Exploring Financial Relationships Using Probabilistic Topic Models (Demonstration Paper)

L. Raschid, Zheng Xu, Elena Zotkina
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Abstract

Understanding relationships among financial entities can provide insight into the behavior of complex financial eco-systems. In this demonstration paper, we consider datasets of financial documents that describe the activity or role played by a financial institution (FI), typically with respect to a financial product or another financial entity. We develop community models based on financial institutions (FI) and their behavior or activity described by their roles (Role). Our models are based on an intuitive assumption that FIs will form communities, and FIs within a community are more likely to collaborate with other FIs in that community, and to play the same role, in other communities. Inspired by the Latent Dirichlet Allocation (LDA) and topic models, we develop several probabilistic financial community models and we use those models to identify interesting financial communities in two datasets.
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利用概率主题模型探索金融关系(演示论文)
理解金融实体之间的关系可以洞察复杂金融生态系统的行为。在本演示文件中,我们考虑描述金融机构(FI)的活动或角色的金融文件数据集,通常涉及金融产品或另一个金融实体。我们开发了基于金融机构(FI)及其角色(Role)描述的行为或活动的社区模型。我们的模型基于一个直观的假设,即金融机构将形成社区,社区内的金融机构更有可能与社区内的其他金融机构合作,并在其他社区中扮演同样的角色。受潜在狄利克雷分配(Latent Dirichlet Allocation, LDA)和主题模型的启发,我们开发了几个概率金融社区模型,并使用这些模型在两个数据集中识别有趣的金融社区。
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