Published December 5, 2020 | Version V1
Dataset Open

Enhancing Crowd Creativity as Innovation via Teamwork: Dataset

  • 1. Delft University of Technology
  • 2. University of Bristol
  • 3. Rochester Institute of Technology
  • 4. North Carolina State University

Description

These data files correspond to the results produced in the following paper currently accepted for publication.

Pradeep K. Murukannaiah, Nirav Ajmeri, and Munindar P. Singh. 2022. Enhancing Creativity as Innovation via Asynchronous Crowdwork. In Proceedings of the 14th ACM Web Science Conference. Pages 1--9. To Appear.

----------
Data files
----------

* all_scenarios.csv: 1,823 scenarios produced by MTurk workers

* rated_scenarios.csv: 639 scenarios rated for creativity by three authors (700 scenarios were randomly selected for rating. 61 scenarios of these 700 scenarios were unclear or irrelevant and thus were discarded)

* creativity.csv: data for RQ1 (Creativity)

* personality-creativty.csv and team-composition-creativity.csv: data for RQ2 (Personality)

* efficiency.csv: data for RQ3 (Efficiency)

* emotions.csv: data for RQ4 (Emotions)

Files

all_scenarios.csv

Files (433.2 kB)

Name Size Download all
md5:549b41547320aeaf01b1293b858a859a
399.8 kB Preview Download
md5:ae61c4e08c2216ffe38445fef9db6105
7.1 kB Preview Download
md5:5a2d8d50171354216eb56604b15e6c81
1.3 kB Preview Download
md5:cbb50ae17211e49912c10e6b0af41711
2.3 kB Preview Download
md5:ddbfc8b5735709b0eb8a4ed510fcec12
7.1 kB Preview Download
md5:514d497069e91d85e8aedab0100657b9
12.4 kB Preview Download
md5:af09eb07846802fd9c864b4fc7b0230e
3.3 kB Preview Download