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Constructing Semantic Models From Words, Images, and Emojis

机译:从单词,图像和表情符号构建语义模型

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摘要

A number of recent models of semantics combine linguistic information, derived from text corpora, and visual information, derived from image collections, demonstrating that the resulting multimodal models are better than either of their unimodal counterparts, in accounting for behavioral data. Empirical work on semantic processing has shown that emotion also plays an important role especially in abstract concepts; however, models integrating emotion along with linguistic and visual information are lacking. Here, we first improve on visual and affective representations, derived from state-of-the-art existing models, by choosing models that best fit available human semantic data and extending the number of concepts they cover. Crucially then, we assess whether adding affective representations (obtained from a neural network model designed to predict emojis from co-occurring text) improves the model's ability to fit semantic similarity/relatedness judgments from a purely linguistic and linguistic-visual model. We find that, given specific weights assigned to the models, adding both visual and affective representations improves performance, with visual representations providing an improvement especially for more concrete words, and affective representations improving especially the fit for more abstract words.
机译:许多最近的语义模型结合了从文本语料库获得的语言信息和从图像集合获得的视觉信息,证明了在考虑行为数据方面,所得的多峰模型优于单峰模型。关于语义处理的经验研究表明,情绪也起着重要作用,尤其是在抽象概念中。但是,缺乏将情感以及语言和视觉信息整合在一起的模型。在这里,我们首先通过选择最适合可用人类语义数据的模型并扩展其涵盖的概念数量,来改进从现有技术模型中获得的视觉和情感表示。然后,至关重要的是,我们评估是否添加情感表示(从旨在同时出现的文本来预测表情符号的神经网络模型中获得)能否提高模型拟合纯语言和语言视觉模型的语义相似性/相关性判断的能力。我们发现,在给模型分配特定权重的情况下,添加视觉表示和情感表示都可以提高性能,其中视觉表示尤其针对更具体的单词提供了改进,而情感表示尤其针对更抽象的单词提供了适合性。

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