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Comments on “Data science, big data and statistics”. (English) Zbl 1428.62017
Comment to [P. Galeano and D. Peña, ibid. 28, No. 2, 289–329 (2019; Zbl 1428.62021)].
62A01 Foundations and philosophical topics in statistics
68T05 Learning and adaptive systems in artificial intelligence
62M10 Time series, auto-correlation, regression, etc. in statistics (GARCH)
62H12 Estimation in multivariate analysis
62R07 Statistical aspects of big data and data science
DALEX; breakDown; live
Full Text: DOI
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