首页> 外文会议>International Conference on Fuzzy Systems and Data Mining >Technique for Annotation of Fuzzy Models: A Semantic Fuzzy Mining Approach
【24h】

Technique for Annotation of Fuzzy Models: A Semantic Fuzzy Mining Approach

机译:用于模糊模型的注释技术:语义模糊采矿方法

获取原文

摘要

The fuzzy models have shown to be ambiguous and characteristically primitive in nature when applied for data analysis problems in most settings. This is owing to the fact that with fuzzy models, it may not be practically possible to extract meaningful information about the underlying process elements when confronted with datasets that are unstructured in nature. To this end, the work in this paper demonstrates that it is possible to extract abstract knowledge and improve the information values of such type of models to a greater level by carefully integrating and tuning the semantics metrics that the fuzzy models lack. Theoretically, the work introduces a semantic fuzzy mining approach that is particularly focused on making use of the fuzzy logic and theories to represent the imprecise and uncertain (unstructured) data about the different domain processes, and then presents the resulting models in a format that allows one to analyse the available datasets based on concepts rather than the tags or labels in the events logs about the processes in question. In other words, this paper adopts the fuzzy logic which permits a proposal to be in another state as true or false, and in turn, evaluates the outcomes of the method using a series of case study experimentation and its comparison against the other benchmark algorithms used for process mining. The result shows that it is possible to determine through the classification process (e.g. using a classifier/reasoner) the presence of different patterns or traces that can be found within the discovered models, as well as the relationships the different process elements share amongst themselves within the knowledge-base. Ideally, the method is described as a fusion theory which integrates the fuzzy model with other tools or method, thus, supports a hybrid intelligent system.
机译:在大多数设置中申请数据分析问题时,模糊模型本质上表现为模糊和特征性地原始。这是由于使用模糊模型的事实,在面对本质上非结构化的数据集时,实际上可能无法提取有关底层处理元素的有意义信息。为此,本文的工作表明,通过仔细集成和调整模糊模型缺乏的语义指标,可以提取抽象知识并改善这种类型类型的模型的信息值。从理论上讲,该工作引入了一种语义模糊挖掘方法,特别专注于利用模糊逻辑和理论来表示关于不同域进程的不精确和不确定(非结构化)数据,然后以允许的格式呈现所得模型一个用于根据概念来分析可用数据集,而不是事件中的标签或标签对有问题的进程日志。换句话说,本文采用模糊逻辑,该模糊逻辑允许提案在另一个状态为真实或假,然后使用一系列案例研究实验和与其他基准算法的比较来评估方法的结果用于过程挖掘。结果表明,可以通过分类过程(例如,使用分类器/推理器)来确定可以在发现的模型中找到的不同模式或迹线,以及不同处理元素在自己中共享的关系知识库。理想地,该方法被描述为融合理论,其与其他工具或方法集成了模糊模型,因此支持混合智能系统。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号