A Review on Machine Learning & It’s Algorithms

Nipun Jain, Rajeev Kumar
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引用次数: 1

Abstract

Machine learning is important because it gives us accurate predictions based on data. It can teach computers to perform complex tasks without any human intervention. Machine learning can analyze complex blocks of data. Machine learning enables entrepreneurs and businesses to quickly recognize potential business opportunities and risks. Businesses that rely solely on large amounts of data are using machine learning as the best way to analyze data and build models. Machine learning is not only considered as the backbone of artificial intelligence, but machine learning also plays a significant role in the development and advancement of artificial intelligence. Using algorithms to solve classification problems with different sets of parameters yields dramatically different classification accuracies. The machine learning challenge of finding the most appropriate parameter values for algorithms that best solve technical problems related to performance metrics. In this paper, the author discussed various types of machine learning such as supervised, unsupervised and reinforcement machine learning. The main emphasis is on supervised machine learning such as classification and regression using various machine learning algorithms such as Decision Tree, Naïve Bayes, K-Nearest Neighbor, Random Forest and SVM Classifier. The author explains all classification-based algorithms well with examples and diagrams. The authors also mention applications or domain areas where these classification algorithms can be used.
机器学习及其算法综述
机器学习很重要,因为它可以根据数据为我们提供准确的预测。它可以教会计算机在没有任何人为干预的情况下执行复杂的任务。机器学习可以分析复杂的数据块。机器学习使企业家和企业能够快速识别潜在的商业机会和风险。仅依赖于大量数据的企业正在使用机器学习作为分析数据和构建模型的最佳方式。机器学习不仅被认为是人工智能的支柱,而且机器学习在人工智能的发展和进步中也起着重要的作用。使用算法解决具有不同参数集的分类问题会产生显著不同的分类精度。机器学习的挑战是为算法找到最合适的参数值,以最好地解决与性能指标相关的技术问题。在本文中,作者讨论了各种类型的机器学习,如监督机器学习、无监督机器学习和强化机器学习。主要重点是监督机器学习,如分类和回归,使用各种机器学习算法,如决策树,Naïve贝叶斯,k近邻,随机森林和SVM分类器。作者用实例和图表很好地解释了所有基于分类的算法。作者还提到了可以使用这些分类算法的应用程序或领域。
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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