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Like a Baby: Visually Situated Neural Language Acquisition

机译:像婴儿一样:视觉上位于神经语言习得

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We examine the benefits of visual context in training neural language models to perform next-word prediction. A multi-modal neural architecture is introduced that outperform its equivalent trained on language alone with a 2% decrease in perplexity, even when no visual context is available at test. Fine-tuning the embeddings of a pre-trained state-of-the-art bidirectional language model (BERT) in the language modeling framework yields a 3.5% improvement. The advantage for training with visual context when testing without is robust across different languages (English, German and Spanish) and different models (GRU, LSTM, A-RNN, as well as those that use BERT embeddings). Thus, language models perform better when they learn like a baby, i.e, in a multi-modal environment. This finding is compatible with the theory of situated cognition: language is inseparable from its physical context.
机译:我们在培训神经语言模型中检查视觉上下文的好处,以执行下一个字预测。引入了多模态神经结构,以至于,即使在无视觉上下文中没有可见的情况下,单独的语言验证的对语言的等效训练也是如此。微调语言建模框架中预先训练的最先进的双向语言模型(BERT)的嵌入产生了3.5%的改进。在测试时使用视觉上下文训练的优势在没有跨不同语言(英语,德语和西班牙语)和不同型号(GRU,LSTM,A-RNN以及使用BERT EMBEDDES的模型)的强大。因此,当他们在多模态环境中像婴儿一样学习时,语言模型更好地表现更好。此发现与位于认知的理论兼容:语言与其物理背景密不可分。

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