数据预处理与数据增强技术综述

Kiran Maharana, Surajit Mondal, Bhushankumar Nemade
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引用次数: 114

摘要

本文概述了机器学习中的数据预处理,重点讨论了构建机器学习问题时的所有类型的问题。它处理预处理过程中的两个重要问题(i)数据问题和(ii)采用最佳方法进行数据分析的步骤。由于原始数据容易受到噪声、损坏、丢失和数据不一致的影响,因此有必要执行预处理步骤,这可以使用分类、聚类、关联和许多其他可用的预处理技术来完成。较差的数据主要会影响准确性,导致预测错误,因此提高数据集的质量是很有必要的。因此,数据预处理是处理这类问题的最好方法。它通过清洗、集成、转换和约简方法使从数据集中提取知识变得更加容易。由于信息是通过多个来源和实际应用程序收集的,因此总是存在数据缺失和数据种类显著差异的问题。因此,数据增强方法为机器学习模型生成数据。减少对训练数据的依赖,提高机器学习模型的性能。本文讨论了翻转、轻微旋转等对图像数据进行增强的方法,并给出了如何在不扭曲原始数据的情况下进行数据增强的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review: Data pre-processing and data augmentation techniques

This review paper provides an overview of data pre-processing in Machine learning, focusing on all types of problems while building the machine learning problems. It deals with two significant issues in the pre-processing process (i). issues with data and (ii). Steps to follow to do data analysis with its best approach. As raw data are vulnerable to noise, corruption, missing, and inconsistent data, it is necessary to perform pre-processing steps, which is done using classification, clustering, and association and many other pre-processing techniques available. Poor data can primarily affect the accuracy and lead to false prediction, so it is necessary to improve the dataset's quality. So, data pre-processing is the best way to deal with such problems. It makes the knowledge extraction from the data set much easier with cleaning, Integration, transformation, and reduction methods. The issue with Data missing and significant differences in the variety of data always exists as the information is collected through multiple sources and from a real-world application. So, the data augmentation approach generates data for machine learning models. To decrease the dependency on training data and to improve the performance of the machine learning model. This paper discusses flipping, rotating with slight degrees and others to augment the image data and shows how to perform data augmentation methods without distorting the original data.

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