[go: up one dir, main page]
More Web Proxy on the site http://driver.im/

To read this content please select one of the options below:

Predicting popular contributors in innovation crowds: the case of My Starbucks Ideas

Chien-Yi Hsiang (The Department of Management Sciences, National Chiao Tung University, Hsinchu, Taiwan)
Julia Taylor Rayz (The Department of Computer and Information Technology, Purdue University, West Lafayette, Indiana, USA)

Information Technology & People

ISSN: 0959-3845

Article publication date: 11 September 2020

Issue publication date: 28 March 2022

1594

Abstract

Purpose

This study aims to predict popular contributors through text representations of user-generated content in open crowds.

Design/methodology/approach

Three text representation approaches – count vector, Tf-Idf vector, word embedding and supervised machine learning techniques – are used to generate popular contributor predictions.

Findings

The results of the experiments demonstrate that popular contributor predictions are considered successful. The F1 scores are all higher than the baseline model. Popular contributors in open crowds can be predicted through user-generated content.

Research limitations/implications

This research presents brand new empirical evidence drawn from text representations of user-generated content that reveals why some contributors' ideas are more viral than others in open crowds.

Practical implications

This research suggests that companies can learn from popular contributors in ways that help them improve customer agility and better satisfy customers' needs. In addition to boosting customer engagement and triggering discussion, popular contributors' ideas provide insights into the latest trends and customer preferences. The results of this study will benefit marketing strategy, new product development, customer agility and management of information systems.

Originality/value

The paper provides new empirical evidence for popular contributor prediction in an innovation crowd through text representation approaches.

Keywords

Acknowledgements

This paper forms part of a special section “Perspectives on the value of Big Data sharing”, guest edited by Christopher Tucci and Gianluigi Viscusi. The authors thank the anonymous reviewers for the constructive suggestions.

Citation

Hsiang, C.-Y. and Rayz, J.T. (2022), "Predicting popular contributors in innovation crowds: the case of My Starbucks Ideas", Information Technology & People, Vol. 35 No. 2, pp. 494-509. https://doi.org/10.1108/ITP-04-2019-0171

Publisher

:

Emerald Publishing Limited

Copyright © 2020, Emerald Publishing Limited

Related articles