Active Preference-Based Gaussian Process Regression for Reward Learning

被引:0
|
作者
Biyik, Lirdem [1 ]
Huynh, Nicolas [2 ]
Kochenderfer, Mykel J. [3 ]
Sadigh, Dorsa [4 ]
机构
[1] Stanford Univ, Elect Engn, Stanford, CA 94305 USA
[2] Ecole Polytech, Appl Math, Palaiseau, France
[3] Stanford Univ, Aeronaut & Astronaut, Stanford, CA 94305 USA
[4] Stanford Univ, Comp Sci, Stanford, CA 94305 USA
基金
美国国家科学基金会;
关键词
D O I
暂无
中图分类号
TP24 [机器人技术];
学科分类号
080202 ; 1405 ;
摘要
Designing reward functions is a challenging problem in AI and robotics. Humans usually have a difficult time directly specifying all the desirable behaviors that a robot needs to optimize. One common approach is to learn reward functions from collected expert demonstrations. However, learning reward functions from demonstrations introduces many challenges: some methods require highly structured models, e.g. reward functions that are linear in some predefined set of features, while others adopt less structured reward functions that on the other hand require tremendous amount of data. In addition, humans tend to have a difficult time providing demonstrations on robots with high degrees of freedom, or even quantifying reward values for given demonstrations. To address these challenges, we present a preference-based learning approach, where as an alternative, the human feedback is only in the form of comparisons between trajectories. Furthermore, we do not assume highly constrained structures on the reward function. Instead, we model the reward function using a Gaussian Process (GP) and propose a mathematical formulation to actively find a GP using only human preferences. Our approach enables us to tackle both inflexibility and data-inefficiency problems within a preference-based learning framework. Our results in simulations and a user study suggest that our approach can efficiently learn expressive reward functions for robotics tasks.
引用
收藏
页数:10
相关论文
共 50 条
  • [41] Fast Active Exploration for Link-Based Preference Learning Using Gaussian Processes
    Xu, Zhao
    Kersting, Kristian
    Joachims, Thorsten
    [J]. MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES, PT III, 2010, 6323 : 499 - 514
  • [42] Active preference-based optimization for human-in-the-loop feature selection
    Bianchi, Federico
    Piroddi, Luigi
    Bemporad, Alberto
    Halasz, Geza
    Villani, Matteo
    Piga, Dario
    [J]. EUROPEAN JOURNAL OF CONTROL, 2022, 66
  • [43] An Empirical Study of the Sample Size Variability of Optimal Active Learning Using Gaussian Process Regression
    Yeh, Flora Yu-Hui
    Gallagher, Marcus
    [J]. 2008 IEEE INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS, VOLS 1-8, 2008, : 3787 - 3794
  • [44] Reconstruction of radiation dose rate profiles by autonomous robot with active learning and Gaussian process regression
    Silveira, Paulo R.
    Naiff, Danilo de F.
    Pereira, Claudio M. N. A.
    Schirru, Roberto
    [J]. ANNALS OF NUCLEAR ENERGY, 2018, 112 : 876 - 886
  • [45] A novel correlation Gaussian process regression-based extreme learning machine
    Xuan Ye
    Yulin He
    Manjing Zhang
    Philippe Fournier-Viger
    Joshua Zhexue Huang
    [J]. Knowledge and Information Systems, 2023, 65 : 2017 - 2042
  • [46] Producing chemically accurate atomic Gaussian process regression models by active learning for molecular simulation
    Burn, Matthew J.
    Popelier, Paul L. A.
    [J]. JOURNAL OF COMPUTATIONAL CHEMISTRY, 2022, 43 (31) : 2084 - 2098
  • [47] Transfer learning-based online multiperson tracking with Gaussian process regression
    Zhang, Baobing
    Li, Siguang
    Huang, Zhengwen
    Rahi, Babak H.
    Wang, Qicong
    Li, Maozhen
    [J]. CONCURRENCY AND COMPUTATION-PRACTICE & EXPERIENCE, 2018, 30 (23):
  • [48] Online Learning Algorithm of Gaussian Process Based on Adaptive Natural Gradient for Regression
    Shen, Qianqian
    Sun, Zonghai
    [J]. MANUFACTURING ENGINEERING AND AUTOMATION I, PTS 1-3, 2011, 139-141 : 1847 - 1851
  • [49] Active Learning for Enumerating Local Minima Based on Gaussian Process Derivatives
    Inatsu, Yu
    Sugita, Daisuke
    Toyoura, Kazuaki
    Takeuchi, Ichiro
    [J]. NEURAL COMPUTATION, 2020, 32 (10) : 2032 - 2068
  • [50] A novel correlation Gaussian process regression-based extreme learning machine
    Ye, Xuan
    He, Yulin
    Zhang, Manjing
    Fournier-Viger, Philippe
    Huang, Joshua Zhexue
    [J]. KNOWLEDGE AND INFORMATION SYSTEMS, 2023, 65 (05) : 2017 - 2042