Stepping Back to Progress Forwards: Setting Standards for Meta-Evaluation of Computational Creativity
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Anna Jordanous: Stepping Back to Progress Forwards: Setting Standards for Meta-Evaluation of Computational Creativity. In: Computational Creativity 2014 ICCC 2014.
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Abstract
There has been increasing attention paid to the ques- tion of how to evaluate the creativity of computational creativity systems. A number of different evaluation methods, strategies and approaches have been proposed recently, causing a shift in focus: which methodology should be used to evaluate creative systems? What are the pros and cons of using each method? In short: how can we evaluate the different creativity evaluation methodologies? To answer this question, five meta-evaluation criteria have been devised from cross-disciplinary research into good evaluative prac- tice. These five criteria are: correctness; usefulness; faithfulness as a model of creativity; usability of the methodology; generality. In this paper, the criteria are used to compare and contrast the performance of five various evaluation methods. Together, these meta- evaluation criteria help us explore the advantages and disadvantages of each creativity evaluation methodol- ogy, helping us develop the tools we have available to us as computational creativity researchers.
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Used References
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