Narrative Memory in Machines: Multi-Agent Arc Extraction in Serialized TV
Roberto Balestri, Guglielmo Pescatore

TL;DR
This paper presents a multi-agent system that leverages computational memory architectures to extract and analyze narrative arcs in serialized TV shows, combining AI and human oversight for structured understanding.
Contribution
It introduces a novel multi-agent framework utilizing semantic and episodic memory analogues to analyze complex TV narratives, demonstrating effective arc identification and storage.
Findings
Successfully identified three narrative arc types in Grey's Anatomy
Stored arcs and character data in a vector database for analysis
Highlighted limitations in discerning overlapping arcs with current methods
Abstract
Serialized television narratives present significant analytical challenges due to their complex, temporally distributed storylines that necessitate sophisticated information management. This paper introduces a multi-agent system (MAS) designed to extract and analyze narrative arcs by implementing principles of computational memory architectures. The system conceptualizes narrative understanding through analogues of human memory: Large Language Models (LLMs) provide a form of semantic memory for general narrative patterns, while a vector database stores specific arc progressions as episodic memories. A multi-agent workflow simulates working memory processes to integrate these information types. Tested on the first season of Grey's Anatomy (ABC 2005-), the MAS identifies three arc types: Anthology (self-contained), Soap (relationship-focused), and Genre-Specific. These arcs and their…
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Taxonomy
TopicsNarrative Theory and Analysis · Artificial Intelligence in Games · Media Influence and Health
