Kaminski, Jermain C.; Hopp, Christian (2020). Predicting outcomes in crowdfunding campaigns with textual, visual, and linguistic signals Small Business Economics, 55(3), pp. 627-649. Springer 10.1007/s11187-019-00218-w
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This paper introduces a neural network and natural language processing approach to predict the outcome of crowdfunding startup pitches using text, speech, and video metadata in 20,188 crowdfunding campaigns. Our study emphasizes the need to understand crowdfunding from an investor’s perspective. Linguistic styles in crowdfunding campaigns that aim to trigger excitement or are aimed at inclusiveness are better predictors of campaign success than firm-level determinants. At the contrary, higher uncertainty perceptions about the state of product development may substantially reduce evaluations of new products and reduce purchasing intentions among potential funders. Our findings emphasize that positive psychological language is salient in environments where objective information is scarce and where investment preferences are taste based. Employing enthusiastic language or showing the product in action may capture an individual’s attention. Using all technology and design-related crowdfunding campaigns launched on Kickstarter, our study underscores the need to align potential consumers’ expectations with the visualization and presentation of the crowdfunding campaign.
Item Type: |
Journal Article (Original Article) |
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Division/Institute: |
Business School > Business Foundations and Methods |
Name: |
Kaminski, Jermain C. and Hopp, Christian0000-0002-4095-092X |
ISSN: |
0921-898X |
Publisher: |
Springer |
Language: |
English |
Submitter: |
Christian Hopp |
Date Deposited: |
16 Sep 2020 12:18 |
Last Modified: |
23 Oct 2021 02:17 |
Publisher DOI: |
10.1007/s11187-019-00218-w |
Uncontrolled Keywords: |
Startups Crowdfunding Pitch Machinelearning Neural network Natural language processing |
ARBOR DOI: |
10.24451/arbor.11978 |
URI: |
https://arbor.bfh.ch/id/eprint/11978 |