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PREDIKSI TINGKAT KRIMINALITAS MENGGUNAKAN LONG SHORT TERM MEMORY (LSTM)
Prediction or also called forecasting is the process of estimating events that will occur in the future. In this research, software is developed that can predict crime rates using the Long Short-term Memory method using the Los Angles crime dataset which has a crime type domain of 139 with details of 9 types of crimes that have the most frequency, namely; vehicle - stolen, battery - simple assault, theft from vehicle, identity theft, vandalism - serious crime, theft, assault with a deadly weapon, aggravated assault, ordinary theft - minor, intimate partner - ordinary assault, and theft from motor vehicles. The dataset has 962431 rows of data with a total of 20 parameters including; DR_NO, DATE OCC, TIME OCC, AREA, AREA NAME, Rpt Dist No, Crm Cd, Crm Cd Desc, Mocodes, Vict Age, Vict Sex, Vict Descent, Premise Desc, Weapon Used Cd, Weapon Desc, Status, Status Desc, LOCATION, LAT and LON. In this research, the model training is done with the configuration: split train validation data into 80%-20%, for 2 model architectures: 2 layer LSTM and 3 layer LSTM each trained with 50, 100, and 150 epochs to analyze time series data and predict crime rates more accurately. The Long Short Term Memory (LSTM) based crime prediction model has been successfully developed, which has the lowest prediction error among other configurations with an RMSE of 0.0208.
Inventory Code | Barcode | Call Number | Location | Status |
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2507000715 | T166191 | T1661912025 | Central Library (Reference) | Available but not for loan - Not for Loan |
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