Interactive relational reinforcement learning of concept semantics

被引:0
|
作者
Matthias Nickles
Achim Rettinger
机构
[1] Technical University of Munich,Department of Computer Science
[2] Karlsruhe Institute of Technology,Institute AIFB
来源
Machine Learning | 2014年 / 94卷
关键词
Reinforcement learning; Concept learning; Symbol grounding; Statistical relational learning; Interactive learning; Meaning disambiguation;
D O I
暂无
中图分类号
学科分类号
摘要
We present a framework for the machine learning of denotational concept semantics using a simple form of symbolic interaction of machines with human users. The capability of software agents and robots to learn how to communicate verbally with human users would obviously be highly useful in several real-world applications, and our framework is meant to provide a further step towards this goal. Whereas the large majority of existing approaches to the machine learning of word sense and other language aspects focuses on learning using text corpora, our framework allows for the interactive learning of concepts in a dialog of human and agent, using an approach in the area of Relational Reinforcement Learning. Such an approach has a wide range of possible applications, e.g., the interactive acquisition of semantic categories for the Semantic Web, Human-Computer Interaction, (interactive) Information Retrieval, and Natural Language Processing.
引用
收藏
页码:169 / 204
页数:35
相关论文
共 50 条
  • [41] Exploration from Demonstration for Interactive Reinforcement Learning
    Subramanian, Kaushik
    Isbell, Charles L., Jr.
    Thomaz, Andrea L.
    AAMAS'16: PROCEEDINGS OF THE 2016 INTERNATIONAL CONFERENCE ON AUTONOMOUS AGENTS & MULTIAGENT SYSTEMS, 2016, : 447 - 456
  • [42] Interactive preference analysis: A reinforcement learning framework
    Hu, Xiao
    Kang, Siqin
    Ren, Long
    Zhu, Shaokeng
    EUROPEAN JOURNAL OF OPERATIONAL RESEARCH, 2024, 319 (03) : 983 - 998
  • [43] Interactive multiagent reinforcement learning with motivation rules
    Yamaguchi, T
    Marukawa, R
    ICCIMA 2001: FOURTH INTERNATIONAL CONFERENCE ON COMPUTATIONAL INTELLIGENCE AND MULTIMEDIA APPLICATIONS, PROCEEDINGS, 2001, : 128 - 132
  • [44] Towards interactive reinforcement learning with intrinsic feedback
    Poole, Benjamin
    Lee, Minwoo
    NEUROCOMPUTING, 2024, 587
  • [45] Improving Reinforcement Learning with Interactive Feedback and Affordances
    Cruz, Francisco
    Magg, Sven
    Weber, Cornelius
    Wermter, Stefan
    FOUTH JOINT IEEE INTERNATIONAL CONFERENCES ON DEVELOPMENT AND LEARNING AND EPIGENETIC ROBOTICS (IEEE ICDL-EPIROB 2014), 2014, : 165 - 170
  • [46] Interactive Narrative Personalization with Deep Reinforcement Learning
    Wang, Pengcheng
    Rowe, Jonathan
    Min, Wookhee
    Mott, Bradford
    Lester, James
    PROCEEDINGS OF THE TWENTY-SIXTH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, 2017, : 3852 - 3858
  • [47] Interactive Reinforcement Learning for Table Balancing Robot
    Jeon, Haein
    Kim, Yewon
    Kang, Boyeong
    SPLU-ROBONLP 2021: THE 2ND INTERNATIONAL COMBINED WORKSHOP ON SPATIAL LANGUAGE UNDERSTANDING AND GROUNDED COMMUNICATION FOR ROBOTICS, 2021, : 71 - 78
  • [48] Relational Reinforcement Learning: A Logic Programming based approach
    Preda, Mircea Cezar
    ANNALS OF THE UNIVERSITY OF CRAIOVA-MATHEMATICS AND COMPUTER SCIENCE SERIES, 2007, 34 : 124 - 132
  • [49] Interactive Inverse Reinforcement Learning for Cooperative Games
    Buning, Thomas Kleine
    George, Anne-Marie
    Dimitrakakis, Christos
    INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 162, 2022,
  • [50] Reinforcement Learning Enhanced PicHunter for Interactive Search
    Ma, Zhixin
    Wu, Jiaxin
    Loo, Weixiong
    Ngo, Chong-Wah
    MULTIMEDIA MODELING, MMM 2023, PT I, 2023, 13833 : 690 - 696