Voice of Customer Analysis
Voice of Customer (VoC) analysis is a structured method for hearing what customers actually need, in their own words, and turning that into a prioritized, organized set of requirements for product development. Abbie Griffin and John Hauser established its modern foundations in their 1993 Marketing Science article, which examined the customer-needs component of Quality Function Deployment and answered practical questions: how many customers to interview, how to extract needs from verbatims, how to structure them, and whether one-on-one interviews or focus groups are more efficient. Their key empirical findings — that needs accumulate toward saturation, that a modest number of interviews uncovers most needs, and that one-on-one interviews are at least as productive per dollar as focus groups — turned VoC from an art into a repeatable research process. The method distills raw customer statements into solution-free need statements, organizes them into a primary-secondary-tertiary hierarchy through customer sorting, and assigns importance weights using survey priorities, an idea closely tied to importance-performance thinking. Those weighted, structured needs then feed Quality Function Deployment, where they are mapped onto engineering attributes to drive design decisions.
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出典
- Griffin, A., & Hauser, J. R. (1993). The Voice of the Customer. Marketing Science, 12(1), 1-27. DOI: 10.1287/mksc.12.1.1 ↗
- Martilla, J. A., & James, J. C. (1977). Importance-Performance Analysis. Journal of Marketing, 41(1), 77-79. DOI: 10.1177/002224297704100112 ↗
このページの引用方法
ScholarGate. (2026, June 23). Voice of Customer Analysis (Structured Customer-Needs Elicitation and QFD Linkage). ScholarGate. https://scholargate.app/ja/marketing-science/voice-of-customer-analysis
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- Importance-Performance AnalysisMarketing Science↔ 比較
- カノモデルヒューマンコンピュータインタラクション↔ 比較
- Perceptual MappingMarketing Science↔ 比較