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A GENERATIVE MODEL OF OFFENDERS' SPATIAL BEHAVIOUR

机译:犯罪者空间行为的生成模型

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摘要

The relationship between distance travelled to an offence and frequency of offending has traditionally been expressed as a (downward-sloping) decay function and such a curve is typically used to fit empirical data. It is proposed here that a decay function should be viewed as a probability density function. It is then possible to construct generative models to assign probabilities to suspects from a set of known offenders whose past crimes are stored in a police data archive. Probabilities can then be used to prioritise suspects in an investigation and calculate the probability of being the culprit. Two functional forms of the decay function are considered: negative exponential and power. These are shown empirically to outperform a basic model which simply ranks suspects by distance from the crime. The model is then extended to include also preferred direction of travel which varies between offenders. If direction of travel is incorporated then predictions become more accurate. The generative decay model has two advantages over a basic model. Firstly it can incorporate other information such as past frequency of offending. Secondly, it provides an estimate of suspect likelihood indicating the trustworthiness of any inference by the model.
机译:传统上,行进进攻的距离与犯罪频率之间的关系表示为(向下倾斜)衰减函数,这种曲线通常用于拟合经验数据。在此建议将衰减函数视为概率密度函数。然后可以构建生成模型,以将概率分配给来自一组已知犯罪者的嫌疑人,这些犯罪者过去的犯罪记录存储在警察数据档案中。然后可以使用概率在调查中对嫌疑犯进行优先排序,并计算出成为罪魁祸首的概率。考虑了衰减函数的两种功能形式:负指数和幂。从经验上证明,这些方法的性能优于基本模型,该模型仅按犯罪距离对犯罪嫌疑人进行排名。然后将模型扩展为还包括在罪犯之间变化的首选行进方向。如果结合了行进方向,则预测将变得更加准确。与基本模型相比,生成衰减模型具有两个优点。首先,它可以纳入其他信息,例如过去的犯罪频率。其次,它提供了可疑可能性的估计,表明模型对任何推理的可信度。

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