Deter and protect: crime modeling with multi-agent learning

被引:0
|
作者
Trevor R. Caskey
James S. Wasek
Anna Y. Franz
机构
[1] The George Washington University,
来源
关键词
Crime modeling; Agent-based modeling; Belief learning; game theory;
D O I
暂无
中图分类号
学科分类号
摘要
This paper presents a formal game-theoretic belief learning approach to model criminology’s routine activity theory (RAT). RAT states that for a crime to occur a motivated offender (criminal) and a desirable target (victim) must meet in space and time without the presence of capable guardianship (law enforcement). The novelty in using belief learning to model the dynamics of RAT’s offender, target, and guardian behaviors within an agent-based model is that the agents learn and adapt given observation of other agents’ actions without knowledge of the payoffs that drove the other agents’ choices. This is in contrast to other crime modeling research that has used reinforcement learning where the accumulated rewards gained from prior experiences are used to guide agent learning. This is an important distinction given the dynamics of RAT. It is the presence of the various agent types that provide opportunity for crime to occur, and not the potential for reward. Additionally, the belief learning approach presented fits the observed empirical data of case studies, producing statistically significant results with lower variance when compared to a reinforcement learning approach. Application of this new approach supports law enforcement in developing responses to crime problems and planning for the effects of displacement due to directed responses, thus deterring offenders and protecting the public through crime modeling with multi-agent learning.
引用
收藏
页码:155 / 169
页数:14
相关论文
共 50 条
  • [21] Attritable Multi-Agent Learning
    Cybenko, George
    Hallman, Roger
    DISRUPTIVE TECHNOLOGIES IN INFORMATION SCIENCES V, 2021, 11751
  • [22] Learning multi-agent cooperation
    Rivera, Corban
    Staley, Edward
    Llorens, Ashley
    FRONTIERS IN NEUROROBOTICS, 2022, 16
  • [23] Agent programmability in a multi-agent learning environment
    Cao, Y
    Greer, J
    ARTIFICIAL INTELLIGENCE IN EDUCATION: SHAPING THE FUTURE OF LEARNING THROUGH INTELLIGENT TECHNOLOGIES, 2003, 97 : 297 - 304
  • [24] MAGNet: Multi-agent Graph Network for Deep Multi-agent Reinforcement Learning
    Malysheva, Aleksandra
    Kudenko, Daniel
    Shpilman, Aleksei
    2019 XVI INTERNATIONAL SYMPOSIUM PROBLEMS OF REDUNDANCY IN INFORMATION AND CONTROL SYSTEMS (REDUNDANCY), 2019, : 171 - 176
  • [25] Modeling and Algorithms of Multi-agent Reinforcement Learning Using Stochastic Game
    Xie Guangqiang
    Chen Xuesong
    2010 THE 3RD INTERNATIONAL CONFERENCE ON COMPUTATIONAL INTELLIGENCE AND INDUSTRIAL APPLICATION (PACIIA2010), VOL VII, 2010, : 375 - 378
  • [26] Hierarchical Reinforcement Learning with Opponent Modeling for Distributed Multi-agent Cooperation
    Liang, Zhixuan
    Cao, Jiannong
    Jiang, Shan
    Saxena, Divya
    Xu, Huafeng
    2022 IEEE 42ND INTERNATIONAL CONFERENCE ON DISTRIBUTED COMPUTING SYSTEMS (ICDCS 2022), 2022, : 884 - 894
  • [27] Multi-agent reinforcement learning for modeling and control of thermostatically controlled loads
    Kazmi, Hussain
    Suykens, Johan
    Balint, Attila
    Driesen, Johan
    APPLIED ENERGY, 2019, 238 : 1022 - 1035
  • [28] A collaborative learning automata team model for modeling multi-agent systems
    Wang C.
    Koakutsu S.
    Okamoto T.
    Qian F.
    Wang, Cen (peter@chibau.jp), 1600, Institute of Electrical Engineers of Japan (137): : 759 - 767
  • [29] A Conceptual Modeling of Flocking-regulated Multi-agent Reinforcement Learning
    Chen, C. S.
    Hou, Yaqing
    Ong, Y. S.
    2016 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2016, : 5256 - 5262
  • [30] Modeling Moral Choices in Social Dilemmas with Multi-Agent Reinforcement Learning
    Tennant, Elizaveta
    Hailes, Stephen
    Musolesi, Mirco
    PROCEEDINGS OF THE THIRTY-SECOND INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, IJCAI 2023, 2023, : 317 - 325