资产聚类的动态潜在空间模型

Roberto Casarin, Antonio Peruzzi
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引用次数: 0

摘要

金融动荡时期的特点不仅是资产之间的相关性较高,而且它们的整体聚类结构也发生了变化。在这项工作中,我们开发了一个动态的潜在空间混合模型,用于在精细尺度上捕捉金融资产聚类结构的变化。通过这个模型,我们能够将股票投射到一个较低维度的流形上,并检测到集群的存在。无限混合假设确保了推理的可追溯性,并适应了簇数较大的情况。我们所依赖的贝叶斯框架考虑了参数空间中的不确定性,并允许包含先验知识。在一个合适的合成数据集上测试了我们的模型的有效性和推断后,我们将模型应用于两个参考股票指数的相互关联序列。我们的模型正确地捕获了时变资产聚类的存在。此外,我们注意到资产的潜在坐标如何与相关的金融因素(如市值和波动性)相关。最后,我们发现进一步的证据表明,集群的数量似乎在金融危机期间飙升。
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A Dynamic Latent-Space Model for Asset Clustering
Periods of financial turmoil are not only characterized by higher correlation across assets but also by modifications in their overall clustering structure. In this work, we develop a dynamic Latent-Space mixture model for capturing changes in the clustering structure of financial assets at a fine scale. Through this model, we are able to project stocks onto a lower dimensional manifold and detect the presence of clusters. The infinite-mixture assumption ensures tractability in inference and accommodates cases in which the number of clusters is large. The Bayesian framework we rely on accounts for uncertainty in the parameters’ space and allows for the inclusion of prior knowledge. After having tested our model’s effectiveness and inference on a suitable synthetic dataset, we apply the model to the cross-correlation series of two reference stock indices. Our model correctly captures the presence of time-varying asset clustering. Moreover, we notice how assets’ latent coordinates may be related to relevant financial factors such as market capitalization and volatility. Finally, we find further evidence that the number of clusters seems to soar in periods of financial distress.
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