首页> 美国卫生研究院文献>PLoS Clinical Trials >An approach on the implementation of full batch, online and mini-batch learning on a Mamdani based neuro-fuzzy system with center-of-sets defuzzification: Analysis and evaluation about its functionality, performance, and behavior
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An approach on the implementation of full batch, online and mini-batch learning on a Mamdani based neuro-fuzzy system with center-of-sets defuzzification: Analysis and evaluation about its functionality, performance, and behavior

机译:在基于Mamdani的神经模糊系统上进行全批处理,在线和小批量学习的方法,该系统具有集中心去模糊化:有关其功能,性能和行为的分析和评估

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摘要

Due to the rapid technological evolution and communications accessibility, data generated from different sources of information show an exponential growth behavior. That is, volume of data samples that need to be analyzed are getting larger, so the methods for its processing have to adapt to this condition, focusing mainly on ensuring the computation is efficient, especially when the analysis tools are based on computational intelligence techniques. As we know, if you do not have a good control of the handling of the volume of the data, some techniques that are based on learning iterative processes could represent an excessive load of computation and could take a prohibitive time in trying to find a solution that could not come close to desired. There are learning methods known as full batch, online and mini-batch, and they represent a good strategy to this problem since they are oriented to the processing of data according to the size or volume of available data samples that require analysis. In this first approach, synthetic datasets with a small and medium volume were used, since the main objective is to define its implementation and in experimentation phase through regression analysis obtain information that allows us to assess the performance and behavior of different learning methods under distinct conditions. To carry out this study, a Mamdani based neuro-fuzzy system with center-of-sets defuzzification with support of multiple inputs and outputs was designed and implemented that had the flexibility to use any of the three learning methods, which were implemented within the training process. Finally, results show that the learning method with best performances was Mini-Batch when compared to full batch and online learning methods. The results obtained by mini-batch learning method are as follows; mean correlation coefficient R¯ with 0.8268 and coefficient of determination R2¯ with 0.7444, and is also the method with better control of the dispersion between the results obtained from the 30 experiments executed per each dataset processed.
机译:由于技术的迅速发展和通信的可访问性,从不同信息源生成的数据显示出指数级增长的行为。也就是说,需要分析的数据样本量越来越大,因此其处理方法必须适应这种情况,主要集中在确保计算效率上,特别是当分析工具基于计算智能技术时。众所周知,如果您无法很好地控制数据量的处理,则某些基于学习迭代过程的技术可能会导致计算量过大,并且可能会花费大量时间来寻找解决方案那无法接近期望。有称为全批处理,在线和微型批处理的学习方法,它们代表了此问题的好策略,因为它们根据需要分析的可用数据样本的大小或数量来定向数据处理。在第一种方法中,使用了中小型的合成数据集,因为主要目的是定义其实现方式,并且在实验阶段通过回归分析获得信息,使我们能够评估不同条件下不同学习方法的性能和行为。 。为了进行这项研究,设计并实施了一套基于Mamdani的神经模糊系统,该系统具有集中心去模糊功能,并支持多个输入和输出,可以灵活地使用在培训中实施的三种学习方法中的任何一种处理。最后,结果表明,与完整批处理和在线学习方法相比,性能最佳的学习方法是迷你批处理。通过小批量学习方法获得的结果如下:平均相关系数<数学xmlns:mml =“ http://www.w3.org/1998/Math/MathML” id =“ M1”溢出=“ scroll”> <移动器重音=“ true”> <割> R 和确定系数 <移动者口音=” true“> R 2 ,其结果为0.7444,也是更好地控制两者之间分散的方法从每个处理的数据集执行的30个实验中获得的结果。

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