Abstract
Corporations should make efforts to recognize the importance of projects, identify their failure factors, prevent risks in advance, and raise the success rates, because the corporations need to make quick responses to rapid external changes. There are some previous studies on success and failure factors of projects, however, most of them have limitations in terms of objectivity and quantitative analysis based on data gathering through surveys, statistical sampling and analysis. This study analyzes the failure factors of projects based on data mining to find problems with projects in an audit report, which is an objective project evaluation report. To do this, we identified the texts in the paragraph of suggestions about improvement. We made use of the superior classification algorithms in this study, which were NaiveBayes, SMO and J48. They were evaluated in terms of data of Recall and Precision after performing 10-fold-cross validation. In the identified texts, the failure factors of projects were analyzed so that they could be utilized in project implementation.
Translated title of the contribution | Project Failure Main Factors Analysis using Text Mining in Audit Evaluation |
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Original language | Korean |
Pages (from-to) | 468-474 |
Number of pages | 7 |
Journal | 정보과학회논문지 |
Volume | 42 |
Issue number | 4 |
DOIs | |
State | Published - Apr 2015 |