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A Frequency Based Encoding Technique for Transformation of Categorical Variables in Mixed IVF Dataset

机译:混合IVF数据集中分类变量转换的基于频率的编码技术

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Implantation prediction of in-vitro fertilization (IVF) embryos is critical for the success of the treatment. In this study, Support Vector Machine (SVM) method has been used on an original IVF dataset for classification of embryos according to implantation potentials. The dataset we analyzed includes both categorical and continuous feature values. Transformation of categorical variables into numeric attributes is an important pre-processing stage for SVM affecting the performance of the classification. We have proposed a frequency based encoding technique for transformation of categorical variables. Experimental results revealed that, the proposed technique significantly improved the performance of IVF implantation prediction in terms of Area Under ROC curve (0.712±0.032) compared to common binary encoding and expert judgement based transformation methods (0.676±0.033 and 0.696±0.024, respectively).
机译:体外施肥(IVF)胚胎的植入预测对于治疗成功至关重要。在本研究中,支持向量机(SVM)方法已在原始IVF数据集上使用,用于根据植入电位分类胚胎。我们分析的数据集包括分类和连续特征值。分类变量转换为数字属性是影响分类性能的SVM的重要预处理阶段。我们提出了一种基于频率的分类变量转换的编码技术。实验结果表明,与常见的二进制编码和专业判断的转化方法相比,所提出的技术在ROC曲线下的面积(0.712±0.032)下的面积上显着提高了IVF植入预测的性能(0.712±0.032)(分别为0.676±0.033和0.696±0.024) 。

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