From Conceptual “Mash-ups” to “Bad-ass” Blends: A Robust Computational Model of Conceptual Blending

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Reference

Tony Veale: From Conceptual “Mash-ups” to “Bad-ass” Blends: A Robust Computational Model of Conceptual Blending. In: Computational Creativity 2012 ICCC 2012, 1-8.

DOI

Abstract

Conceptual blending is a cognitive phenomenon whose instances range from the humdrum to the pyrotechnical. Most remarkable of all is the ease with which humans regularly understand and produce complex blends. While this facility will doubtless elude our best efforts at computational modeling for some time to come, there are practical forms of conceptual blending that are amenable to computational exploitation right now. In this paper we introduce the notion of a conceptual mash-up, a robust form of blending that allows a computer to creatively re-use and extend its existing common-sense knowledge of a topic. We show also how a repository of such knowledge can be harvested automatically from the web, by targetting the casual questions that we pose to ourselves and to others every day. By acquiring its world knowledge from the questions of others, a computer can eventually learn to pose introspective (and creative) questions of its own.

Extended Abstract

Bibtex

@inproceedings{
author = {Tony Veale},
title = {From Conceptual “Mash-ups” to “Bad-ass” Blends: A Robust Computational Model of Conceptual Blending},
editor = {Mary Lou Maher, Kristian Hammond, Alison Pease, Rafael Pérez y Pérez, Dan Ventura and Geraint Wiggins},
booktitle = {Proceedings of the Third International Conference on Computational Creativity},
series = {ICCC2012},
year = {2012},
month = {May},
location = {Dublin, Ireland},
pages = {1-8},
url = {http://computationalcreativity.net/iccc2012/wp-content/uploads/2012/05/001-Veale.pdf, http://de.evo-art.org/index.php?title=From_Conceptual_“Mash-ups”_to_“Bad-ass”_Blends:_A_Robust_Computational_Model_of_Conceptual_Blending },
publisher = {International Association for Computational Creativity},
keywords = {computational, creativity},
}

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