The Research of Support Vector Machine in Agricultural Data Classification

نویسندگان

  • Lei Shi
  • Qiguo Duan
  • Xinming Ma
  • Mei Weng
چکیده

The agricultural data classification is a hot topic in the field of precision agriculture. Support vector machine (SVM) is a kind of structural risk minimization based learning algorithms. As a popular machine learning algorithm, SVM has been widely used in many fields such as information retrieval and text classification in the last decade. In this paper, SVM is introduced to classify the agricultural data. An experimental evaluation of different methods is carried out on the public agricultural dataset. Experimental results show that the SVM algorithm outperforms two popular algorithms, i.e., naive bayes and artificial neural network in terms of the F1 measure.

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تاریخ انتشار 2011