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Comparative Study of Association Rule Mining and MiSTIC in Extracting Spatio-temporal Disease Occurrences Patterns

机译:关联规则挖掘与MiSTIC提取时空疾病发生模式的比较研究

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Extracting interesting and useful patterns from spatio-temporal datasets is more difficult than extracting the corresponding patterns from traditional numeric and categorical data due to the complexity of spatial data types and the embedded topologies, spatial and temporal relationships, and spatial autocorrelation. The objective of epidemiology is to identify disease causes and correlating them to spatially explicit disease patterns and variations in health risks. The main issue in traditional mining of association rules in disease surveillance data is that a large number of rules are discovered, but most of them are of limited use in addressing the stated objectives or original questions asked. Moreover, not all of the generated rules are interesting (due to their inability to conclusively mine spatio-temporal prevalence and causative factors of diseases), and some rules may be ignored. These drawbacks result as these methods ignore the inherent spatio-temporal dependency in such data. This paper makes a case for the use of MiSTIC algorithm to address these issues, compare the use of traditional association rule mining in context of Salmonellosis disease management, and share new insights. An illustrative case study presented here suggests that in comparison to traditional association rule mining, even simple spatio-temporal data mining approaches taking into consideration the spatio-temporal interdependencies in disease data, can provide new and valuable scientific insights towards efficient disease surveillance and management.
机译:由于空间数据类型和嵌入式拓扑的复杂性,空间和时间关系以及空间自相关性,从时空数据集中提取有趣且有用的模式比从传统的数值和分类数据中提取相应的模式更为困难。流行病学的目的是确定疾病原因,并将其与空间上明确的疾病模式和健康风险变化相关联。在疾病监控数据中传统挖掘关联规则的主要问题是发现了大量规则,但是大多数规则在解决既定目标或提出的原始问题时用途有限。此外,并非所有生成的规则都很有趣(由于它们无法最终挖掘时空流行和疾病的致病因素),有些规则可能会被忽略。由于这些方法忽略了此类数据中固有的时空依赖性,因此产生了这些缺点。本文以使用MiSTIC算法解决这些问题为例,在沙门氏菌病管理的背景下比较传统关联规则挖掘的使用,并分享新的见解。这里提供的一个示例性案例研究表明,与传统的关联规则挖掘相比,即使是简单的时空数据挖掘方法,只要考虑到疾病数据中时空的相互依赖性,都可以为有效的疾病监视和管理提供新的有价值的科学见解。

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