Social network analysis of an emerging innovation: direct-to-garment printing technology

IF 3.2 4区 管理学 Q2 BUSINESS
Yanan Yu, Marguerite Moore, L. Chapman
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引用次数: 5

Abstract

PurposeThe study primarily aims to examine an emerging fashion technology, direct-to-garment (DTG) printing, using data mining-driven social network analysis (SNA). Simultaneously, the study also demonstrates application of a group novel computational technique to capture, analyze and visually depict data for strategic insight into the fashion industry.Design/methodology/approachA total of 5,060 tweets related to DTG were captured using Crimson Hexagon. Python and Gephi were applied to convert, calculate and visualize the yearly networks for 2016–2019. Based on graph theory, degree centrality and betweenness centrality indices guide interpretation of the outcome networks.FindingsThe findings reveal insights into DTG printing technology networks through identification of interrelated indicators (i.e. nodes, edges and communities) over time. Deeper interpretation of the dominant indicators and the unique changes within each of the DTG communities were investigated and discussed.Practical implicationsThree SNA models suggest directions including the dominant apparel categories for DTG application, competing alternatives for apparel decorating approaches to DTG and growing market niches for DTG. Interpretation of the yearly networks suggests evolution of this domain over the investigation period.Originality/valueThe social media based, data mining-driven SNA method provides a novel path and a powerful technique for scholars and practitioners to investigate information among complex, abstract or novel topics such as DTG. Context specific findings provide initial insight into the evolving competitive structures driving DTG in the fashion market.
社会网络分析的一项新兴创新:直接面向服装的印花技术
本研究的主要目的是利用数据挖掘驱动的社会网络分析(SNA)来研究一种新兴的时尚技术——直接面向服装(DTG)印刷。同时,该研究还展示了一组新颖的计算技术的应用,以捕获、分析和可视化地描绘数据,以获得对时尚产业的战略洞察力。设计/方法/方法使用Crimson Hexagon共捕获了5,060条与DTG相关的推文。Python和Gephi被用于转换、计算和可视化2016-2019年的年度网络。基于图论,度中心性和中间度中心性指标指导结果网络的解释。研究结果通过识别相互关联的指标(即节点、边缘和社区),揭示了对DTG印刷技术网络的见解。对各DTG群落的优势指标和独特变化进行了深入的研究和讨论。三种SNA模型提出了DTG应用的主要服装类别,DTG服装装饰方法的竞争替代方案以及DTG不断增长的市场利基。对年度网络的解释表明该领域在调查期间的演变。基于社交媒体、数据挖掘驱动的SNA方法为学者和从业者在复杂、抽象或新颖的主题(如DTG)中调查信息提供了一种新颖的途径和强大的技术。上下文特定的研究结果提供了对推动DTG在时尚市场中不断发展的竞争结构的初步见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.30
自引率
8.60%
发文量
41
期刊介绍: ■Apparel innovation ■Brand loyalty ■Consumer decisions and shopping behaviour ■Manufacturing systems ■Market positioning ■Merchandising ■Perceptions in the marketplace ■Piracy issues ■Pricing structures ■Product image ■Quality and performance measurement ■The importance of socio-economic factors In the ever-changing world of the fashion industry, it is imperative that senior managers and academics in the field are kept abreast of the latest trends and developments. Journal of Fashion Marketing and Management ensures that readers heighten their understanding of issues affecting their industry through the latest thinking and current best practice.
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