使用支持向量机、决策树和朴素贝叶斯技术进行风速分类

Patil SangitaB, S. Deshmukh
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引用次数: 15

摘要

近年来,模式识别、数据挖掘、决策制定和网络化等新技术被应用于自动分类问题。需要分类技术来预测数据实例的组成员关系。这整个进步倾向于处理原始数据并提取信息以获得知识,以便在更少的人力帮助下做出决策和解决问题。文献中提出的许多研究都是基于人工智能(AI)技术,如人工神经网络(ANN)、模糊逻辑(FL)、专家系统(ES)等。这些技术使用来自干扰波形的特征向量来对事件进行分类。在这些技术中,人工神经网络因其处理噪声数据的能力和学习能力而引起了广泛的关注。神经网络的缺点是速度非常慢,尤其是在训练阶段和应用阶段。神经网络的另一个显著缺点是很难确定网络是如何做出决策的。支持向量机(Support Vector Machine, SVM)是一种非常新颖的方法,在本研究中可以克服这些不足,提供高效、强大的分类算法,能够处理高维输入特征,并且对统计学习理论提供的解的泛化误差和稀疏性有理论限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of Support Vector Machine, decision tree and Naive Bayesian techniques for wind speed classification
In the latest years, pattern recognition, data mining, decision making, and networking have been used as new technologies for automatic classification problems. Classification techniques are needed to predict group membership for data instances. This entire advance tends to process raw data and extract information to obtain knowledge in order to make decisions and solve problems with less human aid. Many of the studies proposed in the literature are based on artificial intelligence (AI) techniques such as Artificial Neural Network (ANN), Fuzzy Logic (FL), Expert System (ES), etc. These techniques use feature vectors derived from disturbance waveforms to classify events. ANN has attracted a great deal of attention among these techniques because of their ability to handle noisy data and their learning capabilities. The disadvantage of neural networks is that they are notoriously slow, especially in the training phase but also in the application phase. Another significant disadvantage of neural networks is that it is very difficult to determine how the net is making its decision. Support Vector Machine (SVM) which is quite a new method and used in this work can overcome these deficiencies and provide efficient and powerful classification algorithms that are capable of dealing with high-dimensional input features and with theoretical bounds on the generalization error and sparseness of the solution provided by statistical learning theory.
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