Trend Fusion with Hybrid SVM and RNN for Dynamic Trend Forecasting and Sentiment Analysis

Jenifer, V and Kamalakannan, T (2024) Trend Fusion with Hybrid SVM and RNN for Dynamic Trend Forecasting and Sentiment Analysis. In: 2024 IEEE 9th International Conference on Engineering Technologies and Applied Sciences (ICETAS), Bahrain, Bahrain.

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Abstract

This paper introduces a cutting-edge approach that combines machine learning techniques to enhance trend prediction and sentiment analysis. Current methods for trend forecasting often struggle with the complexity and volatility of sentiment data, leading to inaccurate predictions and poor adaptability in dynamic environments. These existing approaches may also fail to effectively capture the nuanced relationship between trends and sentiments, resulting in suboptimal performance. To address these challenges, we propose the Sentiment Analysis using Machine Learning (SA-ML) Algorithm, which integrates a Hybrid Support Vector Machine (SVM) and Recurrent Neural Network (RNN). The SVM is adept at handling high-dimensional and non-linear data, while the RNN excels in processing sequential information, such as time-series data. This hybrid model leverages the strengths of both techniques, allowing the SA-ML system to dynamically adapt to changing trends and provide more accurate predictions. The incorporation of sentiment analysis further enhances the model's ability to understand and predict trend shifts based on public sentiment, making it highly effective in real-time applications. The proposed SA-ML algorithm outperforms traditional methods by offering greater accuracy and reliability in forecasting trends. Our findings indicate that the SA-ML algorithm not only improves trend prediction accuracy but also provides deeper insights into sentiment dynamics, making it a valuable tool for industries such as finance, marketing, and social media analytics. This research underscores the potential of hybrid machine learning models in advancing the field of trend forecasting and sentiment analysis.

Item Type: Conference or Workshop Item (Paper)
Subjects: Computer Applications > Computer Science
Domains: Computer Science
Depositing User: Mr IR Admin
Date Deposited: 10 May 2026 10:36
Last Modified: 10 May 2026 10:36
URI: https://ir.vistas.ac.in/id/eprint/14941

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