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Modeling Daily Crime Events Prediction Using Seq2Seq Architecture

机译:使用SEQ2Seq架构建模日常犯罪事件预测

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Early prediction of the crime occurrence reduces its impact. Several studies have been conducted to forecast crimes. However, these studies are not highly accurate, particularly in short-term forecasting such as over one week. To respond to this, we examine sequence to sequence (Seq2Seq) based encoder-decoder LSTM model using two real-world crime datasets of Brisbane and Chicago, extracted from the open data portal, to make one week ahead of total daily crime forecasting. We have built an ARIMA statistical model and three machine learning-based regression models that differ in their architecture, namely, simple RNN, LSTM, and Conv1D with a novel approach of walk-forward validation. Using a grid search strategy, the hyperparameters of the models are optimized. The obtained results demonstrate that the proposed Seq2Seq model is highly effective, if not superior, compared to its counterparts and other algorithms. This proposed model achieves state-of-the-art results with a relatively Root Mean Squared Error (RMSE) of 0.43 and 0.86 on both datasets, respectively.
机译:早期预测犯罪事件会降低其影响。已经进行了几项研究以预测犯罪。然而,这些研究并不高度准确,特别是在短期预测中,例如超过一周。要回答这一点,我们使用布里斯班和芝加哥的两个现实世界犯罪数据集来检查基于序列(SEQ2Seq)的编码器解码器LSTM模型,从开放数据门户中提取,从而提前一周的每日犯罪预测。我们建立了一个Arima统计模型和三种基于机器学习的回归模型,其架构,即简单的RNN,LSTM和Conv1d,具有新的前瞻性验证方法。使用网格搜索策略,优化模型的超级参数。所获得的结果表明,与其对应物和其他算法相比,所提出的SEQ2SEQ模型具有高效,如果不是优越的。该建议的模型可以分别实现最先进的结果,其在两个数据集上具有0.43和0.86的相对根均平方误差(RMSE)。

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