Now a day most of the information is available in digital form to get the proper data that is a challenging task.Most of the researchers focused on these problems and come up with the new model to retrieving the information from the digital system. In this paper, we learn performance of the different linguistic patterns and statistical scores considered is carefully studied and evaluated in order to design a method that maximizes the quality of the results. Our proposal is also evaluated for several well distinguish domain, offering in all cases, reliable taxonomies considering precision and recall along with F-measure. In this paper, we propose sequential pattern mining based pattern taxonomy relation, which discover pattern effectively, to achieve the goal we use some state of art data mining method and popular algorithms for evolution, for the experimental result we use Reuters (ReVi) dataset and the results show that we improve the discovering pattern as compared to previous text mining methods. The results of the experiment setup show that the keyword-based methods not give better performance than pattern-based method. The results also indicate that removal of meaningless patterns not only reduces the cost of computation but also improves the effectiveness of the system.
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