level Characteristics of Car-Sharing Users Based on the Empirical Data. Sustainability 2019, 11, 6689. https://doi.org/10.3390/su11236689
Sai Q, Bi J, Xie D, Guan W. Identifying and Predicting the Expenditure Level Characteristics of Car-Sharing Users Based on the Empirical Data. Sustainability. 2019; 11(23):6689. https://doi.org/10.3390/su11236689
Chicago/Turabian StyleSai, Qiuyue, Jun Bi, Dongfan Xie, and Wei Guan. 2019. "Identifying and Predicting the Expenditure Level Characteristics of Car-Sharing Users Based on the Empirical Data" Sustainability 11, no. 23: 6689. https://doi.org/10.3390/su11236689
APA StyleSai, Q., Bi, J., Xie, D., & Guan, W. (2019). Identifying and Predicting the Expenditure Level Characteristics of Car-Sharing Users Based on the Empirical Data. Sustainability, 11(23), 6689. https://doi.org/10.3390/su11236689