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Statistical Inference, Learning and Models in Big Data

Authors :
Franke, Beate
Plante, Jean-François
Roscher, Ribana
Lee, Annie
Smyth, Cathal
Hatefi, Armin
Chen, Fuqi
Gil, Einat
Schwing, Alexander
Selvitella, Alessandro
Hoffman, Michael M.
Grosse, Roger
Hendricks, Dieter
Reid, Nancy
Source :
Int Stat Rev 84 (2017) 371-389
Publication Year :
2015

Abstract

The need for new methods to deal with big data is a common theme in most scientific fields, although its definition tends to vary with the context. Statistical ideas are an essential part of this, and as a partial response, a thematic program on statistical inference, learning, and models in big data was held in 2015 in Canada, under the general direction of the Canadian Statistical Sciences Institute, with major funding from, and most activities located at, the Fields Institute for Research in Mathematical Sciences. This paper gives an overview of the topics covered, describing challenges and strategies that seem common to many different areas of application, and including some examples of applications to make these challenges and strategies more concrete.<br />Comment: Thematic Program on Statistical Inference, Learning, and Models for Big Data, Fields Institute; 23 pages, 2 figures

Details

Database :
arXiv
Journal :
Int Stat Rev 84 (2017) 371-389
Publication Type :
Report
Accession number :
edsarx.1509.02900
Document Type :
Working Paper
Full Text :
https://doi.org/10.1111/insr.12176