This paper proposes a new method for analyzing textual data. The method deals with items of textual data, where each item is described based on various viewpoints. The method acquires 2- class classification models of the viewpoints by applying an inductive learning method to items with multiple viewpoints. The method infers whether the viewpoints are assigned to the new items or not by using the models. The method extracts expressions from the new items classified into the viewpoints and extracts characteristic expressions corresponding to the viewpoints by comparing the frequency of expressions among the viewpoints. This paper also applies the method to questionnaire data given by guests at a hotel and verifies its effect through numerical experiments., {"references":["A. Cardoso-Cachopo and A. L. Oliveira, \"An Empirical Comparison of\nText Categorization Methods,\" Proc. of the 10th Intl. Sympo. on String\nProcessing and Information Retrieval, 2003, Manaus, Brazil, pp. 183-196.","R. Feldman and H. Hirsh, \"Mining Text using Keyword Distributions,\"\nJournal of Intelligent Information Systems, vol. 10, no. 3, pp. 281-300,\n1998.","M. A. Hearst, \"Untangling Text Data Mining,\" Proc. of the 37th Annual\nMeeting of the Association for Computational Linguistics, 1999, Montreal,\nCanada, pp. 20-26.","C. -W. Hsu, C. -C. Chang, and C. -J. Lin, \"A\nPractical Guide to Support Vector Classification,\"\nhttp://www.csie.ntu.edu.tw/˜cjlin/papers/guide/guide.pdf, 2003.","Y. Ichimura, Y. Nakayama, M. Miyoshi, T. Akahane, T. Sekiguchi, and\nY. Fujiwara, \"Text Mining System for Analysis of a Salesperson-s Daily\nReports,\" Proc. of the Pacific Association for Computational Linguistics\n2001, 2001, Kitakyushu, Japan, pp. 127-135.","A. Ittycheriah, M. Franz, W. -J. Zhu, and A. Ratnaparkhi, \"IBM-s\nStatistical Question Answering System,\" Proc. of the 9th Text Retrieval\nConf. 2000, Gaithersburg, Maryland, USA, pp. 229-234.","T. Joachims, \"Text Categorization with Support Vector Machines: Learning\nwith Many Relevant Features,\" Proc. of the 10th European Conf.\non Machine Learning, 1998, Dorint-Parkhotel, Chemnitz, Germany, pp.\n137-142.","T. Joachims, \"Transductive Inference for Text Classification using Support\nVector Machines,\" Proc. of the 16th Intl. Conf. on Machine Learning,\n1999, Bled, Slovenia, pp. 27-30.","S. Sakurai, Y. Ichimura, A. Suyama, and R. Orihara, \"Acquisition of\na Knowledge Dictionary for a Text Mining System using an Inductive\nLearning Method,\" Proc. of the IJCAI 2001 Workshop on Text Learning:\nBeyond Supervision, 2001, Seattle, Washington, USA, pp. 45-52.\n[10] S. Sakurai and A. Suyama, \"An E-mail Analysis Method based on Text\nMining Techniques,\" Applied Soft Computing, vol. 6, no. 1, pp. 62-71,\n2005.\n[11] G. Salton and M. J. McGill, \"Introduction to Modern Information\nRetrieval,\" Mcgraw-Hill, New York, USA, 1983.\n[12] P. -N. Tan, H. Blau, S. Harp, and R. Goldman, \"Data Mining of Service\nCenter Call Records,\" Proc. of the 6th Intl. Conf. on Knowledge Discovery\nand Data Mining, 2000, Boston, Massachusetts, USA, pp. 417-423.\n[13] S. Tellex, B. Katz, J. Lin , and A. Fernandes, \"Quantitative Evaluation\nof Passage Retrieval Algorithms for Question Answering,\" Proc. of the\n26th Intl. Conf. on Research and Development in Information Retrieval,\n2003, Toronto, Canada, pp. 41-47.\n[14] V. N. Vapnik, \"The Nature of Statistical Learning Theory,\" Springer,\nNew York, USA, 1995.\n[15] Y. Yang and X. Liu, \"A Re-examination of Text Categorization Methods,\"\nProc. of the 22nd Intl. Conf. on Research and Development in\nInformation Retrieval, 1999, Berkeley, California, USA, pp. 15-19."]}