SVM and HMM Based Hybrid Approach of Sentiment Analysis for Teacher Feedback Assessment

Volume 3, Issue 3 May – June 2014 Page 229 Abstract: Sentiment analysis view from broad range of field of natural language processing and opinion mining. Most of the researcher focus on the product and services. This paper design to automate teacher feedback assessment system. As know, teacher is important part of education. Therefor progress and performance monitoring of teacher is also important factor of education system. It could be measure by taking feedback from student for particular teacher. Data collect from student is larger in size to concluding result is difficult task. Here, sentiment analysis play the role with help of HMM and SVM base hybrid sentiment classification model with advent feature extraction method.

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