A Comparative Study of Different Ensemble Learning Techniques Using Wisconsin Breast Cancer Dataset

Chandan Baneriee, Sayak Paul, Moinak Ghoshal
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引用次数: 7

Abstract

The researches in the world of Machine Learning and Artificial Intelligence are increasing as the modern day progresses. By finding manifold applications in wide range of fields the art of Machine Learning only promises to get better. Predictive models form the core of Machine Learning. Better the accuracy better the model is and so is the solution to a particular problem. Ensemble Learning algorithms are a set of algorithms which are used to enhance the predictive accuracy of a predictive model. In this work, a comparative study of different Ensemble Learning techniques has been presented using the Wisconsin Breast Cancer dataset. The primary objective behind using Ensemble learning here is a classification task. This comparative study should help the researchers to find the suitable Ensemble Learning technique for improving their results.
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基于威斯康星乳腺癌数据集的不同集成学习技术的比较研究
随着现代社会的发展,机器学习和人工智能领域的研究越来越多。通过在广泛的领域找到多种应用,机器学习的艺术只会变得更好。预测模型是机器学习的核心。模型的准确性越好,解决特定问题的方法也就越好。集成学习算法是一组用于提高预测模型预测精度的算法。在这项工作中,使用威斯康星州乳腺癌数据集对不同的集成学习技术进行了比较研究。这里使用集成学习的主要目的是分类任务。通过对比研究,可以帮助研究人员找到合适的集成学习技术来提高研究结果。
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