Advances in Sentiment Analysis in Deep Learning Models and Techniques

Main Article Content

P. Vijaya Lakshmi, V. Murugesh

Abstract

The article investigates the advantages, disadvantages, and areas of research that need more exploration regarding deep learning architectures used in sentiment analysis. These architectures let models learn complex language features from data without explicit feature engineering, changing sentiment analysis. The models' capacity to capture long-range dependencies has improved their context and nuanced expression interpretation, especially in long or metaphorical texts. Deep learning sentiment analysis algorithms have improved, yet they still face obstacles. The complexity of these models raises ethical questions about bias and transparency. They also require huge, annotated datasets and computational resources, which limits their use in resource-constrained contexts. Adopting deep learning models requires balancing performance and practicality. Explore critical deep learning sentiment analysis research gaps. Cross-domain and cross-lingual sentiment analysis requires context- and language-specific models. Textual and non-textual multimodal sentiment analysis offers untapped potential for complex sentiment interpretation. Responsible AI deployment requires model interpretability, robustness against adversarial assaults, and domain consistency. Finally, deep learning and sentiment analysis have changed our knowledge of human emotion. Accuracy and contextual comprehension have improved, but model transparency, data prerequisites, and practical applicability remain issues. Overcoming these restrictions and exploring research gaps will enable responsible sentiment analysis AI innovation.

Article Details

How to Cite
P. Vijaya Lakshmi, et al. (2023). Advances in Sentiment Analysis in Deep Learning Models and Techniques. International Journal on Recent and Innovation Trends in Computing and Communication, 11(9), 474–482. https://doi.org/10.17762/ijritcc.v11i9.8831
Section
Articles
Author Biography

P. Vijaya Lakshmi, V. Murugesh

1P. Vijaya Lakshmi, 2V. Murugesh

1Research Scholar, Department of CSE, Koneru Lakshmaiah Education Foundation, Vaddeswaram, A.P

pesaruvijayalakshmi@gmail.com

2Professor, Department of CSE, Koneru Lakshmaiah Education Foundation, Vaddeswaram,A.P.

vmurugesh@kluniversity.in