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Modelling the Socialization of Creative Agents in a Master-Apprentice Setting: The Case of Movie Title Puns

2019-07-10 23:12:17
Mika Hämäläinen, Khalid Alnajjar

Abstract

This paper presents work on modelling the social psychological aspect of socialization in the case of a computationally creative master-apprentice system. In each master-apprentice pair, the master, a genetic algorithm, is seen as a parent for its apprentice, which is an NMT based sequence-to-sequence model. The effect of different parenting styles on the creative output of each pair is in the focus of this study. This approach brings a novel view point to computational social creativity, which has mainly focused in the past on computationally creative agents being on a socially equal level, whereas our approach studies the phenomenon in the context of a social hierarchy.

Abstract (translated)

URL

https://arxiv.org/abs/1907.04954

PDF

https://arxiv.org/pdf/1907.04954.pdf


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