机器学习
计算机科学
人工智能
在线机器学习
半监督学习
算法
监督学习
计算学习理论
基于实例的学习
无监督学习
人工神经网络
作者
Amanpreet Singh,Narina Thakur,Aakanksha Sharma
出处
期刊:International Conference on Computing for Sustainable Global Development
日期:2016-03-16
卷期号:: 1310-1315
被引量:306
摘要
Supervised machine learning is the construction of algorithms that are able to produce general patterns and hypotheses by using externally supplied instances to predict the fate of future instances. Supervised machine learning classification algorithms aim at categorizing data from prior information. Classification is carried out very frequently in data science problems. Various successful techniques have been proposed to solve such problems viz. Rule-based techniques, Logic-based techniques, Instance-based techniques, stochastic techniques. This paper discusses the efficacy of supervised machine learning algorithms in terms of the accuracy, speed of learning, complexity and risk of over fitting measures. The main objective of this paper is to provide a general comparison with state of art machine learning algorithms.
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