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Scalable Cross-Lingual Transfer of Neural Sentence Embeddings

机译:神经句嵌入的可扩展跨语言转移

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摘要

We develop and investigate several cross-lingual alignment approaches for neural sentence embedding models, such as the supervised inference classifier, InferSent, and sequential encoder-decoder models. We evaluate three alignment frameworks applied to these models: joint modeling, representation transfer learning, and sentence mapping, using parallel text to guide the alignment. Our results support representation transfer as a scalable approach for modular cross-lingual alignment of neural sentence embeddings, where we observe better performance compared to joint models in intrinsic and extrinsic evaluations, particularly with smaller sets of parallel data.
机译:我们开发和研究了几种用于神经句子嵌入模型的跨语言对齐方法,例如监督推理分类器,InferSent和顺序编码器-解码器模型。我们评估了应用于这些模型的三个对齐框架:联合建模,表示传递学习和句子映射,使用并行文本指导对齐。我们的结果支持将表示传递作为一种可扩展的方法,用于神经语句嵌入的模块化跨语言对齐,在内部和外部评估中,与联合模型相比,我们观察到更好的性能,尤其是在使用较少组并行数据的情况下。

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