Assessing text mining algorithm outcomes
| Year of publication: |
2020
|
|---|---|
| Authors: | Ashton, Triss ; Evangelopoulos, Nicholas ; Paswan, Audhesh ; Prybutok, Victor R. ; Pavur, Robert J. |
| Published in: |
Journal of business analytics. - London : Taylor & Francis Group, ISSN 2573-2358, ZDB-ID 2907637-7. - Vol. 3.2020, 2, p. 107-121
|
| Subject: | Text mining | algorithm testing | model development | latent semantic analysis | latent Dirichlet allocation | Data Mining | Data mining | Algorithmus | Algorithm | Text | Theorie | Theory |
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