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Second Language Transfer Learning in Humans and Machines Using Image Supervision

机译:人和机器中使用图像监督的第二语言迁移学习

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In the task of language learning, humans exhibit remarkable ability to learn new words from a foreign language with very few instances of image supervision. The question therefore is whether such transfer learning efficiency can be simulated in machines. In this paper, we propose a deep semantic model for transfer learning words from a foreign language (Japanese) using image supervision. The proposed model is a deep audio-visual correspondence network that uses a proxy based triplet loss. The model is trained with large dataset of multi-modal speech/image input in the native language (English). Then, a subset of the model parameters of the audio network are transfer learned to the foreign language words using proxy vectors from the image modality. Using the proxy based learning approach, we show that the proposed machine model achieves transfer learning performance for an image retrieval task which is comparable to the human performance. We also present an analysis that contrasts the errors made by humans and machines in this task.
机译:在语言学习的任务中,人类展示出了从外语学习新单词的非凡能力,几乎没有图像监督的情况。因此,问题是这样的迁移学习效率是否可以在机器中模拟。在本文中,我们提出了一种深度语义模型,用于使用图像监督从外语(日语)转移学习单词。所提出的模型是一种深度视听通信网络,该网络使用基于代理的三元组丢失。使用以母语(英语)输入的多模式语音/图像输入的大型数据集训练模型。然后,使用来自图像模态的代理向量,将音频网络的模型参数的子集学习到外语单词。使用基于代理的学习方法,我们表明,提出的机器模型可实现与图像检索任务相当的人类学习性能的转移学习性能。我们还提出了一项分析,该分析与人为和机器在此任务中所犯的错误进行了对比。

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