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Is a Data-Driven Approach Still Better Than Random Choice with Naive Bayes Classifiers?

机译:是一种数据驱动的方法仍然比朴素的贝叶斯分类器随机选择更好吗?

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We study the performance of data-driven, a priori and random approaches to label space partitioning for multi-label classification with a Gaussian Naive Bayes classifier. Experiments were performed on 12 benchmark data sets and evaluated on 5 established measures of classification quality: micro and macro averaged F1 score, subset accuracy and Hamming loss. Data-driven methods are significantly better than an average run of the random baseline. In case of F1 scores and Subset Accuracy - data driven approaches were more likely to perform better than random approaches than otherwise in the worst case. There always exists a method that performs better than a priori methods in the worst case. The advantage of data-driven methods against a priori methods with a weak classifier is lesser than when tree classifiers are used.
机译:我们研究了数据驱动的性能,先验和随机方法来标记与高斯天真贝叶斯分类器的多标签分类的空间分区。实验是在12个基准数据集进行的,并在5种规定的分类质量措施上进行评估:微观和宏观平均F1分数,子集准确性和汉明损失。数据驱动方法明显优于随机基线的平均运行。在F1分数和子集准确度的情况下,数据驱动方法比在最坏情况下比其他方式执行比随机方法更好。始终存在比最坏情况下的先验方法更好的方法。数据驱动方法对具有弱分类器的先验方法的优点是小于使用树分类器时的优势。

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