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Evaluating the quality of test data under the influence of vigilance parameter in flexfis

机译:在flexfis中警惕性参数的影响下评估测试数据的质量

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In this paper, we determine the influence of the vigilance parameter using a modified version of vector quantization used in Flexible Fuzzy Inference System (FLEXFIS) specifically for Takagi Sugeno fuzzy model. FLEXFIS adopts a single pass incremental learning approach for the antecedent parts of the rules' learning process. In order to achieve this learning process, an evolving version of vector quantization is used to either update or evolve new clusters or rules. It helps in the elimination of the outliers (samples with low dense region of the feature space). The use of vigilance parameter steers a tradeoff between plasticity and stability dilemma during the learning process. This is accomplished by selecting the best parameter grid search scenario in association with the cross validation procedure. This ensures some of the desired properties while training the systems during online operational mode such as computational complexity, robustness, preparametrizing of the number of clusters. It also overcomes the problem of cluster projection concept. The adopted algorithm calculates the distance from a new data point to the surface instead of centers as in conventional vector quantization. An evaluation is done on the test data of weather forecasting. A comparative study of the performance analysis for both the conventional and incremental version of vector quantization is also presented in this paper.
机译:在本文中,我们使用改进的矢量量化方法确定警惕性参数的影响,该方法用于柔性模糊推理系统(FLEXFIS),专门用于Takagi Sugeno模糊模型。 FLEXFIS在规则学习过程的前期部分采用单程增量学习方法。为了实现此学习过程,矢量量化的发展版本用于更新或发展新的聚类或规则。它有助于消除离群值(特征空间的低密度区域样本)。在学习过程中,警惕性参数的使用可以在可塑性和稳定性难题之间进行权衡。这是通过选择最佳参数网格搜索方案以及交叉验证过程来完成的。这样可以确保在在线操作模式下训练系统时,具有某些所需的属性,例如计算复杂性,鲁棒性,群集数量的预先设定。它还克服了集群投影概念的问题。采用的算法计算从新数据点到曲面的距离,而不是像常规矢量量化那样计算中心。对天气预报的测试数据进行评估。本文还对传统和增量版本的矢量量化性能分析进行了比较研究。

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