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Analysis of Social Network between Consumption Emotion based on the Uniform of Full-Service Carrier and Low-Cost Carrier Crews

대형항공사와 저비용항공사 승무원의 유니폼에 따른 소비정서 간의 사회연결망 분석

  • Seo, Ran-Sug (Department of airline services, Hoseo University)
  • 서란숙 (호서대학교 항공서비스학과)
  • Received : 2018.05.21
  • Accepted : 2018.08.20
  • Published : 2018.08.28

Abstract

The purpose of the study compares the difference between the carriers' reported large consumption emotion of customers in regards to the appearance of the crew. The research method was conducted for 15 days from March 11 to 25, 2018, and the number of valid samples was 289 in total. The results of the study showed that customers differ in the influence of perceived consumption sentiment between full service carrier and low cost carrier on uniform of flight attendant. Consumer sentiments perceived by low cost carriers are comfortable, familiar, and lively, and these results have proven that they are distinguished from low cost carriers by being clean, sophisticated, and large. The results of this study are significant when the airline has changed the crew uniform at the right time and considered it to be a marketing tool that is important to the image change of the company.

항공사 승무원 유니폼에 관한 선행연구와 실증적 연구를 살펴보고 항공사 승무원의 유니폼이 고객이 지각하는 소비정서에 미치는 영향을 규명하는 것이 연구의 목적이다. 연구방법은 항공 관광 관련학과 재학생을 대상으로 2018년 3월 11일부터 25일까지 15일간 설문조사를 하였고, 총 289부의 유효표본 수를 분석하였다. 연구결과는 고객들은 승무원의 유니폼에 대하여 대형항공사와 저비용항공사 간의 지각하는 소비정서에 대한 영향에서 차이가 있는 것을 연결망 관계를 통해 증명하였다. 또한 저비용항공사에 대해 고객이 지각하는 소비정서는 편안하고, 친숙하며, 활기찬 등이며, 이러한 결과는 대형항공사인 깔끔하고 세련된 등으로 저비용항공사와 차별화되었다는 것을 증명하였다. 항공사는 적절한 시기에 승무원 유니폼을 변화시켜왔고, 회사의 이미지 변화에 상당히 중요하게 여기는 마케팅 도구로 생각할 때, 본 연구결과가 의미가 있다고 볼 수 있다.

Keywords

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