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A Revised Frequent Pattern Model for Crime Situation Recognition Based on Floor-Ceil Quartile Function

机译:基于Floor-Ceil四分位数函数的犯罪态势识别频繁模式修正模型

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Identifying related offences in a criminal investigation is an important goal for crime analysts. This can deliver evidence that can assist in apprehension of suspects and better attribution of past crimes. The use of pattern based approaches has the potential to assist crime experts in discovering new patterns of criminal activity. Hence, research in this area continues. This paper revisits frequent pattern growth models for crime pattern mining. Frequent pattern (FP) based approaches, such as the FP-Growth model, have been identified to be more effective than techniques proposed in the past, such as Apriori. Therefore, this research proposes a descriptive statistical approach, based on a quartile (floor-ceil) function, for the minimum support threshold (MST) choice selection, which is a major decision step in the pruning phase of the Traditional FP-Growth (TFPG) model. Our revised frequent pattern growth (RFPG) model further proposes a Pattern-pattern ( Pp ) paradigm to identify tuples of subtle crime pattern(s) sequences or recurring trends in criminal activity. We present empirical results in order to guide intended audience about future decisions or research regarding this model. Results indicate that RFPG is more promising than TFPG and will always ensure the utilisation of a reasonable percentage of the crime dataset, in order to produce more reliable and sufficiently informative patterns or trends.
机译:在犯罪调查中识别相关犯罪是犯罪分析师的重要目标。这可以提供有助于逮捕嫌疑人和更好地归因于过去犯罪的证据。基于模式的方法的使用有可能帮助犯罪专家发现犯罪活动的新模式。因此,该领域的研究仍在继续。本文回顾了犯罪模式挖掘的频繁模式增长模型。已经发现基于频繁模式(FP)的方法(例如FP-Growth模型)比过去提出的技术(例如Apriori)更有效。因此,本研究提出了一种基于四分位数(底限)函数的描述性统计方法,用于最小支持阈值(MST)选择选择,这是传统FP-Growth(TFPG)修剪阶段的主要决策步骤。 )模型。我们修订的频繁模式增长(RFPG)模型进一步提出了一种模式-模式(Pp)范式,以识别微妙的犯罪模式序列或犯罪活动重复趋势中的元组。我们提供实证结果,以指导目标受众关于该模型的未来决策或研究。结果表明,RFPG比TFPG更有希望,并且将始终确保利用合理百分比的犯罪数据集,以便产生更可靠和足够有用的模式或趋势。

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