Autofhm:用于自动机器学习的Python库

V. V, Denil C Verghese, Mohammed Arshu P T, Randheer Ramesh K, Subin T G
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引用次数: 0

摘要

在引入机器学习之后,它经历了大量的研究和发展,导致许多领域的使用爆炸式增长。开发这样的模型不是一件容易的事情,它需要广泛的领域知识和技能。本文介绍了Autofhm,一个用于自动机器学习的python库。该工具自动化了机器学习模型创建所遵循的步骤,如特征工程、模型选择和超参数优化。对于给定的数据集,Autofhm生成新的更深层次的特征,这可以提高模型的性能。然后根据特征工程数据集选择性能最好的模型以及合适的超参数组合。Autofhm在5个分类任务和5个回归任务上进行了测试,结果表明,与TPOT等最先进的框架相比,Autofhm在更短的时间内获得了良好的结果。
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Autofhm: A Python Library for Automated Machine Learning
After the introduction of machine learning, it has gone through lots of research and development which resulted in an explosion of usage in many fields. Developing such a model is not an easy task and it requires extensive domain knowledge and skills. This paper presents Autofhm, a python library used for automated machine learning. This tool automates the steps followed for the machine learning model creation such as feature engineering, model selection, and hyperparameter optimization. For a given dataset, Autofhm generates new deeper features which could increase the performance of the model. Then it selects the best performing model along with the suitable hyperparameter combinations based on the feature engineered dataset. The Autofhm is tested on 5 classification tasks and 5 regression tasks and the results demonstrate that, Autofhm gives good results with lesser time when compared to state-of-the-art frameworks like TPOT.
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