论文标题
基于知觉推理的语言优化问题的解决方案方法
Perceptual reasoning based solution methodology for linguistic optimization problems
论文作者
论文摘要
在现实生活中的决策通常可以建模为优化问题。它需要考虑各种属性,例如人类的偏好和思维,这限制了实现问题目标的最佳价值。根据情况,可以将目标的价值最大化或最小化。很多时候,这些问题参数的价值是语言形式,因为人类自然地理解并使用单词来表达自己。因此,这些问题被称为语言优化问题(LOPS),有两种类型,即单一客观语言优化问题(单位)和多目标语言优化问题(Moops)。在这些LOPS中,目标函数的价值在决策空间的所有点都不知道,因此,目标函数以及问题限制与IF-then规则相关联。 Tsukamoto推断方法已被用来解决这些倾角。但是,它有缺点。作为,语言信息不可避免地要求用单词(CWW)使用计算,因此提出了基于2个培训语言模型的解决方案方法。但是,我们发现,基于2键盘语言模型的解决方案方法论使用Type-1模糊集和序数项集的组合表示语言信息的语义。正如本文在本文中,最好使用Interval-2模糊集对语言信息的语义进行最佳建模,因此,我们建议基于CWW方法的LOPS进行解决方案方法。基于感知计算的解决方案方法使用了CWW引擎的新设计,称为感知推理(PR)。当前形式的PR适用于求解唯一,因此,我们还将其扩展到了摩洛普。
Decision making in real-life scenarios may often be modeled as an optimization problem. It requires the consideration of various attributes like human preferences and thinking, which constrain achieving the optimal value of the problem objectives. The value of the objectives may be maximized or minimized, depending on the situation. Numerous times, the values of these problem parameters are in linguistic form, as human beings naturally understand and express themselves using words. These problems are therefore termed as linguistic optimization problems (LOPs), and are of two types, namely single objective linguistic optimization problems (SOLOPs) and multi-objective linguistic optimization problems (MOLOPs). In these LOPs, the value of the objective function(s) may not be known at all points of the decision space, and therefore, the objective function(s) as well as problem constraints are linked by the if-then rules. Tsukamoto inference method has been used to solve these LOPs; however, it suffers from drawbacks. As, the use of linguistic information inevitably calls for the utilization of computing with words (CWW), and therefore, 2-tuple linguistic model based solution methodologies were proposed for LOPs. However, we found that 2-tuple linguistic model based solution methodologies represent the semantics of the linguistic information using a combination of type-1 fuzzy sets and ordinal term sets. As, the semantics of linguistic information are best modeled using the interval type-2 fuzzy sets, hence we propose solution methodologies for LOPs based on CWW approach of perceptual computing, in this paper. The perceptual computing based solution methodologies use a novel design of CWW engine, called the perceptual reasoning (PR). PR in the current form is suitable for solving SOLOPs and, hence, we have also extended it to the MOLOPs.