MARLUI: Multi-Agent Reinforcement Learning for Adaptive Point-and-Click UIs

被引:0
|
作者
Langerak T. [1 ]
Christen S. [1 ]
Albaba M. [1 ]
Gebhardt C. [1 ]
Holz C. [1 ]
Hilliges O. [1 ]
机构
[1] ETH Zürich, Department of Computer Science
关键词
Adaptive User Interfaces; Intelligent User Interfaces; Multi-Agent Reinforcement Learning;
D O I
10.1145/3661147
中图分类号
学科分类号
摘要
As the number of selectable items increases, point-and-click interfaces rapidly become complex, leading to a decrease in usability. Adaptive user interfaces can reduce this complexity by automatically adjusting an interface to only display the most relevant items. A core challenge for developing adaptive interfaces is to infer user intent and chose adaptations accordingly. Current methods rely on tediously hand-crafted rules or carefully collected user data. Furthermore, heuristics need to be recrafted and data regathered for every new task and interface. To address this issue, we formulate interface adaptation as a multi-agent reinforcement learning problem. Our approach learns adaptation policies without relying on heuristics or real user data, facilitating the development of adaptive interfaces across various tasks with minimal adjustments needed. In our formulation, a user agent mimics a real user and learns to interact with an interface via point-and-click actions. Simultaneously, an interface agent learns interface adaptations, to maximize the user agent's efficiency, by observing the user agent's behavior. For our evaluation, we substituted the simulated user agent with actual users. Our study involved twelve participants and concentrated on automatic toolbar item assignment. The results show that the policies we developed in simulation effectively apply to real users. These users were able to complete tasks with fewer actions and in similar times compared to methods trained with real data. Additionally, we demonstrated our method's efficiency and generalizability across four different interfaces and tasks. © 2024 ACM.
引用
收藏
相关论文
共 50 条
  • [1] Adaptive Average Exploration in Multi-Agent Reinforcement Learning
    Hall, Garrett
    Holladay, Ken
    2020 AIAA/IEEE 39TH DIGITAL AVIONICS SYSTEMS CONFERENCE (DASC) PROCEEDINGS, 2020,
  • [2] ADAPTIVE STATE REPRESENTATIONS FOR MULTI-AGENT REINFORCEMENT LEARNING
    De Hauwere, Yann-Michael
    Vrancx, Peter
    Nowe, Ann
    ICAART 2011: PROCEEDINGS OF THE 3RD INTERNATIONAL CONFERENCE ON AGENTS AND ARTIFICIAL INTELLIGENCE, VOL 2, 2011, : 181 - 189
  • [3] Adaptive mean field multi-agent reinforcement learning
    Wang, Xiaoqiang
    Ke, Liangjun
    Zhang, Gewei
    Zhu, Dapeng
    INFORMATION SCIENCES, 2024, 669
  • [4] Multi-Agent Reinforcement Learning With Distributed Targeted Multi-Agent Communication
    Xu, Chi
    Zhang, Hui
    Zhang, Ya
    2023 35TH CHINESE CONTROL AND DECISION CONFERENCE, CCDC, 2023, : 2915 - 2920
  • [5] QDAP: Downsizing adaptive policy for cooperative multi-agent reinforcement learning
    Zhao, Zhitong
    Zhang, Ya
    Wang, Siying
    Zhang, Fan
    Zhang, Malu
    Chen, Wenyu
    KNOWLEDGE-BASED SYSTEMS, 2024, 294
  • [6] Concept Learning for Interpretable Multi-Agent Reinforcement Learning
    Zabounidis, Renos
    Campbell, Joseph
    Stepputtis, Simon
    Hughes, Dana
    Sycara, Katia
    CONFERENCE ON ROBOT LEARNING, VOL 205, 2022, 205 : 1828 - 1837
  • [7] Learning structured communication for multi-agent reinforcement learning
    Junjie Sheng
    Xiangfeng Wang
    Bo Jin
    Junchi Yan
    Wenhao Li
    Tsung-Hui Chang
    Jun Wang
    Hongyuan Zha
    Autonomous Agents and Multi-Agent Systems, 2022, 36
  • [8] Learning structured communication for multi-agent reinforcement learning
    Sheng, Junjie
    Wang, Xiangfeng
    Jin, Bo
    Yan, Junchi
    Li, Wenhao
    Chang, Tsung-Hui
    Wang, Jun
    Zha, Hongyuan
    AUTONOMOUS AGENTS AND MULTI-AGENT SYSTEMS, 2022, 36 (02)
  • [9] HALFTONING WITH MULTI-AGENT DEEP REINFORCEMENT LEARNING
    Jiang, Haitian
    Xiong, Dongliang
    Jiang, Xiaowen
    Yin, Aiguo
    Ding, Li
    Huang, Kai
    2022 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING, ICIP, 2022, : 641 - 645
  • [10] Deep reinforcement learning for multi-agent interaction
    Ahmed, Ibrahim H.
    Brewitt, Cillian
    Carlucho, Ignacio
    Christianos, Filippos
    Dunion, Mhairi
    Fosong, Elliot
    Garcin, Samuel
    Guo, Shangmin
    Gyevnar, Balint
    McInroe, Trevor
    Papoudakis, Georgios
    Rahman, Arrasy
    Schafer, Lukas
    Tamborski, Massimiliano
    Vecchio, Giuseppe
    Wang, Cheng
    Albrecht, Stefano, V
    AI COMMUNICATIONS, 2022, 35 (04) : 357 - 368