定性营销研究中的模糊数据建模

Modeling Fuzzy Data in Qualitative Marketing Research

Journal of Marketing Research · 2000
被引 40
FT 50UTD 24ABS 4★

中文导读

提出模糊潜在类别模型(FLCM),允许定性数据中的项目既可以是清晰的也可以是模糊的,并提供了衡量数据整体模糊程度的方法,帮助营销研究者更准确地分类和分析复杂现象。

Abstract

In marketing, qualitative data are used in theory development to investigate marketing phenomena in more depth. After qualitative data are collected, the judgment-based classification of items into categories is routinely used to summarize and communicate the information contained in the data. In this article, the authors provide marketing researchers with a method that (1) provides useful substantive information about the proportion and degree to which items belong to several categories and (2) measures the classification accuracy of the judges. The model is called the fuzzy latent class model (FLCM), because it extends Dillon and Mulani's (1984) latent class model by freeing it from the restrictive assumption that all items are crisp for a given categorization. Instead, FLCM allows for items to be either crisp or fuzzy. Crisp items belong exclusively to one category, whereas fuzzy items belong—in varying degree—to multiple categories. This relaxation in the assumption about the nature of qualitative data makes FLCM more widely applicable: Qualitative data in marketing research are often fuzzy, because they involve open-ended descriptions of complex phenomena. The authors also propose a moment-based measure of overall data fuzziness that is bounded by 0 (completely crisp) and 1 (completely fuzzy).

市场营销定性研究模糊逻辑分类方法数据建模