Needmining: Identifying micro blog data containing customer needs
- URL: http://arxiv.org/abs/2003.05917v1
- Date: Thu, 12 Mar 2020 17:31:51 GMT
- Title: Needmining: Identifying micro blog data containing customer needs
- Authors: Niklas K\"uhl, Jan Scheurenbrand, Gerhard Satzger
- Abstract summary: We propose a Machine Learning approach to identify those posts that do express needs.
Our evaluation of tweets in the e-mobility domain demonstrates that the small share of relevant tweets can be identified with remarkable precision.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The design of new products and services starts with the identification of
needs of potential customers or users. Many existing methods like observations,
surveys, and experiments draw upon specific efforts to elicit unsatisfied needs
from individuals. At the same time, a huge amount of user-generated content in
micro blogs is freely accessible at no cost. While this information is already
analyzed to monitor sentiments towards existing offerings, it has not yet been
tapped for the elicitation of needs. In this paper, we lay an important
foundation for this endeavor: we propose a Machine Learning approach to
identify those posts that do express needs. Our evaluation of tweets in the
e-mobility domain demonstrates that the small share of relevant tweets can be
identified with remarkable precision or recall results. Applied to huge data
sets, the developed method should enable scalable need elicitation support for
innovation managers - across thousands of users, and thus augment the service
design tool set available to him.
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