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Issues on critical objects in mining algorithms

机译:挖掘算法中关键对象的问题

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摘要

Data objects are considered as fundamental keys in learning methods that without the objects the mining algorithms are meaningless. Data objects basically direct the accuracy of the selected algorithm in case if they are extracted from inappropriate groups. Knowing the exact type of data object leads the miner to provide a suitable environment for learning algorithms. Supervised and unsupervised learning methods propose some membership functions that perform with respect to behaviour of each data category to classify data objects and solutions. The paper explores different type of data objects by categorizing them based on their behaviour with respect to learning methods. We also introduce some critical objects that play the main role in each data set. Issues on critical objects in mining algorithms are fully discussed in this paper. The accuracy and behaviour of these critical objects are compared by running fuzzy, probabilistic, and possibilistic algorithms on some data sets presented in this paper. The results prove that some methods are able to provide a suitable environment for critical objects and some are not. The comparison results also show that most of the learning methods have difficulties dealing with critical objects. Lack of ability to deal with these objects may cause irreparable consequences.
机译:数据对象被视为学习方法中的基本键,没有这些对象,挖掘算法将毫无意义。如果数据对象是从不适当的组中提取的,则它们基本上指导所选算法的准确性。知道数据对象的确切类型会使矿工为学习算法提供合适的环境。有监督和无监督的学习方法提出了一些隶属度函数,这些函数针对每个数据类别的行为执行以对数据对象和解决方案进行分类。本文通过根据数据对象相对于学习方法的行为对其进行分类,探索了不同类型的数据对象。我们还介绍了一些关键对象,它们在每个数据集中起着主要作用。本文充分讨论了挖掘算法中关键对象的问题。通过对本文介绍的某些数据集运行模糊,概率和可能性算法,比较了这些关键对象的准确性和行为。结果证明,有些方法能够为关键对象提供合适的环境,而有些则不能。比较结果还表明,大多数学习方法都难以处理关键对象。缺乏处理这些物体的能力可能会导致无法挽回的后果。

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