The usage of large data sets in online consumer behaviour : a bibliometric and computational text-mining–driven analysis of previous research
Year of publication: |
2020
|
---|---|
Authors: | Vanhala, Mika ; Lu, Chien ; Peltonen, Jaakko ; Sundqvist, Sanna ; Nummenmaa, Jyrki ; Järvelin, Kalervo |
Published in: |
Journal of business research : JBR. - New York, NY : Elsevier, ISSN 0148-2963, ZDB-ID 189773-1. - Vol. 106.2020, p. 46-59
|
Subject: | Bibliometric analysis | Consumer behaviour | Large datasets | Online | Text analysis | Konsumentenverhalten | Bibliometrie | Bibliometrics | Online-Handel | Online retailing |
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