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Discovering Numeric Association Rules via Evolutionary Algorithm

机译:通过进化算法发现数字关联规则

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Association rules are one of the most used tools to discover relationships among attributes in a database. Nowadays, there are many efficient techniques to obtain these rules, although most of them require that the values of the attributes be discrete. To solve this problem, these techniques discretize the numeric attributes, but this implies a loss of information. In a general way, these techniques work in two phases: in the first one they try to find the sets of attributes that are, with a determined frequency, within the database (frequent itemsets), and in the second one, they extract the association rules departing from these sets. In this paper we present a technique to find the frequent itemsets in numeric databases without needing to discretize the attributes. We use an evolutionary algorithm to find the intervals of each attribute that conforms a frequent itemset. The evaluation function itself will be the one that decide the amplitude of these intervals. Finally, we evaluate the tool with synthetic and real databases to check the efficiency of our algorithm.
机译:关联规则是发现数据库中属性之间关系的最常用工具之一。如今,尽管有许多要求将属性的值离散化的方法,但仍有许多有效的技术可用于获取这些规则。为了解决此问题,这些技术离散化了数字属性,但这意味着信息丢失。通常,这些技术分两个阶段起作用:在第一个阶段中,他们尝试查找数据库(频率较高的项目集)中具有确定频率的属性集,在第二个阶段中,他们提取关联。规则从这些集合出发。在本文中,我们提出了一种无需离散化属性即可在数字数据库中查找频繁项集的技术。我们使用进化算法来找到符合频繁项集的每个属性的间隔。评估功能本身将决定这些间隔的幅度。最后,我们使用综合数据库和真实数据库对工具进行评估,以检查算法的效率。

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