Navigating the Dynamics of Financial Embeddings over Time
- URL: http://arxiv.org/abs/2007.00591v1
- Date: Wed, 1 Jul 2020 16:27:31 GMT
- Title: Navigating the Dynamics of Financial Embeddings over Time
- Authors: Antonia Gogoglou, Brian Nguyen, Alan Salimov, Jonathan Rider, C. Bayan
Bruss
- Abstract summary: We propose the application of Graph Representation Learning in a scalable dynamic setting.
We perform a rigorous qualitative analysis of the latent trajectories to extract real world insights.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Financial transactions constitute connections between entities and through
these connections a large scale heterogeneous weighted graph is formulated. In
this labyrinth of interactions that are continuously updated, there exists a
variety of similarity-based patterns that can provide insights into the
dynamics of the financial system. With the current work, we propose the
application of Graph Representation Learning in a scalable dynamic setting as a
means of capturing these patterns in a meaningful and robust way. We proceed to
perform a rigorous qualitative analysis of the latent trajectories to extract
real world insights from the proposed representations and their evolution over
time that is to our knowledge the first of its kind in the financial sector.
Shifts in the latent space are associated with known economic events and in
particular the impact of the recent Covid-19 pandemic to consumer patterns.
Capturing such patterns indicates the value added to financial modeling through
the incorporation of latent graph representations.
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