Forecasting Company Fundamentals
Company fundamentals are key to assessing companies' financial and overall success and stability. Forecasting them is important in multiple fields, including investing and econometrics. While statistical and contemporary machine learning methods have been applied to many time series tasks, ther...
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Zusammenfassung: | Company fundamentals are key to assessing companies' financial and overall
success and stability. Forecasting them is important in multiple fields,
including investing and econometrics. While statistical and contemporary
machine learning methods have been applied to many time series tasks, there is
a lack of comparison of these approaches on this particularly challenging data
regime. To this end, we try to bridge this gap and thoroughly evaluate the
theoretical properties and practical performance of 22 deterministic and
probabilistic company fundamentals forecasting models on real company data. We
observe that deep learning models provide superior forcasting performance to
classical models, in particular when considering uncertainty estimation. To
validate the findings, we compare them to human analyst expectations and find
that their accuracy is comparable to the automatic forecasts. We further show
how these high-quality forecasts can benefit automated stock allocation. We
close by presenting possible ways of integrating domain experts to further
improve performance and increase reliability. |
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DOI: | 10.48550/arxiv.2411.05791 |