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Exploring Crowd Co-creation Scenarios for Sketches

2020-05-15 02:28:35
Devi Parikh, C. Lawrence Zitnick

Abstract

As a first step towards studying the ability of human crowds and machines to effectively co-create, we explore several human-only collaborative co-creation scenarios. The goal in each scenario is to create a digital sketch using a simple web interface. We find that settings in which multiple humans iteratively add strokes and vote on the best additions result in the sketches with highest perceived creativity (value + novelty). Lack of collaboration leads to a higher variance in quality and lower novelty or surprise. Collaboration without voting leads to high novelty but low quality.

Abstract (translated)

URL

https://arxiv.org/abs/2005.07328

PDF

https://arxiv.org/pdf/2005.07328.pdf


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