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MINIMIZATION OF COMPUTATIONAL DEMANDS IN MODEL AGNOSTIC CROSS-LINGUAL TRANSFER WITH NEURAL TASK REPRESENTATIONS AS WEAK SUPERVISION

机译:基于神经任务表示的模型不可知的交叉传输的计算需求最小化为弱监管

摘要

A task agnostic framework for neural model transfer from a first language to a second language, that can minimize computational and monetary costs by accurately forming predictions in a model of the second language by relying on only a labeled data set in the first language, a parallel data set between both languages, a labeled loss function, and an unlabeled loss function. The models may be trained jointly or in a two-stage process.
机译:从第一语言到第二语言的神经模型转移的任务不可知框架,这可以通过依赖于第一语言中的标记数据设置的第二语言模型中的准确形成计算和货币成本来最小化计算和货币成本。并行两种语言之间的数据集,标记丢失功能和未标记的损耗功能。该模型可以联合或在两阶段过程中进行培训。

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