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A graph-based semi-supervised approach to classification learning in digital geographies

机译:基于图的数字地理学分类学习的基于图的半监督方法

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摘要

As the distinction between online and physical spaces rapidly degrades, social media have now become an integral component of how many people's everyday experiences are mediated. As such, increasing interest has emerged in exploring how the content shared through those online platforms comes to contribute to the collaborative creation of places in physical space at the urban scale. Exploring digital geographies of social media data using methods such as qualitative coding (i.e., content labelling) is a flexible but complex task, commonly limited to small samples due to its impracticality over large datasets. In this paper, we propose a new tool for studies in digital geographies, bridging qualitative and quantitative approaches, able to learn a set of arbitrary labels (qualitative codes) on a small, manually-created sample and apply the same labels on a larger set. We introduce a semi-supervised, deep neural network approach to classify geo-located social media posts based on their textual and image content, as well as geographical and temporal aspects. Our innovative approach is rooted in our understanding of social media posts as augmentations of the time-space configurations that places are, and it comprises a stacked multi-modal autoencoder neural network to create joint representations of text and images, and a spatio-temporal graph convolution neural network for semi-supervised classification. The results presented in this paper show that our approach performs the classification of social media content with higher accuracy than traditional machine learning models as well as two state-of-art deep learning frameworks.
机译:随着在线和物理空间之间的区别迅速降低,社交媒体现在已成为介导有多少人日常经验的组成部分。因此,探讨了通过这些在线平台共享的内容如何为城市规模的物理空间的合作创作有助于创造的兴趣,越来越兴趣。使用诸如定性编码(即,内容标签)等方法探索社交媒体数据的数字地理位置是一种灵活但复杂的任务,通常限于由于其在大型数据集上的不切实际而导致的小样本。在本文中,我们提出了一种在数字地理学中研究的新工具,弥合定性和定量方法,能够在小型手动创建的样本上学习一组任意标签(定性代码)并在更大的集合上应用相同的标签。我们介绍了一个半监督深度神经网络方法,根据他们的文本和图像内容以及地理和时间方面来分类地理位置的社交媒体帖子。我们的创新方法植根于我们对社交媒体帖子的理解,因为所处的时间空间配置的增强,并且它包括堆叠的多模态AutoEncoder神经网络,用于创建文本和图像的联合表示,以及时空图形卷积神经网络,用于半监督分类。本文提出的结果表明,我们的方法在传统的机器学习模型以及两个最先进的深度学习框架中,我们的方法具有更高的准确性。

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