用于分类的多个soms

N. Goerke, F. Kintzler, Bernd Brüggemann
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引用次数: 3

摘要

我们提出了一种利用自组织神经网络的分类能力从原始数据中提取符号信息的方法。Multi-SOM (M-SOM)方法是自组织映射(SOM)的一种变体。Multi-SOMS由一组伙伴SOMs组成,这些伙伴SOMs彼此同时或并发训练,以适应不同的类别。经过训练的M-SOM将奇异吸引子的非线性时间序列转换为符号流,足以进行进一步分类或控制任务。我们相信,使用Multi-SOM方法进行分类,可以提供各种新的应用。
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Multi-SOMs for classification
We propose a method to use the classification capabilities of self organising neural networks to extract symbolic information from raw data. The Multi-SOM (M-SOM) approach is a variant of Self Organising Maps (SOM). Multi-SOMS consist of a set of partner SOMs, trained simultaneously and in concurrence to each other, to adapt to different classes. The trained M-SOM transforms the non-linear time series of a strange attractor into a stream of symbols, adequate for further classification or for control tasks. We are convinced, that using the Multi-SOM approch for classification, gives a variety of new applications.
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
11
期刊介绍: Intelligent systems refer broadly to computer embedded or controlled systems, machines and devices that possess a certain degree of intelligence. IJISTA, a peer-reviewed double-blind refereed journal, publishes original papers featuring innovative and practical technologies related to the design and development of intelligent systems. Its coverage also includes papers on intelligent systems applications in areas such as manufacturing, bioengineering, agriculture, services, home automation and appliances, medical robots and robotic rehabilitations, space exploration, etc. Topics covered include: -Robotics and mechatronics technologies- Artificial intelligence and knowledge based systems technologies- Real-time computing and its algorithms- Embedded systems technologies- Actuators and sensors- Mico/nano technologies- Sensing and multiple sensor fusion- Machine vision, image processing, pattern recognition and speech recognition and synthesis- Motion/force sensing and control- Intelligent product design, configuration and evaluation- Real time learning and machine behaviours- Fault detection, fault analysis and diagnostics- Digital communications and mobile computing- CAD and object oriented simulations.
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