独创性
样品(材料)
感知
心理学
复制(统计)
营销
价值(数学)
订单(交换)
业务
社会心理学
统计
创造力
数学
神经科学
财务
化学
色谱法
作者
Myron Gable,Martin T. Topol,Vishal Lala,Susan S. Fiorito
出处
期刊:International Journal of Retail & Distribution Management
[Emerald (MCB UP)]
日期:2008-09-05
卷期号:36 (10): 780-811
被引量:12
标识
DOI:10.1108/09590550810900991
摘要
Purpose The purpose of this paper is to determine the responses of women college students to discount stores and category killers in terms of the importance of seven‐store characteristics as well as their expectations for these attributes. Another purpose was to determine differences, if any, between these two store formats. Further the moderating variables of shopping frequency and orientation were introduced to determine if they influenced the results. Design/methodology/approach Personal interviews were used to collect data from a random sample of women college students from one university through the administration of a structured survey instrument. Statistical analyses were employed to generate the results. Findings Differences were found in the respondents' perceptions for both importance and expectations for six of the seven‐store attributes. For one characteristic, continuity of supply, no differences emerged and this characteristic was deemed important for both store formats. Moderating variables did not alter the results. Research limitations/implications Given the limited nature of the sample, there is a need for replication of this research in other geographic regions, including international sites in order to corroborate these findings. Also, replication with men is needed. Practical implications This study provides guidance to both discount store and category killer executives on the types of strategies and tactics needed to better attract and retain women college students. Originality/value Attention was directed to women college students, a highly desired but often neglected market segment. Further, continuity of supply, an attribute not often indicated in most retailing texts emerged as very important and highly expected by respondents.
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