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A Similarity-Based Adaptation of Naive Bayes for Label Ranking: Application to the Metalearning Problem of Algorithm Recommendation

机译:幼稚贝叶斯标签排名的相似性适应:应用于算法建议的冶金学习问题

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The problem of learning label rankings is receiving increasing attention from several research communities. A number of common learning algorithms have been adapted for this task, including k-Nearest Neighbours (k-NN) and decision trees. Following this line, we propose an adaptation of the naive Bayes classification algorithm for the label ranking problem. Our main idea lies in the use of similarity between the rankings to replace the concept of probability. We empirically test the proposed method on some metalearning problems that consist of relating characteristics of learning problems to the relative performance of learning algorithms. Our method generally performs better than the baseline indicating that it is able to identify some of the underlying patterns in the data.
机译:学习标签排名的问题正在接受几个研究社区的增加。已经适用于此任务的许多常见学习算法,包括K-Collect邻居(K-NN)和决策树。在此行之后,我们提出了一种适应标签排名问题的天真贝叶斯分类算法。我们的主要观点在于在排名之间使用相似性来取代概率的概念。我们在经验上测试了一些关于一些冶金工程问题的方法,该方法包括与学习算法的相对性能相关的学习问题的特征。我们的方法通常比基线更好地表现出它能够识别数据中的一些底层模式。

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