通过演示实现编程反馈

K. K. Budhraja, T. Oates
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引用次数: 1

摘要

基于代理的建模是一种建模由相互作用的代理组成的动态系统的范例,这些代理分别受指定的行为规则控制。从演示的角度来看,通过规范突发(与代理相反)行为来训练此类代理的模型以产生突发行为更容易。无需通过代码进行手动行为规范,也无需依赖已定义的可能行为分类,演示者可以指定代理随时间的空间运动,并检索执行该运动所需的代理级参数。在现有的工作中,讨论了一个抽象的再现突现行为的框架。对框架的每个查询都独立于前面的查询。我们的工作解决了这一信息沟通缺陷,并结合了一个反馈机制来迭代地提高再现行为的质量。这是通过使用回归参数和数据点的变化来探索的。建立了利用数据点选择提高演示重复性的迭代优化方法。使用优化还显示了改进框架演示复制功能的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementing Feedback for Programming by Demonstration
Agent-based modeling is a paradigm of modeling dynamic systems of interacting agents that are individually governed by specified behavioral rules. Training a model of such agents to produce an emergent behavior by specification of the emergent (as opposed to agent) behavior is easier from a demonstration perspective. Without the involvement of manual behavior specification via code or reliance on a defined taxonomy of possible behaviors, the demonstrator specifies spatial motion of the agents over time, and retrieves agent-level parameters required to execute that motion. A framework for reproducing emergent behavior, given an abstract demonstration, is discussed in existing work. Each query to the framework is independent of previous queries. Our work addresses this information communication deficit and incorporates a feedback mechanism to iteratively improve the quality of the reproduced behavior. This is explored by variation of regression parameters and data points used. Using data point selection to improve demonstration replication is established as a means of iterative optimization. Using optimization also shows potential for improved demonstration replication capability for the framework.
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