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Learning a fuzzy decision tree from uncertain data

机译:从不确定数据中学习模糊决策树

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Uncertainty in data exists when the value of a data item is not a precise value, but rather by an interval data with a probability distribution function, or a probability distribution of multiple values. Since there are intrinsic differences between uncertain and certain data, it is difficult to deal with uncertain data using traditional classification algorithms. Therefore, in this paper, we propose a fuzzy decision tree algorithm based on a classical ID3 algorithm, it integrates fuzzy set theory and ID3 to overcome the uncertain data classification problem. Besides, we propose a discretization algorithm that enables our proposed Fuzzy-ID3 algorithm to handle the interval data. Experimental results show that our Fuzzy-ID3 algorithm is a practical and robust solution to the problem of uncertain data classification and that it performs better than some of the existing algorithms.
机译:当数据项的值不是精确值,而是具有概率分布函数或多个值的概率分布的间隔数据时,数据中存在不确定性。由于不确定数据和某些数据之间存在内在差异,因此使用传统分类算法很难处理不确定数据。因此,本文提出了一种基于经典ID3算法的模糊决策树算法,该算法将模糊集理论与ID3相结合,克服了不确定数据分类问题。此外,我们提出了一种离散化算法,使我们提出的Fuzzy-ID3算法能够处理区间数据。实验结果表明,我们的Fuzzy-ID3算法是一种解决不确定数据分类问题的实用且可靠的解决方案,并且其性能优于某些现有算法。

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