Relevance Tree Analysis
Relevance tree analysis is a normative forecasting method that decomposes a high-level objective into a hierarchy of sub-objectives, functions, and contributing technologies, and then assigns relevance numbers that quantify how much each branch contributes to its parent. By normalizing these numbers so that the children of every node sum to one and multiplying them down each path, the method produces an overall relevance score for every technology or task at the leaves, which ranks them by their importance to the top objective. Unlike exploratory forecasting, which projects what the future will be, relevance trees work backward from a desired goal — they are 'normative,' starting from where you want to go and identifying what must be developed to get there. Originating in defense and aerospace planning and codified in Glenn and Gordon's Futures Research Methodology, the technique remains a standard tool for research-and-development priority-setting and mission analysis.
방법 전문 읽기
무료 계정으로 로그인하면 이 섹션을 읽을 수 있습니다.
방법 지도
관련 방법들로 이루어진 인접 영역 — 노드를 선택해 살펴보세요.
출처
- Glenn, J. C., & Gordon, T. J. (Eds.). (2009). Futures Research Methodology, Version 3.0. The Millennium Project. ISBN: 9780981894119
이 페이지 인용 방법
ScholarGate. (2026, June 23). Relevance Tree Analysis (Normative Hierarchical Decomposition with Relevance Numbers). ScholarGate. https://scholargate.app/ko/futures-foresight-studies/relevance-tree-analysis
어떤 방법일까요?
이 방법을 가장 가까운 동류의 방법들과 나란히 놓고 비교해 보세요 — 라이브러리는 책을 펼쳐 놓을 뿐, 선택은 여러분의 몫입니다.
- Delphi Technology ForecastingFutures Foresight Studies↔ 비교
- Gompertz Substitution ForecastingFutures Foresight Studies↔ 비교
- Trend Impact AnalysisFutures Foresight Studies↔ 비교