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An Occurrence Based Approach to Mine Emerging Sequences

机译:一种基于事件的矿井涌现序列方法

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An important purpose of sequence analysis is to find the distinguishing characteristics of sequence classes. Emerging Sequences (ESs), subsequences that are frequent in sequences of one group and less frequent in the sequences of another, can contrast sequences of different classes and thus facilitating sequence classification. Different approaches have been developed to extract ESs, in which various mining criterions are applied. In our work we compare Emerging Sequences fulfilling different constraints. By measuring ESs with their occurrences, introducing gap constraint and keeping the uniqueness of items, our ESs demonstrate desirable discriminative power. Evaluating against two mining algorithms based on support and no gap constraint subsequences, the experiments on two types of datasets show that the ESs fulfilling our selection criterions achieve a satisfactory classification accuracy: an average F-measure of 93.2% is attained when the experiments are performed on 11 datasets.
机译:序列分析的一个重要目的是找到序列类的区别特征。新兴序列(ESs)是一组序列中频繁出现的子序列,而另一组序列中很少出现的子序列,可以对不同类别的序列进行对比,从而有助于序列分类。已开发出不同的方法来提取ES,其中应用了各种挖掘标准。在我们的工作中,我们比较了满足不同约束条件的新兴序列。通过测量ES的出现情况,引入间隙约束并保持项目的唯一性,我们的ES表现出理想的区分能力。对基于支持和无间隙约束子序列的两种挖掘算法进行评估,对两种类型的数据集进行的实验表明,满足我们选择标准的ES达到了令人满意的分类准确度:进行实验时,平均F值达到93.2%在11个数据集上。

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