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
  • [21] Heterogeneous relational reasoning in knowledge graphs with reinforcement learning
    Saebi, Mandana
    Kreig, Steven
    Zhang, Chuxu
    Jiang, Meng
    Kajdanowicz, Tomasz
    Chawla, Nitesh, V
    [J]. INFORMATION FUSION, 2022, 88 : 12 - 21
  • [22] Visual Navigation via Reinforcement Learning and Relational Reasoning
    Zhou, Kang
    Guo, Chi
    Zhang, Huyin
    [J]. 2021 IEEE SMARTWORLD, UBIQUITOUS INTELLIGENCE & COMPUTING, ADVANCED & TRUSTED COMPUTING, SCALABLE COMPUTING & COMMUNICATIONS, INTERNET OF PEOPLE, AND SMART CITY INNOVATIONS (SMARTWORLD/SCALCOM/UIC/ATC/IOP/SCI 2021), 2021, : 131 - 138
  • [23] Graph kernels and Gaussian processes for relational reinforcement learning
    Driessens, Kurt
    Ramon, Jan
    Gaertner, Thomas
    [J]. MACHINE LEARNING, 2006, 64 (1-3) : 91 - 119
  • [24] Graph kernels and Gaussian processes for relational reinforcement learning
    Kurt Driessens
    Jan Ramon
    Thomas Gärtner
    [J]. Machine Learning, 2006, 64 : 91 - 119
  • [25] Relational Deep Reinforcement Learning for Routing in Wireless Networks
    Manfredi, Victoria
    Wolfe, Alicia P.
    Wang, Bing
    Zhang, Xiaolan
    [J]. 2021 IEEE 22ND INTERNATIONAL SYMPOSIUM ON A WORLD OF WIRELESS, MOBILE AND MULTIMEDIA NETWORKS (WOWMOM 2021), 2021, : 159 - 168
  • [26] A new concept in the development process of the interactive learning
    Kadry, Seifedine
    [J]. GLOBAL COOPERATION IN ENGINEERING EDUCATION: INNOVATIVE TECHNOLOGIES, STUDIES AND PROFESSIONAL DEVELOPMENT - INTERNATIONAL CONFERENCE PROCEEDINGS, 2007, : 70 - 74
  • [27] Human Feedback as Action Assignment in Interactive Reinforcement Learning
    Raza, Syed Ali
    Williams, Mary-Anne
    [J]. ACM TRANSACTIONS ON AUTONOMOUS AND ADAPTIVE SYSTEMS, 2020, 14 (04)
  • [28] Reinforcement learning using continuous states and interactive feedback
    Ayala, Angel
    Henriquez, Claudio
    Cruz, Francisco
    [J]. PROCEEDINGS OF 2ND INTERNATIONAL CONFERENCE ON APPLICATIONS OF INTELLIGENT SYSTEMS (APPIS 2019), 2019,
  • [29] An interactive food recommendation system using reinforcement learning
    Liu, Liangliang
    Guan, Yi
    Wang, Zi
    Shen, Rujia
    Zheng, Guowei
    Fu, Xuelian
    Yu, Xuehui
    Jiang, Jingchi
    [J]. EXPERT SYSTEMS WITH APPLICATIONS, 2024, 254
  • [30] Persistent rule-based interactive reinforcement learning
    Bignold, Adam
    Cruz, Francisco
    Dazeley, Richard
    Vamplew, Peter
    Foale, Cameron
    [J]. NEURAL COMPUTING & APPLICATIONS, 2023, 35 (32) : 23411 - 23428