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Large-Scale Document-Level Event Extraction Dataset for Chinese Military News


Основні поняття
A large-scale, document-level open-source Chinese Military News Event Extraction (CMNEE) dataset is proposed to facilitate research on event extraction in the military domain.
Анотація

The authors propose CMNEE, a large-scale, document-level open-source Chinese Military News Event Extraction dataset, to address the data scarcity problem in the military domain. CMNEE contains 17,000 documents and 29,223 manually annotated events based on a pre-defined schema for the military domain, including 8 event types and 11 argument role types.

The authors designed a two-stage, multi-turn annotation strategy to ensure the quality of CMNEE. They also reproduced several state-of-the-art event extraction models with a systematic evaluation, and the results demonstrate that event extraction for the military domain poses unique challenges and requires further research efforts.

CMNEE is the first publicly available dataset for document-level event extraction in the military domain. The authors analyze various aspects of CMNEE, including the event type distribution, multi-event distribution, event argument analysis, and the performance of baseline models. The results show that CMNEE has a high proportion of overlapping events and long arguments, which increases the difficulty of extraction.

The authors also discuss the limitations of CMNEE, such as the limited event types and roles, and the choice of language and annotation methodology. They suggest that expanding CMNEE to other languages and exploring new annotation techniques are potential future directions.

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Статистика
The military news documents in CMNEE contain an average of 330 tokens, 6.7 sentences, 1.8 events, and 6.6 event arguments. The longest document in CMNEE has 496 tokens and 17 sentences. 42% of the instances in CMNEE contain overlapping events. 17% of the arguments in CMNEE have more than 10 Chinese characters. CMNEE contains 19,353 shared arguments, which is about one-fifth of the common arguments.
Цитати
"Extracting structured event knowledge, including event triggers and corresponding arguments, from military texts is fundamental to many applications, such as intelligence analysis and decision assistance." "Currently, military event data extraction primarily relies on human labor, leading to issues such as low efficiency, inconsistent standards, and incomplete information." "CMNEE is currently the only dataset for the document-level event extraction task in the military domain."

Ключові висновки, отримані з

by Mengna Zhu,Z... о arxiv.org 04-19-2024

https://arxiv.org/pdf/2404.12242.pdf
CMNEE: A Large-Scale Document-Level Event Extraction Dataset based on  Open-Source Chinese Military News

Глибші Запити

How can the event schema of CMNEE be further expanded to cover a wider range of military events

To expand the event schema of CMNEE and cover a wider range of military events, several steps can be taken: Domain Expert Consultation: Engage with military experts to identify additional event types and argument roles that are specific to the military domain. These experts can provide insights into the nuances of military events that may not be captured in the current schema. Literature Review: Conduct a comprehensive review of military documents, reports, and publications to identify common event types and argument roles that are prevalent in military texts. This can help in identifying new categories to include in the schema. Data Analysis: Analyze the existing CMNEE dataset to identify patterns and recurring themes in the events extracted. This analysis can help in identifying gaps in the current schema and areas where expansion is needed. Community Feedback: Seek feedback from researchers, analysts, and practitioners in the military domain to understand their requirements and perspectives on event extraction. This feedback can provide valuable insights into the types of events that are crucial for analysis and decision-making. By incorporating insights from domain experts, literature review, data analysis, and community feedback, the event schema of CMNEE can be expanded to cover a wider range of military events, making it more comprehensive and relevant for event extraction tasks in the military domain.

What are the potential challenges and solutions for applying large language models to annotate CMNEE and similar military domain datasets

Applying large language models to annotate CMNEE and similar military domain datasets poses several challenges and requires careful consideration: Complexity of Military Texts: Military texts often contain specialized terminology, acronyms, and context-specific information that may be challenging for large language models to interpret accurately. Fine-tuning these models on military-specific data and incorporating domain knowledge can help improve annotation quality. Data Privacy and Sensitivity: Military data is often sensitive and confidential, raising concerns about data privacy and security when using large language models for annotation. Implementing robust data protection measures and ensuring compliance with data regulations are essential. Annotation Consistency: Large language models may struggle with maintaining annotation consistency across a dataset, especially when dealing with complex event structures and relationships. Developing clear annotation guidelines and conducting regular quality checks can help address this challenge. Scalability and Efficiency: Annotating large datasets like CMNEE using large language models can be computationally intensive and time-consuming. Optimizing annotation workflows, leveraging parallel processing, and utilizing efficient annotation tools can enhance scalability and efficiency. By addressing these challenges and implementing appropriate solutions, such as domain-specific fine-tuning, data privacy measures, consistency checks, and workflow optimizations, large language models can be effectively utilized for annotating military domain datasets like CMNEE.

How can the relationships between events, such as temporal and causal dependencies, be better captured and utilized to improve event extraction performance in the military domain

Capturing and utilizing relationships between events, such as temporal and causal dependencies, can significantly improve event extraction performance in the military domain. Here are some strategies to better capture and leverage these relationships: Event Graph Representation: Representing events as nodes in a graph and capturing temporal and causal dependencies as edges can provide a structured way to model event relationships. Techniques like graph neural networks can be employed to analyze and extract information from these event graphs. Temporal Reasoning: Incorporate temporal information such as event timestamps, durations, and sequences into the event extraction process. By considering the temporal order of events, models can better understand the timeline of military operations and activities. Causal Inference: Implement causal inference techniques to identify causal relationships between events. Understanding the cause-effect relationships between events can help in predicting future events, assessing risks, and making informed decisions. Event Chains and Triggers: Analyze event chains and triggers to identify patterns of events that are causally linked. By recognizing trigger events that lead to subsequent actions or consequences, models can infer causal dependencies and improve event extraction accuracy. Contextual Information: Utilize contextual information surrounding events to infer causal relationships. Factors such as location, participants, and outcomes can provide valuable context for understanding the causal links between events. By integrating these strategies into event extraction models and leveraging advanced techniques for temporal and causal reasoning, the relationships between events in the military domain can be better captured and utilized to enhance event extraction performance.
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