CLIRFeb 26, 2024

Long Dialog Summarization: An Analysis

CMU
arXiv:2402.16986v12 citationsh-index: 9
Originality Synthesis-oriented
AI Analysis

This is an incremental analysis of dialog summarization techniques for applications like chatbots and call centers.

This paper analyzes the problem of summarizing long multi-turn conversations, finding that no single model performs well across different domains and tasks based on benchmark evaluations.

Dialog summarization has become increasingly important in managing and comprehending large-scale conversations across various domains. This task presents unique challenges in capturing the key points, context, and nuances of multi-turn long conversations for summarization. It is worth noting that the summarization techniques may vary based on specific requirements such as in a shopping-chatbot scenario, the dialog summary helps to learn user preferences, whereas in the case of a customer call center, the summary may involve the problem attributes that a user specified, and the final resolution provided. This work emphasizes the significance of creating coherent and contextually rich summaries for effective communication in various applications. We explore current state-of-the-art approaches for long dialog summarization in different domains and benchmark metrics based evaluations show that one single model does not perform well across various areas for distinct summarization tasks.

Foundations

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