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Association rules for data mining in item classification algorithm: Web service approach

机译:项目分类算法中数据挖掘的关联规则:Web服务方法

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The student's assessment is the core of learning process, which facilitates teachers to evaluate a student's knowledge level; furthermore, the precise measurement helps the students knowledge development reaches their full potential. Usually, this assessment method is also known as computer adaptive testing (CAT). The conventional CAT systems contain its own item bank, which is stored separately in many repositories over the Internet. The collection of the items from many repositories of database together makes these items were reused, sharable, valuable, and also makes the larger item bank. Unfortunately, the combined items make the tangled data, and greater data size. The problem of data overloaded occurs, and a large number of irrelevant and redundant data should be eliminated. This paper has attempted to formulate the data mining model in manipulate the optimal item-set from the different sources of the item. The item data from many repositories were mined in order to extract the implicit, useful information and interesting patterns from the huge irrelevant and redundant data collections. Therefore, the association rules were established by applying the knowledge pattern, decision trees, adaptive testing and related theory. The result shows that the association rules and mining process are used to create the optimal item-set. This optimal item-set was delivered through Web service to the CAT applications. The result also shows that data mining works properly. Moreover, the precise items help the students improve their knowledge reach their full potential.
机译:学生评估是学习过程的核心,它有助于教师评估学生的知识水平;此外,精确的测量有助于学生的知识发展达到最大的潜能。通常,这种评估方法也称为计算机自适应测试(CAT)。常规CAT系统包含其自己的项目库,该项目库通过Internet单独存储在许多存储库中。从许多数据库存储库中收集到的项目一起使这些项目被重用,可共享,有价值,也使项目库更大。不幸的是,合并后的项目使数据更加混乱,并且数据更大。发生数据过载的问题,应消除大量无关和冗余的数据。本文试图建立一种数据挖掘模型,以操纵来自不同项目来源的最佳项目集。挖掘了许多存储库中的项目数据,以便从庞大的不相关和冗余数据集中提取隐式,有用的信息和有趣的模式。因此,通过应用知识模式,决策树,自适应测试和相关理论来建立关联规则。结果表明,关联规则和挖掘过程可用于创建最佳项目集。通过Web服务将最佳项目集传递给CAT应用程序。结果还表明,数据挖掘工作正常。此外,精确的项目可以帮助学生提高知识水平,从而发挥其全部潜能。

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