A quantitative study on user interaction and brand perception of visual elements in social media advertising driven by deep learning.
Journal:
Scientific reports
Published Date:
Jul 17, 2026
Abstract
This paper focuses on the field of sentiment analysis for social media advertisements, specifically investigating the quantitative impact of visual design elements-such as color saturation, layout complexity, and image type-on user engagement metrics and brand perception metrics. Current challenges in this domain include insufficient quantification of visual features, inadequate multimodal data fusion, and lack of multi-objective collaborative optimization. Traditional approaches struggle to simultaneously meet demands for sentiment analysis accuracy, user engagement enhancement, and brand perception improvement. To address this, we propose VS-EmoNet (visual-sentiment emotion network)-a deep learning model integrating quantified visual design elements. By leveraging refined visual feature extraction, multimodal attention fusion, and multi-objective optimization mechanisms, VS-EmoNet achieves synergistic optimization of sentiment analysis with user behavior and brand perception. Experimental results demonstrate that this model achieves an average sentiment analysis accuracy of 92.5% across datasets from three major platforms: WeChat, Douyin, and Xiaohongshu. In high-volatility scenarios-where visual elements fluctuate by ± 30%-user click-through rates increased by 34.8%, Brand recognition enhancement reached 28.2%, with a multi-objective hypervolume indicator of 0.352 (normalized to [0,1]), indicating high-quality Pareto front approximation. This effectively quantifies the influence weight of core visual elements, providing data-driven support for social media ad design.
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