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NTIS 바로가기감성과학 = Science of emotion & sensibility, v.19 no.4, 2016년, pp.95 - 110
박선미 (전북대학교 교육학과) , 박병기 (전북대학교 교육학과)
The purpose of this study was to propose a proper method for the multilevel mediation analysis, for which the hierarchical method should be utilized, then MLM (multilevel modeling) approach as a hierarchical method has been popularly utilized until MSEM (multilevel structural equation modeling) appr...
핵심어 | 질문 | 논문에서 추출한 답변 |
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매개효과 연구를 통해 무엇을 이해할 수 있는가? | 실제현상의 변수들은 1층과 2층 또는 개인과 집단이 분리되거나 단편적이기보다는 상호역동적이고 복합적인 관계에 있기 때문에 다층자료의 분석은 실제현상을 이해하는 데 큰 도움을 줄 것이다. 매개효과 연구는 독립변수와 종속변수 간의 단순한 관계가 아니라 두 변수 사이에 매개변수를 상정함으로써 현상의 역동적인 관계를 이해하는 데 기여한다. 본 연구는 다층분석과 매개효과 연구를 결합한 다층자료 매개효과의 분석방법을 다룬다. | |
실제현상의 변수은 어떤 특징을 가지나? | 단층자료로는 밝힐 수 없는 실제현상의 이해에 기여하는 바가 크기 때문일 것이다. 실제현상의 변수들은 1층과 2층 또는 개인과 집단이 분리되거나 단편적이기보다는 상호역동적이고 복합적인 관계에 있기 때문에 다층자료의 분석은 실제현상을 이해하는 데 큰 도움을 줄 것이다. 매개효과 연구는 독립변수와 종속변수 간의 단순한 관계가 아니라 두 변수 사이에 매개변수를 상정함으로써 현상의 역동적인 관계를 이해하는 데 기여한다. | |
의학이나 심리학 등 여러 분야에서 다층자료를 다루는 연구의 수가 급증한 이유는? | 의학이나 심리학 등 여러 분야에서 다층자료를 다루는 연구의 수가 최근 들어 급증하였다. 단층자료로는 밝힐 수 없는 실제현상의 이해에 기여하는 바가 크기 때문일 것이다. 실제현상의 변수들은 1층과 2층 또는 개인과 집단이 분리되거나 단편적이기보다는 상호역동적이고 복합적인 관계에 있기 때문에 다층자료의 분석은 실제현상을 이해하는 데 큰 도움을 줄 것이다. |
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