交互颗粒计算中的粗糙集

A. Skowron, A. Jankowski
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引用次数: 16

摘要

解决复杂系统相关问题的决策支持需要智能体的相关计算模型,以及结合智能体计算推理的方法。智能体在复杂对象上执行计算(例如,(行为)模式、分类器、聚类、结构对象、规则集、聚合操作、(近似)推理方案等)。在颗粒计算(GC)中,所有这样的构建和/或诱导对象被称为颗粒。为了对复杂系统的交互计算进行建模,我们通过引入复杂颗粒(c-颗粒或简称颗粒)将现有的GC方法扩展到交互颗粒计算(IGC),这对代理执行的交互计算至关重要。许多涉及复杂系统的高级任务可以被归类为由智能体执行的控制任务,目的是相对于轨迹上考虑的质量度量来实现高质量的计算轨迹。在这里,新的挑战是制定策略来控制、预测和约束系统的行为。我们建议使用IGC框架来调查这些挑战。推理的目的是不时地控制计算方案,以达到所需的目标,这被称为自适应判断。这个推理处理颗粒和对它们的计算。适应性判断不仅仅是基于演绎、归纳和溯因的推理的混合。由于不确定性,主体通常不能准确预测行动(或计划)的结果。此外,启动行动(或计划)的复杂模糊概念的近似值随着时间的推移而漂移。因此,需要自适应策略来进化近似概念。特别是,自适应判断在由代理执行的颗粒计算的效率管理中非常需要,用于风险评估、风险处理和成本/收益分析。在讲座中,我们强调了基于粗糙集的方法在IGC中的作用。所讨论的方法是实现智慧技术(WisTech)计划的一步,是基于不同现实生活项目的多年经验而开发的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rough Sets in Interactive Granular Computing
Decision support in solving problems related to complex systems requires relevant computation models for the agents as well as methods for incorporating reasoning over computations performed by agents. Agents are performing computations on complex objects (e.g., (behavioral) patterns, classifiers, clusters, structural objects, sets of rules, aggregation operations, (approximate) reasoning schemes etc.). In Granular Computing (GC), all such constructed and/or induced objects are called granules. To model, crucial for the complex systems, interactive computations performed by agents, we extend the existing GC approach to Interactive Granular Computing (IGC) by introducing complex granules (c-granules or granules, for short). Many advanced tasks, concerning complex systems may be classified as control tasks performed by agents aiming at achieving the high quality computational trajectories relative to the considered quality measures over the trajectories. Here, new challenges are to develop strategies to control, predict , and bound the behavior of the system. We propose to investigate these challenges using the IGC framework. The reasoning, which aims at controlling the computational schemes from time-to-time, in order to achieve the required targets, is called an adaptive judgement. This reasoning deals with granules and computations over them. Adaptive judgement is more than a mixture of reasoning based on deduction, induction and abduction. Due to the uncertainty the agents generally cannot predict exactly the results of actions (or plans). Moreover, the approximations of the complex vague concepts initiating actions (or plans) are drifting with time. Hence, adaptive strategies for evolving approximations of concepts are needed. In particular, the adaptive judgement is very much needed in the efficiency management of granular computations, carried out by agents, for risk assessment, risk treatment, and cost/benefit analysis. In the lecture, we emphasize the role of the rough set based methods in IGC. The discussed approach is a step towards realization of the Wisdom Technology (WisTech) program, and is developed over years of experiences, based on the work on different real-life projects.
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