Quantitative Characteristics of Human-Written Short Stories as a Metric for Automated Storytelling

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Abstract

Evaluating the extent to which computer-produced stories are structured like human-invented narratives can be an important component of the quality of a story plot. In this paper, we report on an empirical experiment in which human subjects have invented short plots in a constrained scenario. The stories were annotated according to features commonly found in existing automatic story generators. The annotation was designed to measure the proportion and relations of story components that should be used in automatic computational systems for matching human behaviour. Results suggest that there are relatively common patterns that can be used as input data for identifying similarity to human-invented stories in automatic storytelling systems. The found patterns are in line with narratological models, and the results provide numerical quantification and layout of story components. The proposed method of story analysis is tested over two additional sources, the ROCStories corpus and stories generated by automated storytellers, to illustrate the valuable insights that may be derived from them.

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León, C., Gervás, P., Delatorre, P., & Tapscott, A. (2020). Quantitative Characteristics of Human-Written Short Stories as a Metric for Automated Storytelling. New Generation Computing, 38(4), 635–671. https://doi.org/10.1007/s00354-020-00111-1

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