机器学习中的回归模型综述

Sunil Kumar, Vaibhav Bhatnagar
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引用次数: 1

摘要

机器学习是实现人工智能的活跃领域和技术之一。机器学习算法的复杂性给预测最佳算法带来了问题。在机器学习(ML)中有许多复杂的算法来确定寻找回归趋势的合适方法,从而在变量中间建立相关关联是非常困难的,我们将回顾机器学习中使用的不同类型的回归。回归模型主要有线性回归、Logistic回归、多项式回归、Ridge回归、贝叶斯回归和Lasso回归六种类型。本文概述了上述回归模型,并试图找到比较和适合机器学习。数据分析的先决条件是在数据集中的无数考虑因素之间启动关联,关联对于数据的预测和探索至关重要。回归分析就是这样一个建立数据集之间关联的过程。本文的工作主要侧重于不同的回归分析模型,它们如何在机器学习的不同数据集的背景下开始定制。选择准确的勘探模型是最具挑战性的任务,因此,本研究对这些模型进行了全面的考虑。在机器学习中,通过这些模型以完美的方式,通过准确的数据集,进行数据探索和预测,可以提供最精确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review of Regression Models in Machine Learning
Machine learning is one of the active fields and technologies to realize artificial intelligence (AI). The complexity of machine learning algorithms creates problems to predict the best algorithm. There are many complex algorithms in machine learning (ML) to determine the appropriate method for finding regression trends, thereby establishing the correlation association in the middle of variables is very difficult, we are going to review different types of regressions used in Machine Learning. There are mainly six types of regression model Linear, Logistic, Polynomial, Ridge, Bayesian Linear and Lasso. This paper overview the above-mentioned regression model and will try to find the comparison and suitability for Machine Learning. A data analysis prerequisite to launch an association amongst the innumerable considerations in a data set, association is essential for forecast and exploration of data. Regression Analysis is such a procedure to establish association among the datasets. The effort on this paper predominantly emphases on the diverse regression analysis model, how they binning to custom in context of different data sets in machine learning. Selection the accurate model for exploration is the most challenging assignment and hence, these models considered thoroughly in this study. In machine learning by these models in the perfect way and thru accurate data set, data exploration and forecast can provide the maximum exact outcomes.
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