Download PDFOpen PDF in browserExploring Deep Learning Architectures for Meta-Analysis in Chatbot Development: a Comparative StudyEasyChair Preprint 120256 pages•Date: February 10, 2024AbstractThis research delves into the investigation of various deep learning architectures for meta-analysis in chatbot development. We conduct a comparative study to evaluate the performance and effectiveness of different models in enhancing chatbot capabilities. By examining a range of architectures, including recurrent neural networks (RNNs), convolutional neural networks (CNNs), and transformer models, we aim to identify the most suitable approach for leveraging meta-analysis in chatbot development. Our findings contribute to advancing the understanding of how deep learning techniques can be optimized for enhancing chatbot functionality through meta-analysis. Keyphrases: Chatbot development, Convolutional, Recurrent Neural Networks, Transformer Models, comparative study, deep learning, meta-analysis, neural networks
|