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Real World Examples of Agent based Decision Support Systems for Deep Learning based on Complex Feed Forward Neural Networks

机译:基于复合馈送前向神经网络的深度学习的基于代理基于Agent的基于代理的决策支持系统的实例

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Nature frequently shows us phenomena that in many cases are not fully understood. To research these phenomena we use approaches in computer simulations. This article presents a model based approach for the simulation of human brain functions in order to create recurrent machine learning map fractals that enable the investigation of any problem trained beforehand. On top of a neural network for which each neuron is illustrated with biological capabilities like collection, association, operation, definition and transformation, a thinking model for imagination and reasoning is exemplified in this research. This research illustrates the technical complexity of our dual thinking process in a mathematical and computational way and describes two examples, where an adaptive and self-regulating learning process was applied to real world examples. In conclusion, this research exemplifies how a previously researched conceptual model (SLA process) can be used for making progress to simulate the complex systematics of human thinking processes and gives an overview of the next major steps for making progress on how artificial intelligence can be used to simulate natural learning.
机译:大自然经常显示美国现象,在许多情况下不完全理解。研究这些现象,我们使用计算机模拟中的方法。本文介绍了一种基于模型,用于模拟人脑功能,以便创建经常性机器学习地图分形,使得能够预先培训的任何问题。在每个神经网络的顶部以收集,关联,操作,定义和转换等生物能力说明的神经网络,在本研究中举例说明了想象力和推理的思维模型。该研究说明了以数学和计算方式的双思维过程的技术复杂性,并描述了两个示例,其中自适应和自我调节学习过程应用于现实世界示例。总之,本研究举例说明了先前研究的概念模型(SLA过程)如何用于实现人类思维过程的复杂系统,并概述了在如何使用人工智能方面取得进展的下一个主要步骤模拟自然学习。

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