Research on the Development of Intelligent Game Dialogue System and Game Experience Based on ChatGPT
DOI:
https://doi.org/10.54097/z0wjgb27Keywords:
ChatGPT; Intelligent Game Dialogue System; Game Experience; Interactivity; Immersion.Abstract
This study discusses the development of intelligent game dialogue system based on ChatGPT and its influence on game experience. By integrating ChatGPT technology, a highly intelligent game dialogue system is developed to enhance the interactivity and immersion of the game. User research and experimental data show that the system can significantly enhance the game experience of players, including improving immersion, interactivity and story richness. Compared with the traditional game dialogue system, ChatGPT-based system shows higher flexibility and naturalness, and can dynamically generate responses according to players' input, thus creating personalized and diversified game experiences. The response time is kept at a low level, with an average of about 0.03 seconds, which is far below the player's perceived delay threshold, which ensures the fluency of the conversation and provides the player with a near real-time interactive experience. However, the study also reveals the problems of misunderstanding and inaccurate response that may exist in the system in some cases, which provides a direction for the subsequent system optimization. Overall, this study confirmed the great potential and practical value of the intelligent game dialogue system based on ChatGPT in improving the game experience.
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