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Developing A Chatbot: A Hybrid Approach Using Deep...
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Developing A Chatbot: A Hybrid Approach Using Deep Learning and RAG

Abstract

The rapid growth of online shopping has underscored the need for effective customer service techniques that go beyond traditional channels such as email, mobile responses, and FAQs. In this dynamic landscape, chatbots have emerged as indispensable tools for enhancing customer satisfaction and streamlining consumer interactions. These artificial intelligence-powered chatbots are reshaping the online retail industry by providing human-like engagement. Our study introduces a hybrid approach to developing a context-aware chatbot. We combine intent recognition using deep learning models with a retrieval-based argument approach, leveraging OpenAI's Large Language Model (LLM). Specifically, we compare two intent recognition models: LSTM and BERT. Additionally, we implement a retriever system that gathers relevant supporting data from a vector database storing the vector embeddings of our products. The outcome is a dynamic and customer-centric chatbot experience that harnesses the capabilities of OpenAI's LLM. Finally, we have built an Electronic Shopping Assistant capable of answering a wide range of product-related questions based on our extensive knowledge base.

Authors

Patel V; Tejani P; Parekh J; Huang K; Tan X

Volume

00

Pagination

pp. 273-280

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

December 12, 2024

DOI

10.1109/wi-iat62293.2024.00043

Name of conference

2024 IEEE/WIC International Conference on Web Intelligence and Intelligent Agent Technology (WI-IAT)
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