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Recursive Narratives: Mining and Binding Rich Event Semantics from Multiple Perspectives in Knowledge Graphs


Temel Kavramlar
Narratives can be constructed as recursive compositions of events to represent different perspectives on complex real-world events. By grounding such narratives in event-centric knowledge graphs, diverse viewpoints on events can be expressed, compared, and analyzed.
Özet

The paper introduces a formal model for narratives as directed graphs that connect events through factual and narrative relationships. Narratives can be recursive, where an event node in the narrative graph can be further described by a sub-narrative.

The key contributions are:

  1. A narrative model that allows for the representation of complex events from different perspectives through recursive event compositions.
  2. An algorithm to mine such narratives from text corpora, accounting for different viewpoints on the same event.
  3. A discussion on binding the mined narratives to event-centric knowledge graphs like Wikidata to ground the narratives in structured data and enable comparison across perspectives.

The authors demonstrate the approach through a case study on the Iraq War, where they mine and compare narratives from the perspectives of Russia, the UK, and the US. The results show that the mined narratives can capture nuanced differences in how the same event is portrayed across viewpoints, including the choice and framing of sub-events. However, the binding of mined events to knowledge graphs remains a challenge, requiring further research.

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Kaynak

İstatistikler
"Colin Powell's WMD UN speech" "Hutton Inquiry Rules Dr. Kelly's Death a Suicide" "Bush Declares 'Mission Accomplished' in Iraq" "Abu Ghraib Prison Abuse Scandal"
Alıntılar
"Narratives can be seen as the result of compositions of different narratives, where a narrative is simply the composition of at least two events." "Narratives can be organized hierarchically using recursive nodes, e.g., 'Redivision of the World' involves three distinct and usually unconnected events." "Narratives can be grounded in well-known ECKGs, we can express and compare different perspectives on complex events and reason about, for instance, similarities, differences, and variants of different narratives."

Önemli Bilgiler Şuradan Elde Edildi

by Flor... : arxiv.org 04-26-2024

https://arxiv.org/pdf/2404.16405.pdf
Lost in Recursion: Mining Rich Event Semantics in Knowledge Graphs

Daha Derin Sorular

How can the narrative mining algorithm be improved to better extract accurate event timelines and relationships?

To enhance the accuracy of event timelines and relationships extracted by the narrative mining algorithm, several improvements can be implemented: Improved Prompting Techniques: Utilize more sophisticated prompting techniques to guide the language model in generating precise event descriptions and timestamps. This can involve providing more context in the prompts and refining the language used to elicit specific information. External Time Extraction Tools: Integrate external tools or APIs specialized in extracting temporal information from text. These tools can help in accurately identifying the timeframes of events mentioned in the documents, reducing errors in the timeline extraction process. Fine-tuning the Language Model: Fine-tune the language model on a dataset specifically tailored for event extraction to improve its understanding of event-related information and enhance the quality of event labels generated during the mining process. Validation and Correction Mechanisms: Implement validation mechanisms to cross-check the extracted event timelines and relationships for inconsistencies or inaccuracies. This can involve human validation or automated checks to ensure the correctness of the extracted data. Refinement of Narrative Relationships: Develop a more nuanced set of narrative relationships beyond temporal relationships to capture the complexity of event interactions, such as causal relationships, contingencies, and associations, to provide a more comprehensive narrative representation. By incorporating these enhancements, the narrative mining algorithm can achieve greater accuracy in extracting event timelines and relationships, leading to more reliable and insightful narratives.

What are the implications of narratives that connect otherwise unrelated events in knowledge graphs, and how can this be leveraged for deeper analysis?

The implications of narratives connecting otherwise unrelated events in knowledge graphs are significant and can be leveraged for deeper analysis in the following ways: Uncovering Hidden Relationships: By connecting seemingly unrelated events through narratives, hidden relationships and dependencies between events can be revealed. This can provide a more holistic understanding of complex phenomena and uncover underlying patterns that may not be apparent from individual event representations. Contextual Understanding: Narratives linking disparate events can provide context and background information that enriches the interpretation of events. Understanding the narrative flow can help in interpreting the significance of events and their impact on each other. Enhanced Comparative Analysis: Leveraging narratives for connecting events allows for more nuanced comparative analysis. Researchers can compare different perspectives, viewpoints, and narratives surrounding the same event, leading to a deeper understanding of the event's complexities and implications. Identifying Patterns and Trends: Analyzing narratives that connect unrelated events can help in identifying recurring patterns, trends, and themes across different events. This can facilitate trend analysis, anomaly detection, and forecasting based on historical narrative data. Enhanced Decision-Making: Deeper analysis of narratives connecting events can provide valuable insights for decision-making processes in various domains, such as journalism, policy-making, and strategic planning. Understanding the underlying narratives can lead to more informed and strategic decisions. By leveraging narratives that connect otherwise unrelated events in knowledge graphs, researchers can gain a more comprehensive understanding of events, relationships, and contexts, enabling deeper analysis and insights.

How can the narrative model be extended to incorporate additional metadata, such as sentiment, framing, or strategic communication patterns, to further unpack the perspectives of different narrators?

To extend the narrative model and incorporate additional metadata such as sentiment, framing, or strategic communication patterns, the following approaches can be considered: Sentiment Analysis: Integrate sentiment analysis techniques to analyze the emotional tone and sentiment expressed in the narratives. This can help in understanding the attitudes, opinions, and emotions of different narrators towards specific events or topics. Framing Analysis: Implement framing analysis methods to identify the framing techniques used in narratives. This involves examining how events are portrayed, emphasizing certain aspects, and shaping the narrative to influence perception. By incorporating framing analysis, researchers can uncover underlying biases and perspectives in narratives. Strategic Communication Patterns: Incorporate techniques from strategic communication analysis to identify communication strategies, messaging tactics, and persuasive elements in narratives. This can shed light on the strategic intentions and communication goals of different narrators in shaping the narrative. Metadata Annotation: Develop a structured framework for annotating narratives with additional metadata, including sentiment labels, framing categories, and communication patterns. This metadata can be added as attributes to events, entities, or relationships in the narrative representation. Machine Learning Models: Utilize machine learning models trained on sentiment, framing, or communication data to automatically extract and analyze metadata from narratives. These models can assist in identifying patterns, trends, and insights from the metadata embedded in the narratives. By extending the narrative model to incorporate additional metadata, researchers can gain a deeper understanding of the perspectives, intentions, and communication strategies of different narrators, leading to more nuanced and comprehensive analyses of events and narratives.
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