Breast Cancer Data Analysis using Machine Learning Approaches

Sidhant Mallick, Rasmita Dash, Rajashree Dash, Rasmita Rautray
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引用次数: 2

Abstract

One of the leading cause of death is cancer. Lung cancer is the most common cancer and breast cancer is the second common cancer found in women. Thus sophisticated techniques must be designed to deal with these patients or the data generated from these patients. This system focuses on prediction of breast cancer where it categorizes the tumor as malignant or benign. Specialized machine learning algorithms have been used for creating models like decision trees, logistic regression, random forest, naive Bayes, Support vector machine along with Artificial neural networks which are applied on preprocessed data. Preprocessing of the data was done to check for inadequacies such as missing or null data points, categorical data for variables to contain label value rather than numeric, splitting of data set so as to have training and testing set and feature scaling to put our data set in range. Furthermore, dimensionality reduction methods were used in some datasets to improve the accuracy of the models. Artificial neural networks were used with different optimizers to check for the best performance.
使用机器学习方法进行乳腺癌数据分析
癌症是导致死亡的主要原因之一。肺癌是最常见的癌症,乳腺癌是女性中第二常见的癌症。因此,必须设计复杂的技术来处理这些患者或从这些患者中产生的数据。该系统的重点是预测乳腺癌,并将肿瘤分为恶性或良性。专门的机器学习算法已用于创建模型,如决策树,逻辑回归,随机森林,朴素贝叶斯,支持向量机以及应用于预处理数据的人工神经网络。对数据进行预处理以检查不足之处,例如缺失或null数据点,变量的分类数据包含标签值而不是数字,分裂数据集以便有训练和测试集以及特征缩放以使我们的数据集在范围内。此外,在一些数据集上采用降维方法来提高模型的精度。使用人工神经网络和不同的优化器来检查最佳性能。
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