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텍스트마이닝과 연관규칙을 이용한 외부감사 실시내용의 그룹별 핵심어 추출Group-wise Keyword Extraction of the External Audit using Text Mining and Association Rules

Other Titles
Group-wise Keyword Extraction of the External Audit using Text Mining and Association Rules
Authors
성윤석이동희정욱
Issue Date
Mar-2022
Publisher
한국품질경영학회
Keywords
External Audit; Text Classification; Variable Importance; Association Rules; Group-wise Keywords
Citation
품질경영학회지, v.50, no.1, pp 77 - 89
Pages
13
Indexed
KCI
Journal Title
품질경영학회지
Volume
50
Number
1
Start Page
77
End Page
89
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/3445
DOI
10.7469/JKSQM.2022.50.1.77
ISSN
1229-1889
2287-9005
Abstract
Purpose: In order to improve the audit quality of a company, an in-depth analysis is required to categorize the audit report in the form of a text document containing the details of the external audit. This study introduces a systematic methodology to extract keywords for each group that determines the differences between groups such as 'audit plan' and 'interim audit' using audit reports collected in the form of text documents. Methods: The first step of the proposed methodology is to preprocess the document through text mining. In the second step, the documents are classified into groups using machine learning techniques and based on this, important vocabularies that have a dominant influence on the performance of classification are extracted. In the third step, the association rules for each group's documents are found. In the last step, the final keywords for each group representing the characteristics of each group are extracted by comparing the important vocabulary for classification with the important vocabulary representing the association rules of each group. Results: This study quantitatively calculates the importance value of the vocabulary used in the audit report based on machine learning rather than the qualitative research method such as the existing literature search, expert evaluation, and Delphi technique. From the case study of this study, it was found that the extracted keywords describe the characteristics of each group well. Conclusion: This study is meaningful in that it has laid the foundation for quantitatively conducting follow-up studies related to key vocabulary in each stage of auditing.
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