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LARA: Linguistic-Adaptive Retrieval-Augmented LLMs for Multi-Turn Intent Classification


核心概念
Enhancing multi-turn intent classification with Linguistic-Adaptive Retrieval-Augmented Language Models (LLMs).
要約

The paper introduces LARA, a framework designed to improve accuracy in multi-turn intent classification tasks across six languages. By combining a fine-tuned smaller model with a retrieval-augmented mechanism integrated within the architecture of LLMs, LARA dynamically utilizes past dialogues and relevant intents to enhance context understanding. The adaptive retrieval techniques bolster cross-lingual capabilities without extensive retraining, achieving state-of-the-art performance.

Structure:

  1. Introduction to Chatbots and Intent Classification Challenges
  2. Proposed Solution: LARA Framework Overview
  3. Data Collection Challenges in Multi-Turn Dialogues
  4. Methodology: Linguistic-Adaptive Retrieval-Augmentation Process
  5. Experiments Conducted on E-commerce Multi-Turn Dataset Across Six Languages
  6. Comparison with Baselines and Performance Metrics Analysis
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統計
Comprehensive experiments demonstrate that LARA achieves state-of-the-art performance on multi-turn intent classification tasks, enhancing the average accuracy by 3.67% compared to existing methods.
引用

抽出されたキーインサイト

by Liu Junhua,T... 場所 arxiv.org 03-26-2024

https://arxiv.org/pdf/2403.16504.pdf
LARA

深掘り質問

How can the concept of Linguistic-Adaptive Retrieval be applied in other AI applications?

Linguistic-Adaptive Retrieval, as demonstrated in the LARA framework, can be applied to various AI applications that involve multi-turn interactions and context understanding. For instance: Customer Service Chatbots: In customer service chatbots, understanding the context of a conversation is crucial for providing accurate and relevant responses. By leveraging past dialogues through retrieval-augmented mechanisms, chatbots can improve their ability to handle complex queries over multiple turns. Personal Assistants: Personal assistants like Siri or Google Assistant could benefit from linguistic-adaptive retrieval to enhance their comprehension of user requests across different contexts and conversations. Medical Diagnosis Systems: Medical diagnosis systems could use this approach to analyze patient symptoms provided in multi-turn conversations with healthcare professionals, leading to more accurate diagnoses. Educational Chatbots: Educational chatbots assisting students with learning tasks could utilize linguistic-adaptive retrieval to understand student queries better and provide tailored educational support.

What are the potential limitations or biases introduced by using past dialogues for context understanding?

While using past dialogues for context understanding offers several benefits, there are also potential limitations and biases that need to be considered: Historical Bias: Past dialogues may contain biased language or outdated information that could influence current responses generated by AI models. Overfitting: Relying too heavily on past dialogues may lead to overfitting on specific patterns or intents present in the training data, limiting the model's adaptability to new scenarios. Privacy Concerns: Utilizing past conversations raises privacy concerns as sensitive information shared in previous interactions might impact future recommendations or responses. Contextual Ambiguity: Context from past dialogues may not always accurately reflect the current intent or sentiment of a user, leading to misinterpretations by AI systems.

How might advancements in multi-turn intent classification impact the future development of chatbot technologies?

Advancements in multi-turn intent classification have significant implications for enhancing chatbot technologies: Improved User Experience: Better understanding of conversational context allows chatbots to provide more personalized and relevant responses, enhancing overall user experience. Enhanced Task Completion: With improved multi-turn intent classification capabilities, chatbots can efficiently guide users through complex tasks requiring multiple steps or interactions. Increased Automation: Advanced multi-turn intent classification enables higher levels of automation within chatbot systems by accurately predicting user intentions without human intervention. Cross-Lingual Capabilities: Advancements in handling multilingual conversations through improved intent classification pave the way for more inclusive and globally accessible chatbot services. These advancements ultimately contribute towards creating more intelligent and effective conversational agents that can cater to diverse user needs seamlessly across various domains and languages within the realm of chatbot technologies
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