Synthesis of Classification Models and Review in the Field of Machine Learning

Venkatram Kari, Geetha Mary Amalanathan
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引用次数: 1

Abstract

Classification method is an important technique used in machine learning for predictive analytics. Classification enables business to predict future trends and behaviors of an enterprise with the help of their past data. Classification is a supervised learning model, which is built in twostep process, first building the classification model and second predicting the outcome for unknown data. This chapter describes various classification models by learning mechanisms and categorizes them into different statistical, probabilistic, and heuristic methods, and explains them with example dataset. It also compares these models and their efficiencies with model evaluation techniques and briefs some blended classification models. The goal of this chapter is to provide a comprehensive review of different classification techniques and give a quick refresher on classification models in big data analytics. The comparison of various classification models helps the readers to quickly decide which classification model to choose for the given business scenario.
机器学习领域分类模型的综合与综述
分类方法是用于预测分析的机器学习中的一项重要技术。分类使企业能够借助过去的数据预测企业未来的趋势和行为。分类是一种监督学习模型,它的建立分为两步,首先建立分类模型,然后对未知数据的结果进行预测。本章通过学习机制描述各种分类模型,并将它们分为不同的统计、概率和启发式方法,并通过示例数据集进行解释。将这些模型及其效率与模型评价技术进行了比较,并简要介绍了几种混合分类模型。本章的目的是全面回顾不同的分类技术,并快速回顾大数据分析中的分类模型。各种分类模型的比较有助于读者快速决定为给定的业务场景选择哪种分类模型。
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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