A deep understanding of influencer marketing in the tourism industry: a structural analysis of unstructured text
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8

초록

Using both a word frequency approach and a cutting-edge transfer learning technique for natural language processing with BERTopic, the present study analysed the entire texts from the top 40 travel influencers' Instagram posts (n = 23,223). Among the 256 features that we initially extracted, we ranked the top 19 features using the machine learning algorithm XGBoost and estimated the effects of these features on consumer engagement using Negative Binomial regression. The results show that seasonal trips, travel destination recommendations, recommendations for fashion during the trip, and emphasising travel-related emotion generate a higher level of engagement. For message strategy, specifically focusing on linguistic features, it is recommended that influencers use analytic, authentic, want-related, and space-related words in the caption but should avoid using too many hashtags. Also, overall, influencers should avoid sending messages during the night, with messages that are too long or with too many emojis.

키워드

InfluencerMachine learningTransfer learningSocial mediaBERTopicTopic modelingDestination marketing
제목
A deep understanding of influencer marketing in the tourism industry: a structural analysis of unstructured text
저자
Son, HyunsangPark, Young Eun
DOI
10.1080/13683500.2024.2368152
발행일
2025-07
유형
Article
저널명
Current Issues in Tourism
28
14
페이지
2231 ~ 2241