Automated Machine Learning based on Genetic Programming: a case study on a real house pricing dataset

S. Masrom, Thuraiya Mohd, Nur Syafiqah Jamil, Abdullah Sani Abdul Rahman, N. Baharun
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引用次数: 5

Abstract

Designing an effective machine learning model for prediction or classification problem is a tedious endeavor. Significant time and expertise are needed to customize the model for a specific problem. A significant way to reduce the complicated design is by using Automated Machine Learning (AML) that can intelligently optimize the best pipeline suitable for a problem or dataset. This paper demonstrates the utilization of an AML that has been developed with a meta-heuristic algorithm namely Genetic Programming (GP). Empirical experiment has been conducted to test the performances of AML on a real dataset of house prices in the area of Petaling Jaya, Selangor. The results show that the AML with GP able to produce the best pipeline of machine learning with high score of accuracy and minimal error. (Abstract)
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基于遗传编程的自动机器学习:一个真实房价数据集的案例研究
为预测或分类问题设计一个有效的机器学习模型是一项乏味的工作。为特定问题定制模型需要大量的时间和专业知识。减少复杂设计的一个重要方法是使用自动机器学习(AML),它可以智能地优化适合问题或数据集的最佳管道。本文演示了利用一种元启发式算法即遗传规划(GP)开发的AML。已经进行了实证实验,以测试AML在雪兰莪州Petaling Jaya地区的真实房价数据集上的性能。结果表明,带GP的AML能够产生最佳的机器学习管道,具有较高的准确率和最小的误差。(抽象)
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