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Instance ranking with multiple linear regression: Pointwise vs. listwise approaches

机译:具有多重线性回归的实例排名:逐点与列表方式

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This paper presents a comparison between listwise and pointwise approaches for instance ranking using Multiple Linear Models. A theoretical review of both approaches is performed, including the evaluation methods. Experiments done in seven datasets from 4 different problems show that the pointwise approach is slightly better or similar than the listwise approach. However the models obtained with the listwise approach are more interpretable because they have in average fewer features than the models obtained with the pointwise approach. The obtained results are important for problems where interpretable ranking models are necessary.
机译:本文介绍了使用多重线性模型进行实例排名的逐列表方法和逐点方法之间的比较。对这两种方法进行了理论评估,包括评估方法。在来自4个不同问题的七个数据集中进行的实验表明,按点方法比按列表方法更好或更相似。但是,使用列表方法获得的模型比使用点方法获得的模型平均具有更少的特征,因此更具解释性。对于需要可解释的排名模型的问题,获得的结果非常重要。

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