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Evaluation of Unsupervised Compositional Representations

机译:评估无监督的组成代表性

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We evaluated various compositional models, from bag-of-words representations to compositional RNN-based models, on several extrinsic supervised and unsupervised evaluation benchmarks. Our results confirm that weighted vector averaging can outperform context-sensitive models in most benchmarks, but structural features encoded in RNN models can also be useful in certain classification tasks. We analyzed some of the evaluation datasets to identify the aspects of meaning they measure and the characteristics of the various models that explain their performance variance.
机译:我们评估了各种组成模型,从单词袋式表示到组成基于RNN的模型,在几个外在的监督和无监督的评估基准上。我们的结果证实,加权矢量平均可以在大多数基准中倾斜上下文敏感模型,但在RNN模型中编码的结构特征也可以在某些分类任务中有用。我们分析了一些评估数据集,以确定它们测量的含义的各个方面以及解释其性能方差的各种模型的特征。

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