A Study on Prediction Performance Measurement of Automated Machine Learning: Focusing on WiseProphet, a Korean Auto ML Service

E. Im, Jina Lee, Sungbyeong An, Gwang-Young Gim
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Abstract

In digital economics, where value creation using big data becomes important, the ability to analyze data using machine learning and deep learning technology is a key activity in corporate activities. Nevertheless, companies consider it difficult to introduce machine learning and artificial intelligence technologies because they need an understanding of the business as well as data and analysis algorithms. Accordingly, services such as automated machine learning have emerged for easy use of machine learning. In this study, the authors explored the automated machine learning service and compared the random forest and extreme gradient boosting analysis results using WiseProphet and Python. WiseProphet is used as a representative of automated machine learning solutions because it is a cloud-based service that anyone can easily access and can be used in various ways. It is contrasted with the model implemented by Python, which writes code with No coding. As a result of comparing the prediction performance, WiseProphet automatically outperformed the analysis result by parameter optimization.
自动机器学习预测性能测量研究:以韩国自动机器学习服务公司WiseProphet为例
在数字经济中,利用大数据创造价值变得非常重要,利用机器学习和深度学习技术分析数据的能力是企业活动中的一项关键活动。然而,企业认为引入机器学习和人工智能技术很困难,因为他们需要了解业务以及数据和分析算法。因此,为了方便使用机器学习,出现了自动机器学习等服务。在这项研究中,作者探索了自动化机器学习服务,并使用WiseProphet和Python比较了随机森林和极端梯度增强分析结果。WiseProphet被用作自动化机器学习解决方案的代表,因为它是一种基于云的服务,任何人都可以轻松访问并以各种方式使用。它与Python实现的模型形成对比,Python编写代码时不需要编码。通过比较预测性能,WiseProphet通过参数优化自动优于分析结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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