Using Predictive Analytics to Measure Effectiveness of Social Media Engagement: A Digital Measurement Perspective

IF 2 4区 管理学 Q3 BUSINESS
Heather Kennedy, Thilo Kunkel, Daniel C. Funk
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引用次数: 4

Abstract

As social media becomes an increasingly dominant and important component of sport organizations’ marketing and communication strategies, effective marketing measurement techniques are required. Using social media data of a Division I football team, this research demonstrates how predictive analytics can be used as a marketing measurement tool. A support vector machine model was compared to a standard linear regression with respect to accurately predicting Facebook posts’ total interactions. The predictive model was used as (i) a planning tool to forecast future post engagement based on a variety of post characteristics and (ii) an evaluation tool of a marketing campaign by providing accurate benchmarks to compare against achieved engagement metrics. Results indicated the support vector machine model outperformed the standard linear regression and the marketing campaign was unsuccessful in achieving its goals. This research provides a foundation for future use of predictive analytics in social media and sport management scholarship
使用预测分析来衡量社交媒体参与的有效性:数字测量视角
随着社交媒体越来越成为体育组织营销和传播策略的主导和重要组成部分,需要有效的营销衡量技术。这项研究利用一级足球队的社交媒体数据,展示了预测分析如何被用作营销衡量工具。在准确预测Facebook帖子的总交互方面,将支持向量机模型与标准线性回归进行了比较。预测模型被用作(i)基于各种岗位特征预测未来岗位参与度的规划工具,以及(ii)通过提供准确的基准与已实现的参与度指标进行比较来评估营销活动。结果表明,支持向量机模型优于标准线性回归模型,营销活动未能实现其目标。这项研究为未来预测分析在社交媒体和体育管理学术中的应用奠定了基础
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来源期刊
自引率
13.30%
发文量
21
期刊介绍: Sport Marketing Quarterly (SMQ) is published quarterly (March, June, September, December) and serves as an outlet for the dissemination of sport marketing information for both practicing professionals and academicians. These two important constituencies now have an opportunity to develop a relationship that is intended to be mutually beneficial. For practitioners, the SMQ provides a vehicle to share marketing successes with peers. For academicians, the SMQ provides a forum for sharing research.
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