Just What You Desire: Constrained Timeline Summarization with Self-Reflection for Enhanced Relevance
Given news articles about an entity, such as a public figure or organization, timeline summarization (TLS) involves generating a timeline that summarizes the key events about the entity. However, the TLS task is too underspecified, since what is of interest to each reader may vary, and hence there i...
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Zusammenfassung: | Given news articles about an entity, such as a public figure or organization,
timeline summarization (TLS) involves generating a timeline that summarizes the
key events about the entity. However, the TLS task is too underspecified, since
what is of interest to each reader may vary, and hence there is not a single
ideal or optimal timeline. In this paper, we introduce a novel task, called
Constrained Timeline Summarization (CTLS), where a timeline is generated in
which all events in the timeline meet some constraint. An example of a
constrained timeline concerns the legal battles of Tiger Woods, where only
events related to his legal problems are selected to appear in the timeline. We
collected a new human-verified dataset of constrained timelines involving 47
entities and 5 constraints per entity. We propose an approach that employs a
large language model (LLM) to summarize news articles according to a specified
constraint and cluster them to identify key events to include in a constrained
timeline. In addition, we propose a novel self-reflection method during summary
generation, demonstrating that this approach successfully leads to improved
performance. |
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DOI: | 10.48550/arxiv.2412.17408 |