Enhanced Web User Interface Design Via Cross-Device Responsiveness Assessment Using An Improved HCI-INTEGRATED DL Schemes
- URL: http://arxiv.org/abs/2512.15775v1
- Date: Sat, 13 Dec 2025 15:58:07 GMT
- Title: Enhanced Web User Interface Design Via Cross-Device Responsiveness Assessment Using An Improved HCI-INTEGRATED DL Schemes
- Authors: Shrinivass Arunachalam Balasubramanian,
- Abstract summary: This article proposes a dynamic web UI optimization through Cross-Responsiveness (CR) assessment.<n>CR assessment is done using Finite Exponential Continuous State Machine (FECSM) and Quokka Difference Swarm Optimization Algorithm (QNDSOA)<n>A novel QNDSOA is utilized to optimize the UI design with an average fitness of 98.563.2%.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: User Interface (UI) optimization is essential in the digital era to enhance user satisfaction in web environments. Nevertheless, the existing UI optimization models had overlooked the Cross-Responsiveness (CR) assessment, affecting the user interaction efficiency. Consequently, this article proposes a dynamic web UI optimization through CR assessment using Finite Exponential Continuous State Machine (FECSM) and Quokka Nonlinear Difference Swarm Optimization Algorithm (QNDSOA). Initially, the design and user interaction related information is collected as well as pre-processed for min-max normalization. Next, the Human-Computer Interaction (HCI)-based features are extracted, followed by user behaviour pattern grouping. Meanwhile, the CR assessment is done using FECSM. Then, the proposed Bidirectional Gated Luong and Mish Recurrent Unit (BiGLMRU) is used to classify the User eXperience (UX) change type, which is labelled based on the User Interface Change Prediction Index (UICPI). Lastly, a novel QNDSOA is utilized to optimize the UI design with an average fitness of 98.5632%. Feedback monitoring is done after optimal deployment.
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