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Association rules mining on forest fires data using FP-Growth and ECLAT algorithm

机译:使用FP-Growth和ECLAT算法对森林火灾数据进行关联规则挖掘

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Forest fires and land are a serious problem that must be solved by the Indonesian government including Riau Province. One of forest fires prevention effort is discovering relationship patterns of hotspot occurrences as fire indicators with characteristics of geographic objects where the hotspots occur. The objective of this research is to apply the multidimensional association rule mining method with Frequent Pattern Growth algorithm (FP-Growth) and Equivalence Class Transformation algorithm (ECLAT) to determine association patterns between hotspot occurrences and its supporting factors. The factors that influence hotspot occurrences were discovered on minimum support of 30% and minimum confidence of 80% with hotspot occurrence as the target attribute. The result of this research shows that strong relationships between hotspot occurrences and its influence factor were found with the the highest support of 44.49%, confidence of 100%, and lift of 1.02, where hotspot are mostly occurred in areas which has precipitation greater than or equal to 3 mm/day.
机译:森林大火和土地是一个严重的问题,印度尼西亚政府(包括廖内省)必须解决。预防森林火灾的一项工作是发现热点发生的关系模式,作为火灾指示器,并具有发生热点的地理对象的特征。本研究的目的是将多维关联规则挖掘方法与频繁模式增长算法(FP-Growth)和等价类转换算法(ECLAT)结合使用,以确定热点事件及其支持因素之间的关联模式。在以热点发生为目标属性的最小支持率为30%,最小置信度为80%的情况下,发现了影响热点发生的因素。研究结果表明,热点发生与影响因素之间存在很强的关系,最高支持度为44.49%,置信度为100%,提升度为1.02,热点主要发生在降水量大于或等于20%的区域。等于3毫米/天。

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