Classifying Unstructured Text Using Structured Training Instances and an Ensemble of Classifiers

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DOI: 10.4236/jilsa.2015.72006    4,926 Downloads   5,831 Views  Citations

ABSTRACT

Typical supervised classification techniques require training instances similar to the values that need to be classified. This research proposes a methodology that can utilize training instances found in a different format. The benefit of this approach is that it allows the use of traditional classification techniques, without the need to hand-tag training instances if the information exists in other data sources. The proposed approach is presented through a practical classification application. The evaluation results show that the approach is viable, and that the segmentation of classifiers can greatly improve accuracy.

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Lianos, A. and Yang, Y. (2015) Classifying Unstructured Text Using Structured Training Instances and an Ensemble of Classifiers. Journal of Intelligent Learning Systems and Applications, 7, 58-73. doi: 10.4236/jilsa.2015.72006.

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