高级检索

    基于代价敏感学习的卷烟感官质量评估方法

    A Method for Cigarette Sensory Quality Evaluation Based on Cost-sensitive Learning

    • 摘要: 针对卷烟感官评估中存在的代价敏感问题,将基于代价敏感的反馈神经网络应用于卷烟感官评估中。为了验证方法的有效性,结合烟草企业生产实际设置代价矩阵,并利用烟草公司提供的数据进行了对比试验。结果表明,与代价不敏感方法相比,本方法在错分总代价,高代价类别识别率以及平均分类准确率3个方面均有显著改善。

       

      Abstract: Arming at the cost-sensitive problems in cigarette sensory evaluation, Cost-Sensitive Back-Propagation Neural Networks (CSBPNN) was employed in this paper to deal with the problems derived from cigarette sensory evaluation. In order to verify the effectiveness of our methodology, the cost matrix was obtained based on production practice and the comparative experimental study was carried out by using dataset from a tobacco company. The experimental results indicated that our methods have a significant advantage on total misclassification cost, high cost label recognition rate and average classification accuracy when compared with the cost-insensitive methods.

       

    /

    返回文章
    返回