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Visually Grounded Compound PCFGs

机译:视觉接地复合PCFGS

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摘要

Exploiting visual groundings for language understanding has recently been drawing much attention. In this work, we study visually grounded grammar induction and learn a constituency parser from both unlabeled text and its visual groundings. Existing work on this task (Shi et al., 2019) optimizes a parser via REINFORCE and derives the learning signal only from the alignment of images and sentences. While their model is relatively accurate overall, its error distribution is very uneven, with low performance on certain constituents types (e.g., 26.2% recall on verb phrases, VPs) and high on others (e.g., 79.6% recall on noun phrases, NPs). This is not surprising as the learning signal is likely insufficient for deriving all aspects of phrase-structure syntax and gradient estimates are noisy. We show that using an extension of probabilistic context-free grammar model we can do fully-differentiable end-to-end visually grounded learning. Additionally, this enables us to complement the image-text alignment loss with a language modeling objective. On the MSCOCO test captions, our model establishes a new state of the art, outperforming its non-grounded version and, thus, confirming the effectiveness of visual groundings in constituency grammar induction. It also substantially outperforms the previous grounded model, with largest improvements on more 'abstract' categories (e.g., +55.1% recall on VPs).
机译:对语言理解利用视觉搁浅最近一直画备受关注。在这项工作中,我们研究了视觉接地语法归纳,并从两个未标记的文字和其视觉搁浅学习选区解析器。这项任务的现有工作(Shi等,2019)通过优化加固解析器,只有从图片和句子的排列导出学习信号。虽然他们的模型是整体相对准确,其误差分布很不均匀,对某些成分的类型(在动词短语例如,26.2%的召回,副总裁)和其他高低温性能(例如,在名词短语79.6%的召回,NPS) 。这并不奇怪,作为学习信号导出短语结构语法和梯度估计的各个方面可能不足是嘈杂。我们发现,利用概率上下文无关文法模型中,我们可以做到完全结束微分到终端的视觉接地学习的延伸。此外,这有利于我们补充了语言建模的目标图像文本对齐损失。在MSCOCO测试字幕,我们的模型建立了一个新的艺术状态,比其未接地的版本,因此,确认在选区语法归纳视觉搁浅的有效性。它也基本上优于以前的植基模型,对多个“抽象”类别(上的VP例如,+ 55.1%召回)最大的改进。

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