Challenges and opportunities for statistics in the era of data science Review


Authors: Kirch, C.; Lahiri, S.; Binder, H.; Brannath, W.; Cribben, I.; Dette, H.; Doebler, P.; Feng, O.; Gandy, A.; Greven, S.; Hammer, B.; Harmeling, S.; Hotz, T.; Kauermann, G.; Krause, J.; Krempl, G.; Nieto-Reyes, A.; Okhrin, O.; Ombao, H.; Pein, F.; Pešta, M.; Politis, D.; Qin, L. X.; Rainforth, T.; Rauhut, H.; Reeve, H.; Salinas, D.; Schmidt-Hieber, J.; Scott, C.; Segers, J.; Spiliopoulou, M.; Wilhelm, A.; Wilms, I.; Yu, Y.; Lederer, J.
Review Title: Challenges and opportunities for statistics in the era of data science
Abstract: Statistics as a scientific discipline is currently facing the great challenge of finding its place in data science once more. At the beginning of the last century, the development of the discipline of statistics was initiated by data-related research questions. Nowadays, it is often viewed to have not kept up with the current developments in data science, which are largely focused on algorithmic, exploratory, and computational aspects and often driven by other disciplines, such as computer science. However, statistics can-and should-contribute to the advances of data science. Of most interest are the strengths of statistics, such as the mathematical focus that leads to theoretical guarantees. This includes methods for formal modeling, hypothesis tests, uncertainty quantification, and statistical inference. Of particular interest are also established statistical frameworks to handle causality or data deficiencies such as dependence, missingness, biases, or confounding. This article summarizes the findings of a discussion workshop on the topic that was held in June 2023 in Hannover, Germany. The discussion centered around the following questions: How must statistics be set up so that it can contribute (more) to modern data science? In which direction should it develop further? Which strengths can already be used now? What conditions must be created so that this can succeed? What can be done to arrive at a common language? What is the added value of formal modeling, inference, and the mathematical perspective taken in statistics?
Keywords: reproducibility; normalization; framework; regression; confidence; machine learning; neural-networks; missing data; bootstrap; deep; big data; identifiability; uncertainty quantification; generalization; overparametrization; dimensionality
Journal Title: Harvard Data Science Review
Volume: 7
Issue: 2
ISSN: 2688-8513
Publisher: MIT Press  
Date Published: 2025-01-01
Start Page: ufaltur6
Language: English
ACCESSION: WOS:001520662400001
DOI: 10.1162/99608f92.abf14c9d
PROVIDER: wos
Notes: Article -- The PDF lists the publication date as Spring -- Source: Wos
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  1. Li-Xuan Qin
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