Mining World Indicators for Analyzing and Modeling the Development of Countries

Hong Huang, Mingyuan Chi,Yu Song,Hai Jin

ACM/IMS Transactions on Data Science(2021)

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摘要
AbstractThe world indicators released by the World Bank or other organizations usually give the basic public knowledge about the world. However, separate and static index lacks the complex interplay among different indicators and thus cannot help us have an overall understanding of the world. To this end, we study the world indicators from a different angle. Firstly, we discover that there exist correlations between indicators either from a static view or from a dynamic view. Moreover, taking the trade and diplomatic relationships into consideration, we construct a multi-relational network to depict the interactions between different countries, and propose a Multiple Relations to Vector (MR2vec) model to study world indicators from a network perspective. The experimental results show the changes of world indicators are predictable with the proposed model, and our proposed MR2vec has wide adaptability in predicting multi-relation networks.
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关键词
World indicator,data mining,network embedding,dynamic network,multi-relation
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