Towards Multi-Objective Optimization for UI Design
نویسندگان
چکیده
In recent years computational optimization has been applied to the problem of finding good designs for user interfaces with huge design spaces. There, designers are struggling to integrate many different objectives into the design process, such as ergonomics, learnability or performance. However, most computationally designed interfaces are optimized with respect to only one objective. In this paper we argue that multi-objective optimization is needed to improve over manual designs. We identify 8 categories that cover design principles from UI design and usability engineering. We propose a multi-objective function in form of a linear combination of these factors and discuss benefits and pitfalls of multi-objective optimization.
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