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Fuzzy rule-based systems for recognition-intensive classification in granular computing context

机译:颗粒计算环境中基于模糊规则的识别密集分类系统

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摘要

In traditional machine learning, classification is typically undertaken in the way of discriminative learning using probabilistic approaches, i.e. learning a classifier that discriminates one class from other classes. The above learning strategy is mainly due to the assumption that different classes are mutually exclusive and each instance is clear-cut. However, the above assumption does not always hold in the context of real-life data classification, especially when the nature of a classification task is to recognize patterns of specific classes. For example, in the context of emotion detection, multiple emotions may be identified from the same person at the same time, which indicates in general that different emotions may involve specific relationships rather than mutual exclusion. In this paper, we focus on classification problems that involve pattern recognition. In particular, we position the study in the context of granular computing, and propose the use of fuzzy rule-based systems for recognition-intensive classification of real-life data instances. Furthermore, we report an experimental study conducted using 7 UCI data sets on life sciences, to compare the fuzzy approach with four popular probabilistic approaches in pattern recognition tasks. The experimental results show that the fuzzy approach can not only be used as an alternative one to the probabilistic approaches but also is capable to capture more patterns which probabilistic approaches cannot achieve.
机译:在传统的机器学习中,分类通常是使用概率性方法以判别式学习的方式进行的,即学习一种将一个类别与其他类别区分开的分类器。上面的学习策略主要是由于以下假设:不同的类是互斥的,并且每个实例都是明确的。但是,以上假设并不总是适用于现实生活中的数据分类,特别是当分类任务的性质是识别特定类别的模式时。例如,在情绪检测的情况下,可以同时从同一个人识别出多种情绪,这通常表明不同的情绪可能涉及特定的关系而不是相互排斥。在本文中,我们集中于涉及模式识别的分类问题。尤其是,我们将研究定位在粒度计算的上下文中,并提出将基于模糊规则的系统用于识别密集型现实数据实例的分类。此外,我们报告了一项使用生命科学的7个UCI数据集进行的实验研究,以将模糊方法与模式识别任务中的四种流行概率方法进行比较。实验结果表明,模糊方法不仅可以作为概率方法的一种替代方法,而且还可以捕获概率方法无法实现的更多模式。

著录项

  • 作者

    Liu Han; Zhang Li;

  • 作者单位
  • 年度 2018
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
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