首页> 外文期刊>Computational & Mathematical Organization Theory >Some futures for cognitive modeling and architectures: design patterns for including better interaction with the world, moderators, and improved model to data fits (and so can you)
【24h】

Some futures for cognitive modeling and architectures: design patterns for including better interaction with the world, moderators, and improved model to data fits (and so can you)

机译:一些认知建模和架构的期货:设计模式包括与世界,主持人更好的互动,以及改进模型与数据适合(以及您也可以)

获取原文
获取原文并翻译 | 示例
       

摘要

We note some future areas for work with cognitive models and agents that as Colbert (I am America (and so can you!), 2007) notes, "so can you". We present three approaches as something like design patterns, so they can be applied to other architectures and tasks. These areas are: (a) Interacting directly with the screen-as-world. It is now possible for models to interact with uninstrumented interfaces both on the machine that the model is running on as well as remote machines. Improved interaction can not only support a broader range of behavior but also make the interaction more accurately model human behavior on tasks that include interaction. Just one implication is that this will force models to have more knowledge about interaction, an area that has been little modeled but essential for all tasks. (b) Providing the cognitive architecture with more representation of the body. In our example, we provide a physiological substrate to implement behavioral moderators' effects on cognition. Cognitive architectures can now be broader in the measurements they predict and correspond to. This approach provides a more complete and theoretically appropriate way to include new aspects of behavior including stressor effects and emotions in models. And (c) using machine learning techniques, particularly genetic algorithms (GAs), to fit models to data. Because of the model complexity, this is equivalent to performing a multi-variable non-linear stochastic multiple-output regression. Doing this by hand is completely inadequate. While there is a danger of overfitting using a GA, these fits can help provide a better understanding of the model and architecture, including how the architecture changes under moderators such stress. This paper also includes some notes on model maintenance and reporting.
机译:我们注意到一些未来的地区,以与COLBERT(我是美国(也可以!),2007年),“所以可以”的认知模型和代理商。我们提出了三种方法,如设计模式,因此它们可以应用于其他架构和任务。这些领域是:(a)直接与屏幕世界进行互动。现在可以在模型正在运行的机器上与远程计算机运行的机器上的型号交互。改进的交互不能仅支持更广泛的行为范围,而且还使交互更准确地模拟包括交互的任务的人类行为。只有一种含义是,这将强制模型来拥有更多关于互动的知识,这是一个对所有任务都很少但是必不可少的区域。 (b)提供具有更多身体表示的认知架构。在我们的示例中,我们提供了一种生理基础,以实施行为主持人对认知的影响。认知架构现在可以在他们预测和对应的测量中更广泛。这种方法提供了一种更完整的和理论上适当的方法,包括在包括模型中的压力源效果和情绪的行为的新方面。 (c)使用机器学习技术,特别是遗传算法(气体),将模型适合数据。由于模型复杂性,这相当于执行多变量非线性随机多输出回归。用手这样做是完全不足的。虽然使用GA存在过度装备的危险,但这些配合可以帮助更好地了解模型和架构,包括如何在主持人这种压力下变化。本文还包括一些关于模型维护和报告的注释。

著录项

相似文献

  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号