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Relation Prediction in Multilingual Data Based on Multimodal Relational Topic Models

机译:基于多模式关系主题模型的多语言数据关系预测

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There are increasing demands for improved analysis of multimodal data that consist of multiple representations, such as multilingual documents and text-annotated images. One promising approach for analyzing such multimodal data is latent topic models. In this paper, we propose conditionally independent generalized relational topic models (CI-gRTM) for predicting unknown relations across different multiple representations of multimodal data. We developed CI-gRTM as a multimodal extension of discriminative relational topic models called generalized relational topic models (gRTM). We demonstrated through experiments with multilingual documents that CI-gRTM can more effectively predict both multilingual representations and relations between two different language representations compared with several state-of-the-art baseline models that enable to predict either multilingual representations or unimodal relations.
机译:越来越多的需求要求改进对包含多种表示形式的多模式数据进行分析,例如多语言文档和带有文本注释的图像。一种用于分析此类多峰数据的有前途的方法是潜在主题模型。在本文中,我们提出了条件独立的广义关系主题模型(CI-gRTM),用于预测多模式数据的不同多重表示之间的未知关系。我们将CI-gRTM开发为歧视性关系主题模型的多模式扩展,称为广义关系主题模型(gRTM)。通过与多语言文档的实验,我们证明了CI-gRTM与几种能够预测多语言表示或单峰关系的最先进的基线模型相比,可以更有效地预测多语言表示和两种不同语言表示之间的关系。

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