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Automatic selection of relevant features using Rough Set Theory for real-time situation recognition based on fuzzy SOM-based CBR

机译:使用基于模糊SOM的CBR的粗糙集理论自动选择相关特征以进行实时情况识别

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This paper investigates feature selection to discard irrelevant features for dimensionality reduction and improving situation recognition process. A situation illustrating the internal structure of a system state and its related environment is based on a large set of characteristics (features). Real-time situation recognition is still a challenge because of dealing with incremental knowledge as well as imprecise, uncertain, and redundant data (features). Investigation of relevant and key situations features could effectively enhance the situation recognition performance in terms of accuracy and computational complexity. In this paper, Case-Based Reasoning (CBR) as a problem solving approach is used for situation recognition. A fuzzy SOM-based approach by integration of Situation-Operator Modeling (SOM) and Fuzzy Logic (FL) is provided for knowledge representation in CBR process. A feature selection is realized using Rough Set Theory (RST) for data mining and uncertainty management in real-time applications. Different feature selection algorithms based on RST are applied to fuzzy SOM-based CBR. An analysis of the performance of all resulting combinations is done in terms of feature reduction and situation recognition. Finally, the proposed CBR approach is realized using experiments based on driving maneuvers conducted by a professional driving simulator. This application shows the effectiveness as well as the accuracy of the introduced approach.
机译:本文研究了特征选择以丢弃不相关的特征,以减少维数并改善情况识别过程。说明系统状态及其相关环境的内部结构的情况是基于大量特征(功能)的。由于要处理增量知识以及不精确,不确定和冗余的数据(功能),因此实时情况识别仍然是一个挑战。对相关和关键情况特征的调查可以在准确性和计算复杂性方面有效地提高情况识别性能。在本文中,基于案例的推理(CBR)作为一种问题解决方法被用于情境识别。通过集成情境-操作员建模(SOM)和模糊逻辑(FL),提供了一种基于模糊SOM的方法,用于CBR过程中的知识表示。使用粗糙集理论(RST)实现功能选择,用于实时应用中的数据挖掘和不确定性管理。将基于RST的不同特征选择算法应用于基于模糊SOM的CBR。对所有结果组合的性能进行了功能减少和情况识别方面的分析。最后,通过基于由专业驾驶模拟器进行的驾驶操作的实验,来实现所提出的CBR方法。该应用程序显示了所引入方法的有效性和准确性。

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