Affiliation:
1. School of Science and Technology, University of Trás-os-Montes e Alto Douro, 5000-801 Vila Real, Portugal
2. INESC TEC, 4200-465 Porto, Portugal
Abstract
The current surge in the deployment of web applications underscores the need to consider users’ individual preferences in order to enhance their experience. In response to this, an innovative approach is emerging that focuses on the detailed analysis of interaction data captured by web browsers. These data, which includes metrics such as the number of mouse clicks, keystrokes, and navigation patterns, offer insights into user behavior and preferences. By leveraging this information, developers can achieve a higher degree of personalization in web applications, particularly in the context of interactive elements such as online games. This paper presents the WebTraceSense project, which aims to pioneer this approach by developing a framework that encompasses a backend and frontend, advanced visualization modules, a DevOps cycle, and the integration of AI and statistical methods. The backend of this framework will be responsible for securely collecting, storing, and processing vast amounts of interaction data from various websites. The frontend will provide a user-friendly interface that allows developers to easily access and utilize the platform’s capabilities. One of the key components of this framework is the visualization modules, which will enable developers to monitor, analyze, and interpret user interactions in real time, facilitating more informed decisions about user interface design and functionality. Furthermore, the WebTraceSense framework incorporates a DevOps cycle to ensure continuous integration and delivery, thereby promoting agile development practices and enhancing the overall efficiency of the development process. Moreover, the integration of AI methods and statistical techniques will be a cornerstone of this framework. By applying machine learning algorithms and statistical analysis, the platform will not only personalize user experiences based on historical interaction data but also infer new user behaviors and predict future preferences. In order to validate the proposed components, a case study was conducted which demonstrated the usefulness of the WebTraceSense framework in the creation of visualizations based on an existing dataset.
Funder
Component 5—Capitalization and Business Innovation
Reference40 articles.
1. Customer relationship management and the impact of e-coupons on B2C retail markets;Smith;Int. J. Bus. Inf. Syst.,2019
2. More Personalized, More Useful? Reinvestigating Recommendation Mechanisms in E-Commerce;Nguyen;Int. J. Electron. Commer.,2022
3. Game Difficulty Adaptation and Experience Personalization: A Literature Review;Paraschos;Int. J. Human–Computer Interact.,2022
4. Aria, R., Archer, N., Khanlari, M., and Shah, B. (2023). Influential Factors in the Design and Development of a Sustainable Web3/Metaverse and Its Applications. Future Internet, 15.
5. Lamprinou, D., and Fotini, P. (2015, January 19–20). Gamification design framework based on SDT for student motivation. Proceedings of the 2015 International Conference on Interactive Mobile Communication Technologies and Learning (IMCL), Thessaloniki, Greece.