On the Three Demons in Causality in Finance: Time Resolution, Nonstationarity, and Latent Factors

Dong, Xinshuai, Dai, Haoyue, Fan, Yewen, Jin, Songyao, Rajendran, Sathyamoorthy, Zhang, Kun

arXiv.org Artificial Intelligence 

Financial data is generally time series in essence and thus suffers from three fundamental issues: the mismatch in time resolution, the time-varying property of the distribution - nonstationarity, and causal factors that are important but unknown/unobserved. In this paper, we follow a causal perspective to systematically look into these three demons in finance. Specifically, we reexamine these issues in the context of causality, which gives rise to a novel and inspiring understanding of how the issues can be addressed. Following this perspective, we provide systematic solutions to these problems, which hopefully would serve as a foundation for future research in the area.