- published: 19 Jul 2016
- views: 10273
An agent-based model (ABM) is one of a class of computational models for simulating the actions and interactions of autonomous agents (both individual or collective entities such as organizations or groups) with a view to assessing their effects on the system as a whole. It combines elements of game theory, complex systems, emergence, computational sociology, multi-agent systems, and evolutionary programming. Monte Carlo methods are used to introduce randomness. Particularly within ecology, ABMs are also called individual-based models (IBMs), and individuals within IBMs may be simpler than fully autonomous agents within ABMs. A review of recent literature on individual-based models, agent-based models, and multiagent systems shows that ABMs are used on non-computing related scientific domains including biology, ecology and social science. Agent-based modeling is related to, but distinct from, the concept of multi-agent systems or multi-agent simulation in that the goal of ABM is to search for explanatory insight into the collective behavior of agents obeying simple rules, typically in natural systems, rather than in designing agents or solving specific practical or engineering problems.
Agent may refer to:
Introduction video for the Complexity Explorer course, Introduction to Agent-based Modeling. Learn more at abm.complexityexplorer.org. Please note there is a typo in this video. The section beginning at minute 2:13 approximately, the correct name to be displayed is Forrest Stonedahl, not Stoendahl. Next session: Summer 2017
PyData DC 2016 Agent-based modeling is a technique used to explore both complexity and emergence by simulating individual actors and their actions within a system. Think of systems such as the traffic in a city, or like those in financial markets where one actor can have an effect on the decisions of others until the system’s direction changes its course. In this talk, you will learn about ABMs in Python.
his video introduces the method of Agent Based Modeling. Last week we introduced Emergence. Agent Based Modeling partly elaborates on this topic. Agent Based Modeling can be used to model emergent behaviour. The next couple of videos will explain what this method of modeling is, what it can be used for and if we can even use this technique to model human behaviour. These videos are part of an online course on www.futurelearn.com/courses/complexity-and-uncertainty. Currently, not all agent based models referred to in this playlist are uploaded on YouTube. You can find those in the course.
An introduction to the NetLogo programming language. We build a little 'random walk' agent-based model. This video is best seen at 720 resolution: click the gear icon, then 720, or click the full-screen button. Full class playlist at https://www.youtube.com/playlist?list=PLSx7bGPy9gbHivKzRg2enzdABgKUd3u-E
ROB AXTELL Rob Axtell works at the intersection of economics, behavioral game theory, and multi-agent systems computer science. His most recent research attempts to emerge a macroeconomy from tens of millions of interacting agents. He is Chair of the Dept. of Computational Social Science at George Mason University and External Professor at the Santa Fe Institute. About TEDx In the spirit of ideas worth spreading, TEDx is a program of local, self-organized events that bring people together to share a TED-like experience. At a TEDx event, TEDTalks video and live speakers combine to spark deep discussion and connection in a small group. These local, self-organized events are branded TEDx, where x = independently organized TED event. The TED Conference provides general guidance for the TEDx p...
The theme for this seminar series was 'Agent Based Modelling for Social Innovation'. There were two speakers, this footage features Dr Georgij Bobashev (UCD Dynamics Lab and RTI International) and his presentation "Agent Based Modelling and Application in the Social Sciences". The second paper by PhD Hang Xiong, "Peer Effects in the Diffusion of Innovations: An Social Simulation Experiment Approach" is available to view here: https://www.youtube.com/watch?v=lTyypYm4NX8 The footage also includes the Q&A; session.
An overview of Agent-Based Modeling. Based on presentations I've given at Swarmfest and the Eclipse Modeling Day. For more, see my blog articles starting with: http://milesparker.blogspot.com/2009/05/agent-based-model-for-influenza-h1n1.html. For more on AMP, see: http://eclipse.org/amp. Special thanks to Aatos Beck for allowing me to include the beautiful butterfly image -- he holds all rights to that image.
This video explains the main principle of Agent Based Modeling. Next, it introduces Thomas Schelling’s model of segregation.
Introduction video for the Complexity Explorer course, Introduction to Agent-based Modeling. Learn more at abm.complexityexplorer.org. Please note there is a typo in this video. The section beginning at minute 2:13 approximately, the correct name to be displayed is Forrest Stonedahl, not Stoendahl. Next session: Summer 2017
PyData DC 2016 Agent-based modeling is a technique used to explore both complexity and emergence by simulating individual actors and their actions within a system. Think of systems such as the traffic in a city, or like those in financial markets where one actor can have an effect on the decisions of others until the system’s direction changes its course. In this talk, you will learn about ABMs in Python.
his video introduces the method of Agent Based Modeling. Last week we introduced Emergence. Agent Based Modeling partly elaborates on this topic. Agent Based Modeling can be used to model emergent behaviour. The next couple of videos will explain what this method of modeling is, what it can be used for and if we can even use this technique to model human behaviour. These videos are part of an online course on www.futurelearn.com/courses/complexity-and-uncertainty. Currently, not all agent based models referred to in this playlist are uploaded on YouTube. You can find those in the course.
An introduction to the NetLogo programming language. We build a little 'random walk' agent-based model. This video is best seen at 720 resolution: click the gear icon, then 720, or click the full-screen button. Full class playlist at https://www.youtube.com/playlist?list=PLSx7bGPy9gbHivKzRg2enzdABgKUd3u-E
ROB AXTELL Rob Axtell works at the intersection of economics, behavioral game theory, and multi-agent systems computer science. His most recent research attempts to emerge a macroeconomy from tens of millions of interacting agents. He is Chair of the Dept. of Computational Social Science at George Mason University and External Professor at the Santa Fe Institute. About TEDx In the spirit of ideas worth spreading, TEDx is a program of local, self-organized events that bring people together to share a TED-like experience. At a TEDx event, TEDTalks video and live speakers combine to spark deep discussion and connection in a small group. These local, self-organized events are branded TEDx, where x = independently organized TED event. The TED Conference provides general guidance for the TEDx p...
The theme for this seminar series was 'Agent Based Modelling for Social Innovation'. There were two speakers, this footage features Dr Georgij Bobashev (UCD Dynamics Lab and RTI International) and his presentation "Agent Based Modelling and Application in the Social Sciences". The second paper by PhD Hang Xiong, "Peer Effects in the Diffusion of Innovations: An Social Simulation Experiment Approach" is available to view here: https://www.youtube.com/watch?v=lTyypYm4NX8 The footage also includes the Q&A; session.
An overview of Agent-Based Modeling. Based on presentations I've given at Swarmfest and the Eclipse Modeling Day. For more, see my blog articles starting with: http://milesparker.blogspot.com/2009/05/agent-based-model-for-influenza-h1n1.html. For more on AMP, see: http://eclipse.org/amp. Special thanks to Aatos Beck for allowing me to include the beautiful butterfly image -- he holds all rights to that image.
This video explains the main principle of Agent Based Modeling. Next, it introduces Thomas Schelling’s model of segregation.