forester: A Tree-Based AutoML Tool in R

Hubert Ruczyński, Anna Kozak
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Abstract

The majority of automated machine learning (AutoML) solutions are developed in Python, however a large percentage of data scientists are associated with the R language. Unfortunately, there are limited R solutions available. Moreover high entry level means they are not accessible to everyone, due to required knowledge about machine learning (ML). To fill this gap, we present the forester package, which offers ease of use regardless of the user's proficiency in the area of machine learning. The forester is an open-source AutoML package implemented in R designed for training high-quality tree-based models on tabular data. It fully supports binary and multiclass classification, regression, and partially survival analysis tasks. With just a few functions, the user is capable of detecting issues regarding the data quality, preparing the preprocessing pipeline, training and tuning tree-based models, evaluating the results, and creating the report for further analysis.
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forester:基于树的 R 语言 AutoML 工具
大多数自动化机器学习(AutoML)解决方案都是用 Python 开发的,但也有很大一部分数据科学家使用 R 语言。遗憾的是,目前可用的 R 语言解决方案非常有限。此外,由于需要具备机器学习(ML)方面的知识,因此入门级较高的解决方案并非人人都能使用。为了填补这一空白,我们推出了 forester 软件包,无论用户在机器学习领域是否熟练,都能轻松使用。forester 是一个用 R 实现的开源 AutoML 软件包,旨在对表格数据训练基于树的高质量模型。它完全支持二元和多类分类、回归和部分生存分析任务。用户只需使用几个函数,就能检测数据质量问题,准备预处理管道,训练和调整基于树的模型,评估结果,并创建用于进一步分析的报告。
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