Aligned with
This conference contributes to global sustainability by aligning its research discussions and academic sessions with key United Nations Sustainable Development Goals. It fosters knowledge exchange, innovation, and collaborative engagement.
This track focuses on the methodologies and techniques for modeling user behavior in human-computer interaction. Contributions that explore predictive analytics and user profiling to enhance user experience are particularly encouraged.
This session examines the design and implementation of adaptive interfaces that respond to user needs and preferences. Papers that discuss personalized user experiences through machine learning techniques are welcome.
This track investigates the advancements in gesture recognition technologies and their applications in HCI. Submissions should address novel interaction techniques that leverage gesture-based inputs for improved user engagement.
This session explores the use of eye-tracking technology to analyze user interactions and experiences. Contributions that utilize eye-tracking data to inform design decisions and enhance usability are encouraged.
This track delves into cognitive modeling approaches that inform the development of human-centered AI systems. Papers should focus on how cognitive insights can enhance interaction design and user satisfaction.
This session addresses the challenges and solutions related to anomaly detection in user interactions with systems. Submissions that propose innovative methods for identifying and addressing unexpected user behaviors are invited.
This track focuses on the development and application of feature extraction techniques for analyzing user interactions. Contributions that highlight the role of feature selection in improving machine learning models for HCI are welcome.
This session investigates the use of machine learning algorithms to optimize user interactions with technology. Papers that present empirical studies or theoretical frameworks for interaction optimization are encouraged.
This track explores the integration of AI technologies in enhancing human-computer interaction. Contributions that discuss the implications, challenges, and opportunities presented by AI-assisted interfaces are invited.
This session focuses on the use of sensor technologies in human-computer interaction. Papers that explore innovative applications and the implications of sensor data for user experience design are encouraged.
This track examines the application of deep learning techniques in the field of human-computer interaction. Contributions that demonstrate the effectiveness of deep learning for enhancing user experience and interaction design are welcome.