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Bibliographic Details
Main Authors: Martín, Diego, Sanchez, Jordi, Vizcaíno, Xavier
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2407.21647
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author Martín, Diego
Sanchez, Jordi
Vizcaíno, Xavier
author_facet Martín, Diego
Sanchez, Jordi
Vizcaíno, Xavier
contents This study investigates different approaches to classify human interactions in an artificial intelligence-based environment, specifically for Applus+ IDIADA's intelligent agent AIDA. The main objective is to develop a classifier that accurately identifies the type of interaction received (Conversation, Services, or Document Translation) to direct requests to the appropriate channel and provide a more specialized and efficient service. Various models are compared, including LLM-based classifiers, KNN using Titan and Cohere embeddings, SVM, and artificial neural networks. Results show that SVM and ANN models with Cohere embeddings achieve the best overall performance, with superior F1 scores and faster execution times compared to LLM-based approaches. The study concludes that the SVM model with Cohere embeddings is the most suitable option for classifying human interactions in the AIDA environment, offering an optimal balance between accuracy and computational efficiency.
format Preprint
id arxiv_https___arxiv_org_abs_2407_21647
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Human interaction classifier for LLM based chatbot
Martín, Diego
Sanchez, Jordi
Vizcaíno, Xavier
Artificial Intelligence
This study investigates different approaches to classify human interactions in an artificial intelligence-based environment, specifically for Applus+ IDIADA's intelligent agent AIDA. The main objective is to develop a classifier that accurately identifies the type of interaction received (Conversation, Services, or Document Translation) to direct requests to the appropriate channel and provide a more specialized and efficient service. Various models are compared, including LLM-based classifiers, KNN using Titan and Cohere embeddings, SVM, and artificial neural networks. Results show that SVM and ANN models with Cohere embeddings achieve the best overall performance, with superior F1 scores and faster execution times compared to LLM-based approaches. The study concludes that the SVM model with Cohere embeddings is the most suitable option for classifying human interactions in the AIDA environment, offering an optimal balance between accuracy and computational efficiency.
title Human interaction classifier for LLM based chatbot
topic Artificial Intelligence
url https://arxiv.org/abs/2407.21647