| Literature DB >> 23766729 |
Razana Alwee1, Siti Mariyam Hj Shamsuddin, Roselina Sallehuddin.
Abstract
Crimes forecasting is an important area in the field of criminology. Linear models, such as regression and econometric models, are commonly applied in crime forecasting. However, in real crimes data, it is common that the data consists of both linear and nonlinear components. A single model may not be sufficient to identify all the characteristics of the data. The purpose of this study is to introduce a hybrid model that combines support vector regression (SVR) and autoregressive integrated moving average (ARIMA) to be applied in crime rates forecasting. SVR is very robust with small training data and high-dimensional problem. Meanwhile, ARIMA has the ability to model several types of time series. However, the accuracy of the SVR model depends on values of its parameters, while ARIMA is not robust to be applied to small data sets. Therefore, to overcome this problem, particle swarm optimization is used to estimate the parameters of the SVR and ARIMA models. The proposed hybrid model is used to forecast the property crime rates of the United State based on economic indicators. The experimental results show that the proposed hybrid model is able to produce more accurate forecasting results as compared to the individual models.Entities:
Mesh:
Year: 2013 PMID: 23766729 PMCID: PMC3677664 DOI: 10.1155/2013/951475
Source DB: PubMed Journal: ScientificWorldJournal ISSN: 1537-744X
Figure 1The Flow chart for the proposed hybrid PSOSVR and PSOARIMA model.
The range values for the parameters (C, γ, ε).
| Parameters | Range values |
|---|---|
|
| 2−1 to 27 |
|
| 2−4 to 22 |
|
| 0.01 to 0.05 |
Comparison of actual value and forecast value of property crime rates.
| Year | Actual value of property crime rates | Forecast value of property crime rates | ||||
|---|---|---|---|---|---|---|
| Individual models | Hybrid models | |||||
| ARIMA | PSOARIMA | PSOSVR | PSOSVR ARIMA | PSOSVR PSOARIMA | ||
| 2005 | 3431.5 | 3450.674 | 3446.673 | 3432.788 | 3415.503 | 3427.515 |
| 2006 | 3334.5 | 3383.523 | 3378.434 | 3346.533 | 3345.65 | 3346.024 |
| 2007 | 3263.5 | 3277.728 | 3279.746 | 3255.626 | 3250.134 | 3251.728 |
| 2008 | 3211.5 | 3230.002 | 3225.111 | 3188.747 | 3200.334 | 3193.765 |
| 2009 | 3036.1 | 3187.335 | 3189.071 | 3030.249 | 3037.259 | 3036.579 |
Figure 2Forecasting of test data set.
Figure 3Forecasting Errors of test data set.
Comparison of errors.
| Model | RMSE | MSE | MAPE | MAD |
|---|---|---|---|---|
| ARIMA | 72.371 | 5237.568 | 1.604 | 50.433 |
| PSOARIMA | 72.125 | 5201.967 | 1.544 | 48.387 |
| PSOSVR | 12.332 | 152.077 | 0.308 | 9.960 |
| PSOSVR_ARIMA | 11.704 | 136.980 | 0.319 | 10.568 |
| PSOSVR_PSOARIMA | 10.973 | 120.408 | 0.278 | 9.099 |
Paired samples test.
| Paired differences | ||||||||
|---|---|---|---|---|---|---|---|---|
| Mean | Std. deviation | Std. error mean | 95% confidence interval of the difference |
| df | Sig. (2-tailed) | ||
| Lower | Upper | |||||||
| Pair 1 PCR-ARIMA | −50.43259 | 58.03148 | 25.95247 | −122.48819 | 21.62301 | −1.943 | 4 | 0.124 |
| Pair 2 PCR-PSOARIMA | −48.38690 | 59.74264 | 26.74264 | −122.63637 | 25.86257 | −1.809 | 4 | 0.145 |
| Pair 3 PCR-PSOSVR | 4.63141 | 5.71462 | 5.71462 | −11.23491 | 20.49773 | 0.810 | 4 | 0.463 |
| Pair 4 PCR-PSOSVR_ARIMA | 5.64408 | 5.12651 | 5.12651 | −8.58939 | 19.87756 | 1.101 | 4 | 0.333 |
| Pair 5 PCR-PSOSVR_PSOARIMA | 4.29777 | 5.04821 | 5.04821 | −9.71831 | 18.31385 | 0.851 | 4 | 0.443 |
Legend: Pair 1: actual data and ARIMA; Pair 2: actual data and PSOARIMA; Pair 3: actual data and PSOSVR; Pair 4: actual data and PSOSVR_ARIMA; Pair 5: actual data and PSOSVR_PSOARIMA.