企业社会责任
足球
探索性因素分析
描述性统计
营销
背景(考古学)
业务
杠杆(统计)
俱乐部
消费(社会学)
独创性
广告
情感(语言学)
体育营销
心理学
公共关系
社会学
社会心理学
政治学
关系营销
服务(商务)
地理
市场营销管理
创造力
数学
社会科学
计算机科学
法学
统计
考古
沟通
医学
解剖
机器学习
作者
Dongfeng Liu,Rob Wilson,Daniel Plumley,Xiaofeng Chen
标识
DOI:10.1108/ijsms-06-2018-0059
摘要
Purpose The purpose of this paper is to analyze fans’ perceptions of the corporate social responsibility (CSR) activities of a professional football club, specifically whether or not perceived CSR performances are then likely to influence patronage intentions of the fans in relation to the football club. Design/methodology/approach The paper uses the example of a professional football club in China as a case study for data analysis. Based on a sample of 451 home team fans, analysis was conducted through calculation of descriptive statistics, and exploratory factor analysis. Regression analysis was conducted to determine the impact of perceived CSR performance on fans’ patronage intentions. Findings The results revealed that factor 3 (“CSR to customer and employee”) and factor 4 (“Community development and youth education”) were significantly predictive of all the three patronage intention variables, i.e. repeat purchase, word-of-mouth and merchandise consumption. In addition, factor 2 (“charity”) would also affect merchandise consumption intention, but have no effect on any other dimensions. Originality/value A scale measuring perceived CSR performance in professional football clubs by the fans in the Chinese context has been developed. In addition, the authors have identified that the two main CSR factors that would influence fans’ patronage intentions are: “CSR to the customer and employee” and “community development and youth education.” Thus, if football clubs are to use CSR strategically to leverage spend, then it is these two areas that they should focus on, explicitly in relation to CSR activities. This paper adds value to an area that is currently under-researched in respect of CSR activities in Chinese professional football.
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