The Case for Naive and Low-Fidelity Narrative Generation

2021 ◽  
pp. 91-102
Author(s):  
Henrik Warpefelt
Keyword(s):  
2018 ◽  
Author(s):  
Sharath Srivatsa ◽  
Shyam Kumar V N ◽  
Srinath Srinivasa

In recent times, computational modeling of narratives has gained enormous interest in fields like Natural Language Understanding (NLU), Natural Language Generation (NLG), and Artificial General Intelligence (AGI). There is a growing body of literature addressing understanding of narrative structure and generation of narratives. Narrative generation is known to be a far more complex problem than narrative understanding [20].


2014 ◽  
Vol 36 (6) ◽  
pp. 1375-1391 ◽  
Author(s):  
KATHLEEN HIPFNER-BOUCHER ◽  
KATIE LAM ◽  
XI CHEN

ABSTRACTThis study investigated the relationship between L2 oral narrative morphosyntactic quality and L2 reading comprehension in a sample of 81 students enrolled in a Canadian French immersion program in Grade 1. Measures of French narrative generation and reading comprehension were administered concurrently. The proportion of utterances in the narratives that were judged to be grammatically acceptable was found to explain unique variance in reading comprehension, controlling for nonverbal intelligence, maternal education, phonological awareness, vocabulary and word reading. The results suggest that even in the earliest stages of L2 literacy acquisition, L2 oral language skills contribute to reading comprehension outcomes. The results of our study suggest that there may be value in providing L2 children with classroom-based story-related experiences that expose them to literate language.


2010 ◽  
Vol 39 ◽  
pp. 217-268 ◽  
Author(s):  
M. O. Riedl ◽  
R. M. Young

Narrative, and in particular storytelling, is an important part of the human experience. Consequently, computational systems that can reason about narrative can be more effective communicators, entertainers, educators, and trainers. One of the central challenges in computational narrative reasoning is narrative generation, the automated creation of meaningful event sequences. There are many factors -- logical and aesthetic -- that contribute to the success of a narrative artifact. Central to this success is its understandability. We argue that the following two attributes of narratives are universal: (a) the logical causal progression of plot, and (b) character believability. Character believability is the perception by the audience that the actions performed by characters do not negatively impact the audience's suspension of disbelief. Specifically, characters must be perceived by the audience to be intentional agents. In this article, we explore the use of refinement search as a technique for solving the narrative generation problem -- to find a sound and believable sequence of character actions that transforms an initial world state into a world state in which goal propositions hold. We describe a novel refinement search planning algorithm -- the Intent-based Partial Order Causal Link (IPOCL) planner -- that, in addition to creating causally sound plot progression, reasons about character intentionality by identifying possible character goals that explain their actions and creating plan structures that explain why those characters commit to their goals. We present the results of an empirical evaluation that demonstrates that narrative plans generated by the IPOCL algorithm support audience comprehension of character intentions better than plans generated by conventional partial-order planners.


First, this chapter introduces an idea that deals with narrative phenomena as the integration between the individual (narrative generation and reception system) and social levels (narrative production and consumption system); this idea is called the “multiple narrative structures model.” This chapter describes the future image of a human-machine symbiosis system that includes narrators and receivers as artificial intelligence. Furthermore, based on the concept of “visible narratives” and “invisible narratives,” the author analyzes the narrative components or elements to consider methods for synthesizing the analyzed elements. This idea of the analysis and synthesis of various narrative elements will be systematized in the “integrated narrative generation system.”


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