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Comparative Analysis of Generic and Fine-Tuned Large Language Models for Conversational Agent Systems
by
Sánchez-Miguel, Adrián
, Villa, Laura
, Carneros-Prado, David
, Dobrescu, Cosmin C.
, Cubero, Guillermo
, Hervás, Ramón
in
Artificial intelligence
/ chatbot
/ chatbot development platform
/ Chatbots
/ conversational agents
/ Customer services
/ Customization
/ dialog model design
/ Efficiency
/ Empowerment
/ Instant messaging
/ intent classification
/ Language
/ large language model
/ Large language models
/ Machine learning
/ Natural language processing
/ Third party
/ Verbal communication
/ Versatility
2024
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Comparative Analysis of Generic and Fine-Tuned Large Language Models for Conversational Agent Systems
by
Sánchez-Miguel, Adrián
, Villa, Laura
, Carneros-Prado, David
, Dobrescu, Cosmin C.
, Cubero, Guillermo
, Hervás, Ramón
in
Artificial intelligence
/ chatbot
/ chatbot development platform
/ Chatbots
/ conversational agents
/ Customer services
/ Customization
/ dialog model design
/ Efficiency
/ Empowerment
/ Instant messaging
/ intent classification
/ Language
/ large language model
/ Large language models
/ Machine learning
/ Natural language processing
/ Third party
/ Verbal communication
/ Versatility
2024
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Do you wish to request the book?
Comparative Analysis of Generic and Fine-Tuned Large Language Models for Conversational Agent Systems
by
Sánchez-Miguel, Adrián
, Villa, Laura
, Carneros-Prado, David
, Dobrescu, Cosmin C.
, Cubero, Guillermo
, Hervás, Ramón
in
Artificial intelligence
/ chatbot
/ chatbot development platform
/ Chatbots
/ conversational agents
/ Customer services
/ Customization
/ dialog model design
/ Efficiency
/ Empowerment
/ Instant messaging
/ intent classification
/ Language
/ large language model
/ Large language models
/ Machine learning
/ Natural language processing
/ Third party
/ Verbal communication
/ Versatility
2024
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Comparative Analysis of Generic and Fine-Tuned Large Language Models for Conversational Agent Systems
Journal Article
Comparative Analysis of Generic and Fine-Tuned Large Language Models for Conversational Agent Systems
2024
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Overview
In the rapidly evolving domain of conversational agents, the integration of Large Language Models (LLMs) into Chatbot Development Platforms (CDPs) is a significant innovation. This study compares the efficacy of employing generic and fine-tuned GPT-3.5-turbo models for designing dialog flows, focusing on the intent and entity recognition crucial for dynamic conversational interactions. Two distinct approaches are introduced: a generic GPT-based system (G-GPT) leveraging the pre-trained model with complex prompts for intent and entity detection, and a fine-tuned GPT-based system (FT-GPT) employing customized models for enhanced specificity and efficiency. The evaluation encompassed the systems’ ability to accurately classify intents and recognize named entities, contrasting their adaptability, operational efficiency, and customization capabilities. The results revealed that, while the G-GPT system offers ease of deployment and versatility across various contexts, the FT-GPT system demonstrates superior precision, efficiency, and customization, although it requires initial training and dataset preparation. This research highlights the versatility of LLMs in enriching conversational features for talking assistants, from social robots to interactive chatbots. By tailoring these advanced models, the fluidity and responsiveness of conversational agents can be enhanced, making them more adaptable and effective in a variety of settings, from customer service to interactive learning environments.
Publisher
MDPI AG
Subject
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