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Deep Multi-cultural Graph Representation Learning

机译:深度多元文化图表示学习

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This research aims at the development of a knowledge representation that will elucidate and visualize the differences and similarities between concepts expressed in different languages and cultures. Wikipedia graph structure is considered around one concept namely "Nazism" in two languages, English and German for the purpose of understanding how online knowledge crowdsourcing platforms will be affected by different language groups and their cultures. The solution is divided into capturing structure of weighted graph representation learning via random surfing, cross-lingual document similarity via Jaccard similarity, multi-view representation learning by deploying Deep Canonical Correlation Autoencoder (DCCAE) and sentiment classification task via SVM. Our method shows superior performance on word similarity task. Based on our best knowledge, it is the first application of DCCAE in this context.
机译:这项研究旨在开发一种知识表示形式,以阐明和可视化以不同语言和文化表达的概念之间的差异和相似性。 Wikipedia的图结构被视为围绕一种概念,即英语和德语两种语言的“纳粹主义”,目的是了解在线知识众包平台将如何受到不同语言群体及其文化的影响。该解决方案分为通过随机冲浪的加权图表示学习捕获结构,通过Jaccard相似度进行跨语言文档相似性捕获,通过部署深度规范相关自动编码器(DCCAE)进行多视图表示学习以及通过SVM进行情感分类任务。我们的方法在单词相似性任务上表现出卓越的性能。根据我们的最佳知识,这是DCCAE在这种情况下的第一个应用程序。

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