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An Experiment Model Of Chance Discovery For Visualizing The Financial Situation And Trend

Author

Listed:
  • TZU-FU CHIU

    (Department of Industrial Management and Enterprise Information, Aletheia University, No.32, Chen-Li St., Tamsui, Taipei County 25103, Taiwan, R.O.C.)

  • CHAO-FU HONG

    (Department of Information Management, Aletheia University, No.32, Chen-Li St., Tamsui, Taipei County 25103, Taiwan, R.O.C.)

  • YU-TING CHIU

    (Department of Information Management, National Central University, No. 300, Jhongda Rd., Jhongli City, Taoyuan County 32001, Taiwan, R.O.C.)

Abstract

In order to visualize the financial situation and trend of a company, an experiment model of chance discovery has been proposed, which enables the stakeholders inside and outside the business to recognize the performance of management and realize the possibility of investment. Usually, the statistical analysis and prediction models are common ways to understand the overall financial trend. Apart from analyzing the public offering financial statements directly, some visualization methods are potential approaches for stakeholders to understand the financial status intuitively. Chance discovery is one of the visualization methods which may be suitable for being applied in the exploration of financial status and trend. Using the experiment model, the annual and serial KeyGraphs as well as the trend diagram and integrated map were generated to depict the overview of the successive five-year scenario. Finally, the visualization of financial trend was then attained in this study.

Suggested Citation

  • Tzu-Fu Chiu & Chao-Fu Hong & Yu-Ting Chiu, 2010. "An Experiment Model Of Chance Discovery For Visualizing The Financial Situation And Trend," New Mathematics and Natural Computation (NMNC), World Scientific Publishing Co. Pte. Ltd., vol. 6(02), pages 209-228.
  • Handle: RePEc:wsi:nmncxx:v:06:y:2010:i:02:n:s1793005710001670
    DOI: 10.1142/S1793005710001670
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