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Aggregating linguistic expert knowledge in type-2 fuzzy ontologies

机译:整合2型模糊本体中的语言专家知识

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摘要

In many industrial contexts, knowledge and data provided by experts are imprecise as there seems to be an understanding that "experts do not need precise details as they understand anyway what is meant". The imprecision inherent in the knowledge that experts acquire in their practice require decision support tools that can be tailored to the specific application contexts to aid complex decisions. As a specific example, expert knowledge expressed in linguistic terms is not precisely structured and concepts are not defined specifically enough in order to be easy to use and process. If we want to represent and use expert knowledge for knowledge-based systems on a general level, that is easily adaptable, we need to find ways to represent and process knowledge elements; our approach is to use interval-valued fuzzy sets, fuzzy ontology and aggregation operators. We show that these instruments will offer us a novel approach for aggregation of imprecise data to obtain actionable knowledge to aid complex decisions. The framework is described and the approach is shown through the context of a fuzzy wine ontology; the problem formulation resembles many features of important and complex decision making problems found in different industries. We describe the potential application of the framework in the case of paper machine maintenance. A web-based application is introduced to better demonstrate the benefits decision-makers can receive from the proposed framework. Additionally, we present an approach to utilize the framework in finding consensual solutions in situations involving several experts. (C) 2015 Elsevier B.V. All rights reserved.
机译:在许多工业环境中,专家提供的知识和数据并不精确,因为人们似乎理解到“专家无论如何理解含义都不需要精确的细节”。专家在实践中获得的知识固有的不精确性要求决策支持工具可以针对特定的应用程序环境进行定制,以帮助进行复杂的决策。作为一个具体示例,用语言术语表达的专家知识的结构不够精确,概念定义不够明确,以便于使用和处理。如果我们想在通用水平上轻松地适应基于知识的系统并在其中使用专家知识,就需要找到表示和处理知识元素的方法;我们的方法是使用区间值模糊集,模糊本体和聚合算子。我们表明,这些工具将为我们提供一种新颖的方法,用于汇总不精确的数据,以获得可操作的知识,以帮助进行复杂的决策。通过模糊葡萄酒本体的上下文描述了框架并展示了方法。问题表述类似于在不同行业中发现的重要而复杂的决策问题的许多特征。我们描述了该框架在造纸机维护中的潜在应用。引入了一个基于Web的应用程序,以更好地展示决策者可以从所建议的框架中获得的好处。此外,我们提出了一种在涉及多位专家的情况下利用该框架寻找共识解决方案的方法。 (C)2015 Elsevier B.V.保留所有权利。

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