业务
营销
资产(计算机安全)
品牌延伸
四分之一(加拿大硬币)
服务(商务)
Logos圣经软件
品牌资产
品牌名称
编码(社会科学)
产品类别
品牌知名度
产品(数学)
经济
广告
商业
计算机科学
历史
数学
统计
几何学
操作系统
考古
计算机安全
作者
Larissa Mae Bali,Zachary William Anesbury,Peilin Phua,Byron Sharp
标识
DOI:10.1177/14707853241251954
摘要
Despite the concept of a suggestive brand name existing for over one hundred years (Viehoever, 1920), the prevalence of suggestive versus non-suggestive brand names has not been documented. Previously, to do so extensively would have taken considerable time and money. We now show that artificial intelligence can replace manual coding with increased accuracy. We found the coding performances of Chat GPT-4 are 34% more accurate than GPT-3.5 and 44% more accurate than human coders. Systematically expanding our research to over 4,600 brands from consumer goods, services, and durables in major English-speaking markets (United Kingdom, United States, and Australia), we find that overall, slightly more than a quarter of all brand names are suggestive - ranging from 10% of durables to 56% of service brands. Further, we expand the suggestiveness research to non-brand name elements of almost 600 Distinctive Assets (e.g., colours, logos) across consumer goods, services, durables, and retailers (in the same three countries), finding that two in five are suggestive. The brand name and Distinctive Asset prevalence distributions are positively skewed, with most categories falling beneath the respective averages. Furthermore, regarding performance, on average, suggestive Distinctive Assets display lower levels of Fame and Uniqueness than non-suggestive Distinctive Assets.
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