A Prototype Quest Generator for Simulating Human-Authored Narrative
Abstract
This thesis investigates several techniques of player-tailored procedural quest generation in terms of authenticity and immersion. This is done through the application of a shotgun hill climbing algorithm as well as surface realisation using a
natural language generator. Thereafter, a quantitative fitness evaluation is applied using discoveries from previous research. Moreover, several qualitative assessment methods are proposed. From the findings, this thesis concludes that the utilisation of
shotgun hill climbing yields high-quality results that can be applied to generate questlines at runtime. However, one should comprehend that the proposed natural language generation using transformer models needs extensive further refinement in
order to provide holistically suitable narrative for games.
Degree
Student essay
Collections
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Date
2022-11-23Author
PLÄHN, JAN
Keywords
GPT-3
Natural Language Generation
Procedural Content Generation
quest generation
Shotgun Hill Climbing
video games
Language
eng