In recent years, data mining and text mining techniques have been frequently used for analyzing data. Electronic data is collected in everywhere and many products and services are widely used in our daily lives. Data mining techniques such as association analysis and cluster analysis are used for marketing analysis, because those can discover relationships and rules hiding in enormous numerical data. On the other hand, text mining techniques such as keywords extraction and opinion extraction are used for questionnaire or review text analysis, because those can support us to investigate consumers' opinion in text data. However, data mining tools and text mining tools cannot be used in a single environment. Therefore, a data which has both numerical and text data is not well analyzed because the numerical part and the text part cannot be connected for interpretation. Goal of the data analysis is knowledge emergence that we find or create a new knowledge for decision making.In this paper, a mining framework that can treat both numerical and text data is proposed. Users of the proposed system can iterate data shrink and data analysis with both numerical and text analysis tools in a unique framework. Based on the experimental results, the proposed system was effectively used to data analysis for review texts of humidifiers and fan heaters. We verified that balanced use of numerical and text analysis leads to good ideas and the users should be conscious to use both type of tools and both type of data shrink.
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