Identifying and explaining the topics in the financial literacy training using fuzzy Delphi approach
Publish Year: 1401
Type: Journal paper
Language: English
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Document National Code:
JR_AMFA-7-3_014
Index date: 11 June 2022
Identifying and explaining the topics in the financial literacy training using fuzzy Delphi approach abstract
The purpose of this qualitative research is to identify and explain the topics in financial literacy training in Iran using an exploratory approach. For this purpose, 20 semi-structured interviews with experts were conducted in the first stage to identify the topics of financial literacy training, and 36 primary categories were identified in the open coding stage using qualitative content analysis. The identified sub-categories were linked in the axial coding stage and categorized into nine axial categories. In the next step, namely selective coding, the identified central categories were systematically categorized into three general chapters. In the second stage, the fuzzy Delphi technique in two phases was used to achieve group consensus between experts and screening the findings of the first stage. At this stage, the most consensus between the experts was reached in 32 topics. Based on the results, all areas of personal finance are covered under three general topics, including income and savings management, risk management, and cost management. The topics extracted in this study can be utilized to design, codify, and implemented financial literacy training programs in Iran.
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Identifying and explaining the topics in the financial literacy training using fuzzy Delphi approach authors
Fatemeh Kazempour Dizaji
Damavand Branch, Islamic Azad University, Damavand, Iran
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