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Intelligent Learning Agents Construction by Context-Redefined Language Technology (Resource Consumption Behavior Prediction Tasks)

机译:智能学习代理通过背景重新定义语言技术构建(资源消耗行为预测任务)

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摘要

This work deals with design and application questions of context-redefined computer languages for new information technologies. Realization problems of such languages are discussed for intelligent learning agents (ILA), which applied for solving of resource consumption behavior pre-diction tasks in communal services. Additional attention for implementing functions conversion methods was charged. The same approach can be used for another task solution too. Intelligent agent has complicated actions, which is defined by environment interaction and by internal states forming. As a result there are problems of intelligent agents design: search and formation of learning algorithms for intelligent agent; variation and invasion of these algorithms into the own intelligent agent. The article deals with the second problem. The approach is in the application of context-redefined language and it support system for problem solution. We concentrate attention to princi-pal unpredicted changing of source function algorithms. The main part of the intelligent learning agent is performance element. There are six components of agent performance element [1]. All of them are discussed from the context-redefined language use point of view. We interested in the conditions and methods context forming for every component of performance element. And we pay extra attention to methods of constructive function interpretation, which can be varied or can be also changed. Main idea is to extract changing parts of component algorithms and organize proper interaction between every part and the context which can change it directly or indirectly. As a result, required adaptive algorithm variation takes place on the base of obtained knowledge. One of the proper tasks is in forming this process during real time functioning of ILA.
机译:这项工作涉及用于新信息技术的上下文重新定义计算机语言的设计和应用问题。讨论了这种语言的实现问题,用于智能学习代理(ILA),它应用于解决公共服务中的资源消费行为预先解释任务。收取了实施功能转换方法的额外关注。同样的方法也可以用于另一个任务解决方案。智能代理具有复杂的行动,该行动由环境互动和内部状态形成。因此,有智能代理设计的问题:智能代理的搜索和形成学习算法;这些算法的变异与入侵自己智能代理商。文章涉及第二个问题。该方法是在应用上下文 - 重新定义的语言和IT支持系统中的应用。我们专注于Princi-PAL的不可预测的源功能算法改变。智能学习代理的主要部分是性能元素。代理性能元素有六种组成部分[1]。所有这些都是从上下文重新定义的语言使用点来讨论的。我们对绩效元素的每个组件的条件和方法感兴趣。并且我们要特别注意建设性函数解释方法,这可以改变或也可以改变。主要思想是提取组件算法的更改部分,并在每个部件和上下文之间组织适当的交互,可以直接或间接地改变它。结果,所需的自适应算法变化发生在获得的知识库上。在ILA的实时运行期间,其中一个适当的任务正在形成该过程。

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