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A Sequential Set Generation Method for Predicting Set-Valued Outputs

机译:一种预测设定值输出的顺序集生成方法

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Consider a general machine learning setting where the output is a set of labels or sequences. This output set is unordered and its size varies with the input. Whereas multi-label classification methods seem a natural first resort, they are not readily applicable to set-valued outputs because of the growth rate of the output space; and because conventional sequence generation doesn't reflect sets' order-free nature. In this paper, we propose a unified framework-sequential set generation (SSG)-that can handle output sets of labels and sequences. SSG is a meta-algorithm that leverages any probabilistic learning method for label or sequence prediction, but employs a proper regularization such that a new label or sequence is generated repeatedly until the full set is produced. Though SSG is sequential in nature, it does not penalize the ordering of the appearance of the set elements and can be applied to a variety of set output problems, such as a set of classification labels or sequences. We perform experiments with both benchmark and synthetic data sets and demonstrate SSG's strong performance over baseline methods.
机译:考虑一个通用机器学习设置,其中输出是一组标签或序列。此输出集无序,其大小随输入而变化。虽然多标签分类方法似乎是自然的第一个手段,但由于输出空间的增长率,它们并不适用于设定值输出;因为传统的序列生成不反映设置的令人满意的性质。在本文中,我们提出了一个统一的框架顺序集生成(SSG) - 可以处理标签和序列的输出集。 SSG是一种元算法,它利用任何用于标签或序列预测的概率学习方法,而是采用适当的正则化,使得重复生成新的标签或序列直到产生完整集。虽然SSG本质上是连续的,但它不会惩罚设置元素的外观的排序,并且可以应用于各种设置输出问题,例如一组分类标签或序列。我们使用基准和合成数据集进行实验,并展示SSG对基线方法的强大性能。

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