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Effectiveness of Hierarchical Softmax in Large Scale Classification Tasks

机译:分层Softmax在大规模分类任务中的有效性

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Typically, Softmax is used in the final layer of a neural network to get a probability distribution for output classes. But the main problem with Softmax is that it is computationally expensive for large scale data sets with large number of possible outputs. To approximate class probability efficiently on such large scale data sets we can use Hierarchical Softmax. LSHTC datasets were used to study the performance of the Hierarchical Softmax. LSHTC datasets have large number of categories. In this paper we evaluate and report the performance of normal Softmax Vs Hierarchical Softmax on LSHTC datasets. This evaluation used macro f1 score as a performance measure. The observation was that the performance of Hierarchical Softmax degrades as the number of classes increase.
机译:通常,Softmax用于神经网络的最后一层,以获取输出类别的概率分布。但是Softmax的主要问题在于,对于具有大量可能输出的大规模数据集,其计算量很大。为了在如此大规模的数据集上有效地近似类别概率,我们可以使用Hierarchical Softmax。 LSHTC数据集用于研究分层Softmax的性能。 LSHTC数据集具有大量类别。在本文中,我们评估并报告了LSHTC数据集上正常Softmax与分层Softmax的性能。该评估使用宏f1分数作为性能指标。可以观察到,随着类数的增加,分层Softmax的性能会下降。

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