Text classification for organizational researchers : a tutorial
Year of publication: |
July 2018
|
---|---|
Authors: | Kobayashi, Vladimer B. ; Mol, Stefan T. ; Berkers, Hannah A. ; Kismihók, Gábor ; Den Hartog, Deanne N. |
Published in: |
Organizational research methods : ORM. - Thousand Oaks, Calif. [u.a] : Sage, ISSN 1094-4281, ZDB-ID 1427023-7. - Vol. 21.2018, 3, p. 766-799
|
Subject: | text classification | text mining | random forest | support vector machines | naive Bayes | Mustererkennung | Pattern recognition | Klassifikation | Classification | Data Mining | Data mining | Text | Theorie | Theory |
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