Mobile User Interface Adaptation Based on Usability Reward Model and Multi-Agent Reinforcement Learning

Author:

Vidmanov Dmitry1ORCID,Alfimtsev Alexander1

Affiliation:

1. Information Systems and Telecommunications, Bauman Moscow State Technical University, 105005 Moscow, Russia

Abstract

Today, reinforcement learning is one of the most effective machine learning approaches in the tasks of automatically adapting computer systems to user needs. However, implementing this technology into a digital product requires addressing a key challenge: determining the reward model in the digital environment. This paper proposes a usability reward model in multi-agent reinforcement learning. Well-known mathematical formulas used for measuring usability metrics were analyzed in detail and incorporated into the usability reward model. In the usability reward model, any neural network-based multi-agent reinforcement learning algorithm can be used as the underlying learning algorithm. This paper presents a study using independent and actor-critic reinforcement learning algorithms to investigate their impact on the usability metrics of a mobile user interface. Computational experiments and usability tests were conducted in a specially designed multi-agent environment for mobile user interfaces, enabling the implementation of various usage scenarios and real-time adaptations.

Publisher

MDPI AG

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