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Application of Language Models to Suspect Prioritisation and Suspect Likelihood in Serial Crimes

机译:语言模型在串行犯罪中怀疑优先级和怀疑可能性的应用

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Language Models are successfully applied to the problem of analysing crime descriptions from a police database with the purpose of prioritising suspects for an unsolved crime, given details of solved crimes. The frequency of terms in each description relates to the behaviour of the offender and this can be used to link crimes to a common offender. Language Modelling uses Bayes'' theorem and thus require a prior probability. Such a prior can be based on each offender''s past propensity to offend, derived from historic data. Language Modelling yields a probability of a document being relevant, which in this case is interpreted as the probability of a suspect being the culprit. Although the absolute value of the probability does not carry any direct applied implications, the study does show that the general likelihood of identification of the actual suspect does correspond to the relative values. Thus these probabilities can be used for more than just ranking suspects.
机译:鉴于已解决的罪行的详细信息,可以成功地应用于分析警察数据库的犯罪描述问题的问题,以确定未解决的犯罪嫌疑人。每个描述中的术语的频率涉及罪犯的行为,并且这可以用于将犯罪链接到共同罪犯。语言建模使用贝叶斯的定理,因此需要先前的概率。这样的事先可以基于每个罪犯的过去倾向,源自历史数据。语言建模产生了相关的文档的概率,在这种情况下,这被解释为嫌疑人是罪魁祸首。虽然概率的绝对值不携带任何直接应用的含义,但研究确实表明,实际嫌疑人的识别的一般可能性对应于相对值。因此,这些概率可以用于不仅仅用于排名嫌疑人。

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