DaFNeGE: Dataset of French Newsletters with Graph Representation and Embedding
TEXT, SPEECH, AND DIALOGUE (TSD 2022)(2022)
摘要
Natural language resources are essential for integrating linguistic engineering components into information processing suites. However, the resources available in French are scarce and do not cover all possible tasks, especially for specific business applications. In this context, we present a dataset of French newsletters and their use to predict their impact, good or bad, on readers. We propose an original representation of newsletters in the form of graphs that take into account the layout of the newsletters. We then evaluate the interest of such a representation in predicting a newsletter's performance in terms of open and click rates using graph convolution network models.
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关键词
Newsletter, Dataset, Multimodal resource, Graph embedding, Graph convolutional network
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