Understanding big consumer opinion data for market-driven product design
Year of publication: |
1-15 May 2016
|
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Authors: | Jin, Jian ; Liu, Ying ; Ji, Ping ; Liu, Hongguang |
Published in: |
International journal of production research. - London : Taylor & Francis, ISSN 0020-7543, ZDB-ID 160477-6. - Vol. 54.2016, 9/10 (1/15.5.), p. 3019-3041
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Subject: | big data | customer requirement | sentiment analysis | product comparison | trends analysis | product design | conceptual design | text mining | Data Mining | Data mining | Produktgestaltung | Product design | Konsumentenverhalten | Consumer behaviour | Text | Big Data | Big data |
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